<?xml version="1.0" encoding="ISO-8859-1"?><article xmlns:mml="http://www.w3.org/1998/Math/MathML" xmlns:xlink="http://www.w3.org/1999/xlink" xmlns:xsi="http://www.w3.org/2001/XMLSchema-instance">
<front>
<journal-meta>
<journal-id>0121-5051</journal-id>
<journal-title><![CDATA[Innovar]]></journal-title>
<abbrev-journal-title><![CDATA[Innovar]]></abbrev-journal-title>
<issn>0121-5051</issn>
<publisher>
<publisher-name><![CDATA[Facultad de Ciencias Económicas. Universidad Nacional de Colombia.]]></publisher-name>
</publisher>
</journal-meta>
<article-meta>
<article-id>S0121-50512010000100004</article-id>
<title-group>
<article-title xml:lang="en"><![CDATA[Analyzing solvency with extreme value theory: an application to the Spanish motor liability insurance market]]></article-title>
<article-title xml:lang="es"><![CDATA[Análisis de la solvencia mediante la teoría del valor extremo: una aplicación al mercado español del seguro del automóvil]]></article-title>
<article-title xml:lang="fr"><![CDATA[Analyse de la solvabilité par la théorie de la valeur extréme: une application sur le marché espagnol des assurances automobiles]]></article-title>
<article-title xml:lang="pt"><![CDATA[Análise da solvência mediante a teoria do valor extremo: uma aplicação ao mercado espnhol do seguro do automóvel]]></article-title>
</title-group>
<contrib-group>
<contrib contrib-type="author">
<name>
<surname><![CDATA[Pérez-Fructuoso]]></surname>
<given-names><![CDATA[María José]]></given-names>
</name>
<xref ref-type="aff" rid="A01"/>
</contrib>
<contrib contrib-type="author">
<name>
<surname><![CDATA[García Pérez]]></surname>
<given-names><![CDATA[Almudena]]></given-names>
</name>
<xref ref-type="aff" rid="A02"/>
</contrib>
</contrib-group>
<aff id="A01">
<institution><![CDATA[,Madrid Open University  ]]></institution>
<addr-line><![CDATA[ ]]></addr-line>
</aff>
<aff id="A02">
<institution><![CDATA[,University of Alcalá de Henares  ]]></institution>
<addr-line><![CDATA[ ]]></addr-line>
</aff>
<pub-date pub-type="pub">
<day>00</day>
<month>01</month>
<year>2010</year>
</pub-date>
<pub-date pub-type="epub">
<day>00</day>
<month>01</month>
<year>2010</year>
</pub-date>
<volume>20</volume>
<numero>36</numero>
<fpage>35</fpage>
<lpage>48</lpage>
<copyright-statement/>
<copyright-year/>
<self-uri xlink:href="http://www.scielo.org.co/scielo.php?script=sci_arttext&amp;pid=S0121-50512010000100004&amp;lng=en&amp;nrm=iso"></self-uri><self-uri xlink:href="http://www.scielo.org.co/scielo.php?script=sci_abstract&amp;pid=S0121-50512010000100004&amp;lng=en&amp;nrm=iso"></self-uri><self-uri xlink:href="http://www.scielo.org.co/scielo.php?script=sci_pdf&amp;pid=S0121-50512010000100004&amp;lng=en&amp;nrm=iso"></self-uri><abstract abstract-type="short" xml:lang="en"><p><![CDATA[An accurate estimation of extreme claims is fundamental to assess solvency capital requirements (SCR) established by Solvency II. Basing on the Extreme Value Theory (EVT), this paper performs a parametric estimation to fit the motor liability insurance historical datasets of two significant and representative companies operating within the Spanish market to a Generalized Pareto Distribution. We illustrate how EVT improves classical adjustments, as it considers outliers apart from mass risks, what leads to optimize the pricing decision-making and fix a risk transfer position.]]></p></abstract>
<abstract abstract-type="short" xml:lang="es"><p><![CDATA[Una estimación precisa de las reclamaciones extremas es fundamental para evaluar las exigencias de capital de solvencia establecidas por Solvencia II. Basándonos en la Teoría del Valor Extremo (TVE), este artículo realiza una estimación paramétrica para ajustar una distribución de Pareto Generalizada a los datos de seguros de automóvil de dos importantes y representativas compañías de seguros que operan en el Mercado español. Así mismo, demostramos como la TVE mejora los ajustes clásicos, al tratar separadamente los siniestros extremos de los riesgos de masa, lo que lleva a optimizar los procesos de tarificación y a fijar una posición determinada de transferencia del riesgo.]]></p></abstract>
<abstract abstract-type="short" xml:lang="fr"><p><![CDATA[Une estimation précise des réclamations extrêmes est fondamentale pour évaluer les exigences du capital de solvabilité établies par Solvabilité II. Sur base de la Théorie de la Valeur Extrême, cet article réalise une estimation paramétrique pour ajuster une distribution de Pareto Généralisée des données des assurances automobiles de deux compagnies importantes et représentatives d'assurances du Marché espagnol. De même, nous démontrons comment la Théorie de la Valeur Extrême améliore les ajustements classiques, par un traitement séparé des sinistres extrêmes des risques de masse, ce qui optimise les processus de tarification et fixe une position déterminée de transfert de risque.]]></p></abstract>
<abstract abstract-type="short" xml:lang="pt"><p><![CDATA[Uma estimação precisa das reclamações extremas é fundamental para avaliar as exigências de capital de solvência estabelecidas por Solvência II. Baseando-nos na Teoria do Valor Extremo (TVE), este artigo realiza uma estimação paramétrica para ajustar uma distribuição de Pareto Generalizada aos dados de seguros de automóvel de duas importantes e representativas companhias de seguros que operam no Mercado espanhol. Da mesma forma, demonstramos como a TVE melhora os ajustes clássicos, ao tratar separadamente os sinistros extremos dos riscos de massa, o que leva a otimizar os processos de tarifação e a estabelecer uma posição determinada de transferência do risco.]]></p></abstract>
<kwd-group>
<kwd lng="en"><![CDATA[Generalized Pareto Distribution]]></kwd>
<kwd lng="en"><![CDATA[Tail estimation]]></kwd>
<kwd lng="en"><![CDATA[Solvency II]]></kwd>
<kwd lng="en"><![CDATA[excesses over high thresholds]]></kwd>
<kwd lng="en"><![CDATA[Solvency capital requirements]]></kwd>
<kwd lng="en"><![CDATA[XL Reinsurance]]></kwd>
<kwd lng="en"><![CDATA[risk measures]]></kwd>
<kwd lng="es"><![CDATA[Distribución de Pareto Generalizada]]></kwd>
<kwd lng="es"><![CDATA[Estimación de cola]]></kwd>
<kwd lng="es"><![CDATA[Solvencia II]]></kwd>
<kwd lng="es"><![CDATA[reclamaciones por encima de un umbral]]></kwd>
<kwd lng="es"><![CDATA[Exigencias de capital de solvencia]]></kwd>
<kwd lng="es"><![CDATA[Reaseguro de exceso de pérdidas (XL)]]></kwd>
<kwd lng="es"><![CDATA[Medidas de riesgo]]></kwd>
<kwd lng="fr"><![CDATA[Distribution de Pareto Généralisée]]></kwd>
<kwd lng="fr"><![CDATA[Estimation de queue]]></kwd>
<kwd lng="fr"><![CDATA[Solvabilité II]]></kwd>
<kwd lng="fr"><![CDATA[Réclamations hors seuil]]></kwd>
<kwd lng="fr"><![CDATA[Exigences du capital de solvabilité]]></kwd>
<kwd lng="fr"><![CDATA[Réassurance de pertes excessives (XL)]]></kwd>
<kwd lng="fr"><![CDATA[Mesures de risque]]></kwd>
<kwd lng="pt"><![CDATA[Distribuição de Pareto Generalizada]]></kwd>
<kwd lng="pt"><![CDATA[Estimativa de fila]]></kwd>
<kwd lng="pt"><![CDATA[Solvência II]]></kwd>
<kwd lng="pt"><![CDATA[reclamações acima de um limite]]></kwd>
<kwd lng="pt"><![CDATA[Exigências de capital de solvência]]></kwd>
<kwd lng="pt"><![CDATA[Resseguro de excesso de danos (XL)]]></kwd>
<kwd lng="pt"><![CDATA[Medidas de risco]]></kwd>
</kwd-group>
</article-meta>
</front><body><![CDATA[  <font size="2" face="verdana">     <p>&nbsp;</p>     <p>&nbsp;</p>     <p>       <center>     <font size="4"><b> Analyzing solvency with extreme      value theory: an application to the Spanish motor liability insurance market       </b></font>   </center> </p>     <p>       <center>     <font size="3"> <b>An&aacute;lisis de la solvencia mediante la teor&iacute;a del valor extremo: una aplicaci&oacute;n al mercado espa&ntilde;ol del seguro del autom&oacute;vil</b>    </font>   </center> </p>     <p>        <center>     <font size="3"><b>Analyse de la solvabilit&eacute; par la th&eacute;orie de la valeur extr&eacute;me: une application sur le march&eacute; espagnol des assurances automobiles</b></font>   </center> </p>     <p>        ]]></body>
<body><![CDATA[<center>     <font size="3"><b>An</b></font><font size="2" face="verdana"><font size="3"><b>&aacute;</b></font></font><font size="3"><b>lise da solv&ecirc;ncia mediante a teoria do valor extremo: uma aplica&ccedil;&atilde;o ao mercado espnhol do seguro do autom&oacute;vel       </b></font>   </center> </p>     <p>&nbsp;</p>     <p>  Mar&iacute;a Jos&eacute; P&eacute;rez-Fructuoso*, Almudena Garc&iacute;a P&eacute;rez**</p>     <p>*  Professor of Mathematics, UDIMA, Madrid Open University.   E-mail: <a href="mailto:mariajose.perez@udima.es">mariajose.perez@udima.es</a> </p>     <p>** Associate Professor of Financial Mathematics, University of Alcal&aacute; de Henares   E-mail: <a href="mailto:almu.garcia@uah.es">almu.garcia@uah.es</a></p>     <p>     <p>RECIBIDO: septiembre 2008 APROBADO: julio 2009  <hr noshade="noshade" size="1"></p>     <p>  <font size="3"><b>ABSTRACT:</b></font> </p>     <p>An accurate estimation of extreme claims is fundamental to assess solvency capital   requirements (SCR) established by Solvency II. Basing on the Extreme Value Theory (EVT), this paper   performs a parametric estimation to fit the motor liability insurance historical datasets of two significant   and representative companies operating within the Spanish market to a Generalized Pareto   Distribution. We illustrate how EVT improves classical adjustments, as it considers outliers apart   from mass risks, what leads to optimize the pricing decision-making and fix a risk transfer position.</p>     <p>  <font size="3"><b>KEY WORDS:</b></font> </p>     ]]></body>
<body><![CDATA[<p>Generalized Pareto Distribution, Tail estimation, Solvency II, excesses over high   thresholds, Solvency capital requirements, XL Reinsurance, risk measures</p>     <p>&nbsp;</p>     <p>  <font size="3"><b>RESUMEN:</b></font> </p>     <p>Una estimaci&oacute;n precisa de las reclamaciones extremas   es fundamental para evaluar las exigencias de capital de   solvencia establecidas por Solvencia II. Bas&aacute;ndonos en la Teor&iacute;a   del Valor Extremo (TVE), este art&iacute;culo realiza una estimaci&oacute;n param&eacute;trica   para ajustar una distribuci&oacute;n de Pareto Generalizada   a los datos de seguros de autom&oacute;vil de dos importantes y representativas   compa&ntilde;&iacute;as de seguros que operan en el Mercado   espa&ntilde;ol. As&iacute; mismo, demostramos como la TVE mejora los   ajustes cl&aacute;sicos, al tratar separadamente los siniestros extremos   de los riesgos de masa, lo que lleva a optimizar los procesos de   tarificaci&oacute;n y a fijar una posici&oacute;n determinada de transferencia del riesgo.</p>     <p>  <font size="3"><b>PALABRAS CLAVE:</b></font> </p>     <p>Distribuci&oacute;n de Pareto Generalizada, Estimaci&oacute;n   de cola, Solvencia II, reclamaciones por encima de un   umbral, Exigencias de capital de solvencia, Reaseguro de exceso de p&eacute;rdidas (XL), Medidas de riesgo.</p>     <p>&nbsp;</p>     <p><font size="3"><b>R&Eacute;SUM&Eacute;:</b></font> </p>     <p>Une estimation pr&eacute;cise des r&eacute;clamations extr&ecirc;mes   est fondamentale pour &eacute;valuer les exigences du capital de solvabilit&eacute; &eacute;tablies par Solvabilit&eacute; II. Sur base de la Th&eacute;orie de la Valeur Extr&ecirc;me, cet article r&eacute;alise une estimation param&eacute;trique pour ajuster une distribution de Pareto G&eacute;n&eacute;ralis&eacute;e des donn&eacute;es des assurances automobiles de deux compagnies importantes et repr&eacute;sentatives d'assurances du March&eacute; espagnol. De m&ecirc;me, nous d&eacute;montrons comment la Th&eacute;orie de la Valeur Extr&ecirc;me am&eacute;liore les ajustements classiques, par un traitement s&eacute;par&eacute; des sinistres extr&ecirc;mes des risques de masse, ce qui optimise les processus de tarification et fixe une position d&eacute;termin&eacute;e de transfert de risque.</p>     <p>  <font size="3"><b>MOTS-CLEFS:</b></font> </p>     ]]></body>
<body><![CDATA[<p>Distribution de Pareto G&eacute;n&eacute;ralis&eacute;e, Estimation   de queue, Solvabilit&eacute; II, R&eacute;clamations hors seuil, Exigences du   capital de solvabilit&eacute;, R&eacute;assurance de pertes excessives (XL),   Mesures de risque.</p>     <p>&nbsp;</p>     <p><font size="3"><b>RESUMO:</b></font> </p>     <p>Uma estima&ccedil;&atilde;o precisa das reclama&ccedil;&otilde;es extremas &eacute;   fundamental para avaliar as exig&ecirc;ncias de capital de solv&ecirc;ncia   estabelecidas por Solv&ecirc;ncia II. Baseando-nos na Teoria do Valor   Extremo (TVE), este artigo realiza uma estima&ccedil;&atilde;o param&eacute;trica   para ajustar uma distribui&ccedil;&atilde;o de Pareto Generalizada aos dados   de seguros de autom&oacute;vel de duas importantes e representativas   companhias de seguros que operam no Mercado espanhol. Da   mesma forma, demonstramos como a TVE melhora os ajustes   cl&aacute;ssicos, ao tratar separadamente os sinistros extremos dos   riscos de massa, o que leva a otimizar os processos de tarifa&ccedil;&atilde;o   e a estabelecer uma posi&ccedil;&atilde;o determinada de transfer&ecirc;ncia do   risco.</p>     <p>  <font size="3"><b>PALAVRAS CHAVE:</b></font> </p>     <p>Distribui&ccedil;&atilde;o de Pareto Generalizada, Estimativa   de fila, Solv&ecirc;ncia II, reclama&ccedil;&otilde;es acima de um limite, Exig&ecirc;ncias   de capital de solv&ecirc;ncia, Resseguro de excesso de danos   (XL), Medidas de risco.</p>     <p>&nbsp;</p>     <p>  <font size="3"><b>1. INTRODUCTION</b></font></p>     <p>  Solvency II, the new global framework of European insurance supervision   (IAIS, 2003 and 2005; IAA, 2004), includes the behavior of extreme events   among the insurers' overall financial position parameters, by contrast with    Solvency I, which did not consider the whole variety of risks (IAIS, 2005,   and IAA, 2004).</p>     <p>  With extremes being low-frequency, high-severity, heavy-tail-distributed occurrences   (K&euml;llezi and Gilli, 2000), the classical risk theory is not entirely   explicative. Extremes fluctuate even more than the risks of volatility and   uncertainty and this hinders the assessment of loss amounts and capital   sums necessary to their coverage.</p>     ]]></body>
<body><![CDATA[<p>  Management of extreme events requires a special consideration over a   sufficiently wide period to accurately gauge their impact and whole effects   (Coles, 2001). While up to now the Pareto distribution was commonly employed   to modeling the tails of loss severities, adjustments with Extreme Value   Theory (EVT)-based distributions significantly improve tail distribution   inference and analysis.</p>     <p>  EVT provides insurers with a useful tool to manage risks (Embrechts et al.,   1997) , for it allows a statistical-based inference of extreme values in either a population or a stochastic process, and hence a more accurate   probability estimation of more extreme events than   the historical ones. By modeling extremes aside the global   sample data, EVT captures high values at the tail (outliers)   and situations exceeding the records, not needing to   turn to the global distribution of the data observed. Consequently, the study of extreme risk preserves insurers' stability and solvency when facing the occurrence of extreme   losses. The application of statistical models helps to more   precisely measuring risks and optimally deciding on capital   requirements, reserving, pricing and reinsurance layers.</p>     <p>  Similarly to McNeil and Saladin (1997), McNeil (1997), Embrechts   et al. (1999), Cebri&aacute;n et al. (2003), or Watts et al.   (2006), we illustrate the possibilities of EVT by means of   an empirical study on the loss claims databases of two representative   insurers operating within the Spanish motor   liability insurance market.</p>     <p>  We underline the importance of analyzing largest losses,   not only for the reinsurer, but also for the direct insurer,   to accurately infer the occurrence of extreme events upon   historical information. Since uncertainty of major events   may be lowered with a limit distribution of extreme claims   ascertaining both their probabilities and return periods,   extreme-modeling-based inference becomes an additional,   valuable input to the information system supporting each insurer's solvency decision-making process (i.e., within the   Solvency II framework).</p>     <p>  The remainder of the paper is organized as follows. Section   2 summarizes those EVT results underlying our modeling.   Section 3 describes the sample databases of two Spanish   motor-liability insurers and presents some preliminary results   on the historical losses of each company. Section 4   models the extreme events analyzed. Section 5 applies our modeling to approximate the reinsurance's risk premium as   well as two significant solvency-linked risk measures: the   VaR and the TVaR. Section 6 applies EVT as a management   tool. Finally, Section 7 concludes.</p>     <p>&nbsp;</p>     <p><font size="3"><b> 2. THEORETICAL BACKGROUND: THE   GENERALIZED PARETO DISTRIBUTION    AND THE PICKANDS-BALKEMA-DE HAAN THEOREM</b></font></p>     <p>  Among EVT results, the Generalized Pareto Distribution is   a powerful tool to model the behavior of claims over a   high threshold, and in particular, to establish how extreme   they can be. In close connection, the Pickands-Balkema-De   Haan theorem, another important result from EVT, states   that the distribution function (df) of excesses over a high   threshold may be approximated by the GPD (Beirlant et   al., 1996; Kotz and Nadarajah, 2000; Reiss and Thomas,   2001; Embrechts, Kl&uuml;ppelberg and Mikosch, 1997 ; and De   Haan and Ferreira, 2006).</p>     <p>  Let X<sub>1,n</sub>, X<sub>2,n</sub>, ..., X<sub>n,n</sub> be a sequence of independent random   variables with a common continuous distribution, the     <i>peaks over a threshold method</i> allows us to infer the distribution   of the observed values once they become higher   than a threshold u.</p>     <p>  Setting up a certain high threshold u, and being x0 the   right endpoint of the distribution: </p>     ]]></body>
<body><![CDATA[<p>    <center><img src="img/revistas/inno/v20n36/36a04e1.jpg"></center></p>     <p>Then, the function of excesses larger than u is defined as:</p>     <p>    <center><img src="img/revistas/inno/v20n36/36a04e2.jpg"></center></p>     <p>where x represents the observed value (i.e. gross claim   loss in our study) and y stands for the excess over the threshold u, i.e. <i>y=x-u</i>.</p>     <p>  With the value of the threshold being optimized, it is possible   to fit F<sup>u</sup>(x) to a Generalized Pareto Distribution (GPD)   when u reaches a sufficiently high value:</p>     <p>    <center><img src="img/revistas/inno/v20n36/36a04e3.jpg"></center></p>       <p>The GPD is a two parameter distribution with df:</p>     ]]></body>
<body><![CDATA[<p>    <center><img src="img/revistas/inno/v20n36/36a04e4.jpg"></center></p>     <p>where  y&ge;0 if &xi;&ge;0, and if &xi;&gt;0, with &xi; and &beta; being the   shape and scale parameters. When &xi;&gt;0, we have the   usual Pareto distribution and the GPD is heavy-tailed, and   the higher the parameter the longer the tail. If &xi;&gt;0, we   have a type II Pareto distribution, whereas &xi;=0 gives the exponential distribution.</p>     <p>&nbsp;</p>     <p><font size="3"><b>3. DATABASES AND MODELING HYPOTHESES</b></font></p>     <p>  Our analysis focuses on two representative Spanish insurers' motor liability portfolios along a ten year-period. The   first one counts on a long, renowned business trajectory.</p>     <p>The second exhibits a more recent history, although significantly   improved over the last years of the interval. The   diverse comparative situation of both companies raises   the quality of the sample, since their relatively divergent   situation allows a better study of extreme values in two   quite differentiated, but at the same time representative,   positions of a growing insurance industry like the Spanish.   Data of each company have been distorted in order to maintain their respective corporate identities undisclosed.</p>     <p>  Two different concepts are assumed as forming the loss   amount:</p> <ul>       <p>    <li>The cost of settled claims, summing all net payments   already made out</li></p>     ]]></body>
<body><![CDATA[<p>    <li>The cost of non settled claims, comprising all net payments   already made out, and/or the reserves for the   estimated and still pending future payments.</li></p>     </ul>     <p>  Data have been updated to 2006 values to avoid the   effect of inflation.</p>     <p>Tables <a href="img/revistas/inno/v20n36/36a04t1.jpg" target="_blank">1</a> and <a href="img/revistas/inno/v20n36/36a04t2.jpg" target="_blank">2</a> display, on an annual basis, each company's    number of claims, together with their total and average individual   costs in nominal currency units.</p>     <p>  Data in Tables <a href="img/revistas/inno/v20n36/36a04t1.jpg" target="_blank">1</a> and <a href="img/revistas/inno/v20n36/36a04t2.jpg" target="_blank">2</a> indicate that both insurers lacked   of a stable average cost evolution, due mainly to three reasons:   the fact that the final cost is integrated by diverse   covers, the different settlement periods, and the occurrence   of extreme events.</p>     <p>  Other indicators are shown in Table <a href="img/revistas/inno/v20n36/36a04t3.jpg" target="_blank">3</a> and <a href="img/revistas/inno/v20n36/36a04t4.jpg" target="_blank">4</a> to describe the   behavior of the claims. Dividing claims over policies we obtain a measure of the annual claim's frequency.  </p>     <p>The insurer A (<a href="img/revistas/inno/v20n36/36a04t3.jpg" target="_blank">Table 3</a>) shows a lower frequency, between   14 and 16 percent, and a weighted average frequency of 14.93 percent in the last 9 years. Its position within the   Spanish market is solid and deviations from the average   are not strong. The history of the insurer B (<a href="img/revistas/inno/v20n36/36a04t4.jpg" target="_blank">Table 4</a>), on the   other hand, is less consolidated, with a higher weighted   average loss frequency (45.13 percent) only over the last   four years of the interval. Nevertheless, the claims frequency over the portfolio is decreasing as the number of policies   in portfolio grows<a href="#1" name="s1">&#91;1&#93;</a>.</p>     <p>These descriptions and the specific features of the samples   gave us some clues for the modeling of the extremes in both companies.</p>     <p>&nbsp;</p>     ]]></body>
<body><![CDATA[<p><font size="3"><b> 4. GPD ADJUSTMENT TO A SAMPLE OF EXTREME CLAIMS WITHIN THE SPANISH MOTOR LIABILITY INSURANCE MARKET</b></font></p>     <p>  We develop in this section the parametrical modeling of   extremes for the insurers under study. These will be the   main steps:</p> <ol type="1">       <p>    <li>Choose the optimum threshold to fit the GPD, by means   of the empirical mean excess function.</li></p>     <p>    <li>Estimate the model parameters according to the heavytailedness   of the distribution, with those estimators   that minimize the Mean Squared Error (MSE).</li></p>     <p>    <li>Check the goodness-of-fit to the underlying distribution   with the Quantile-Quantile plot (QQ plot) and   some error measures.</li></p>     <p>    <li>Infer future extreme events under the estimated conditional   model.</li></p>     ]]></body>
<body><![CDATA[<p>    <li>Calculate the marginal probabilities and determine the   unconditional distribution.</li></p>     </ol>       <p>&nbsp;</p>     <p><font size="3"><b><i>  Choice of the optimal threshold</i></b></font></p>     <p>  Assuming sample data are independent and stationary,   the optimal threshold to fit the GPD results from the mean   excess function, <i>e</i>(<i>u</i>)=<i>E</i>&#91;<i>X-u</i> &zwnj; <i>X</i>&gt;<i>u</i>&#93;, which is estimated   in practice with the empirical mean excess function, </p>     <p>    <center><img src="img/revistas/inno/v20n36/36a04e5.jpg"></center></p>     <p>where   &ecirc;<sub>n</sub>(<i>X<sub>k+1</sub></i>) is the mean of the excesses over the    threshold      <i>u = X<sub>k+1</sub></i> minus the selected threshold, and <i>k</i> is the ordinal position in the descendent ordered data.</p>     <p>  As discussed in Beirlant et al. (1996), data over a certain   value of <i>u</i> may reasonably be considered as heavy-tailed   if the mean excess plot follows a growing trend. Since the   plot is linear with positive gradient, there exists a solid trace   that our sample data will fit to a GPD with positive parameter.</p>     ]]></body>
<body><![CDATA[<p>  At a sufficiently large sampling layer, say 25, the number   of excesses of the insurer A is roughly 1,000, with the   mean-excess function plotted in <a href="img/revistas/inno/v20n36/36a04f1.jpg" target="_blank">figure 1</a> (left plot).</p>     <p><a href="img/revistas/inno/v20n36/36a04f1.jpg" target="_blank">  Figure 1</a> shows that the function is horizontal between 20   and 70, but straightens out at around 75, what implies   that the value of 75 should be taken as the optimal threshold   (right plot) for the insurer A dataset, and hence that   excesses beyond (as many as 125) might fit to a GPD.</p>     <p>  The mean excess function of the 1,000 largest claims covered   by insurer B over the ten year period analyzed is sketched   in the graphic below:</p>     <p><a name="f2">&nbsp;</a></p>     <p>    <center><img src="img/revistas/inno/v20n36/36a04f2.jpg"></center></p>     <p>  <a href="#f2">Figure 2</a> shows the plot of the pairs</p>     <p>    <center>   (<i>X<sub>k+1</sub></i>;<i>E<sub>k,n</sub></i>) for <i>k </i>= 1,...,<i>n</i>-1  </center></p>     <p>which have an increasing trend from a quite low priority   until 30,000 where unexpectedly become plain or even   decreasing for the highest thresholds. This means that values   beyond 30,000 should not be chosen as the optimal   threshold to fit the insurer B dataset to a GPD. At a lower   threshold, for instance 10,000, the mean excess plot in <a href="#f3">Figure   3</a> exhibits a similar behavior to that observed in <a href="#f2">Figure   2</a> (i.e., data describe an increasing trend right up to the highest values).</p>     ]]></body>
<body><![CDATA[<p><a name="f3">&nbsp;</a></p>     <p>    <center><img src="img/revistas/inno/v20n36/36a04f3.jpg"></center></p>     <p>  However, the non growing-linearity of the function for the   upper observations, even when the priority is raised, calls   into question the suitability of the GPD to fit the insurer B dataset. It is worth then asking whether the sample extreme   claims are heavy-tailed or not.</p>     <p>  First of all, the QQ plot versus the exponential is useful to   address this question, as it permits us to establish both   the heavy-tailedness and the fit of the data to a mediumsized   distribution like the exponential distribution (McNeil,   1997).</p>     <p>  The QQ plot should be expected to form a straight line if   the data fit to an exponential distribution. A concave curvature   will suggest a heavier-tailed distribution, whereas   a convex deviation would indicate, conversely, a shortertailed   distribution.</p>     <p>  For the insurer A, the exponential QQ plot of excesses over   the optimum selected threshold (75) results to be:</p>     <p><a name="f4">&nbsp;</a></p>       <p>    <center><img src="img/revistas/inno/v20n36/36a04f4.jpg"></center></p>     ]]></body>
<body><![CDATA[<p>This QQ plot represents the pairs <img src="img/revistas/inno/v20n36/36a04e6.jpg" align="absmiddle">, where   empirical Quantiles or rth order statistic X<sub>r,n</sub> appear as estimates of the unknown theoretical Quantiles, <img src="img/revistas/inno/v20n36/36a04e7.jpg" align="absmiddle">, representing the claim levels surpassed in <img src="img/revistas/inno/v20n36/36a04e8.jpg" align="absmiddle"> percent of the cases <a href="#f4">Figure 4</a> shows that the sample data do not fit to the exponential distribution, since they describe a concave curve rather than a straight line. Concavity, as already stated in general terms, indicates in this specific context that the data distribution is heavier-tailed.</p>     <p>  As far as the insurer B is concerned, the exponential QQ   plot of the pairs <img src="img/revistas/inno/v20n36/36a04e9.jpg" align="absmiddle"> for the percentiles <img src="img/revistas/inno/v20n36/36a04e10.jpg" align="absmiddle"> is ploted as follows:</p>     <p><a name="f5">&nbsp;</a></p>     <p>    <center><img src="img/revistas/inno/v20n36/36a04f5.jpg"></center></p>     <p>The blue and red lines in <a href="#f5">Figure 5</a> represent the respective   cloud of points for each percentile, whereas the black line contrasts whether regressions are linear or not.</p>     <p>  The slight convex curvature of the adjusting lines with respect   to the bisector provides an evident indication that the   extreme values of the insurer B cannot properly be captured   by the exponential distribution. But the fact that those lines are almost straight leads to think that the largest   claims of the insurer B might not be as heavy as those of   the insurer A. In such case, the GPD adjusting parameter,   although positive, would adopt a value very close to zero.</p>     <p>  The outcomes of the QQ plot have been further verified   with the likelihood-ratio and the Hasofer-Wang tests, employed   by the program XTREMES (Reiss et al., 2001) to   measure the data goodness-of-fit to the exponential distribution.   Accordingly, the hypothesis of exponential tail   (null hypothesis) should be rejected if both tests yield values   close to zero, whilst values near 1 shall determine the   non-rejection of the null hypothesis, and therefore, the assumption   that the tail distribution decreases exponentially.</p>     <p>  After the verification was done, p-values of the insurer A   tests above the threshold 75 turned out to be 0.00000113   with the likelihood-ratio test, and 0.00000167 with the   Hasofer-Wang test. For the insurer B, p-values are 0.09   with the likelihood-ratio test, and 0.145 with the Hasofer-   Wang test.</p>     <p>  Results of both companies lead to reject the null hypothesis   and consequently the exponential distribution as well.   Nevertheless, for the insurer B, though p-values approach   to zero for observations above 10,000, the tests do not   result null, what requires deeper analysis when fitting the   parametric distribution.</p>     ]]></body>
<body><![CDATA[<p>&nbsp;</p>     <p><font size="3"><b><i>  Parameters estimation</i></b></font></p>     <p>  Applying the program XTREMES to fit the insurers A and B   sample claims to a GPD, and selecting the Drees-Pickands   estimator for the insurer A, since it renders the lowest MSE,   we find that the adjustment of its 125 excesses over the   optimal threshold (75) yields  &xi;=0.488146, &beta;=13.0959   and &mu;=75.1893 as parameter estimates.</p>     <p>  The QQ plot reflects the goodness-of-fit between the empirical   Quantiles on the x-axis, and the theoretical Quantiles,</p>       <p><a name="e1">&nbsp;</a></p>       <p>    <center><img src="img/revistas/inno/v20n36/36a04e11.jpg"></center></p>     <p>on the y-axis, in such a way that the closer the theoretical   value (blue line) approximates to the datasample (bisector), the more optimum the adjustment.</p>     <p>  The QQ plot indicates an almost complete equivalence   between the empirical Quantiles and the GPD theoretical   Quantiles. The coefficient of determination (R-square),   0.9845, corroborates that the fitted distribution captures   98.5 percent of all excesses beyond the threshold. The MSE value of 30.94 was the minimum compared to other   GPD fittings, thus indicating that the empirical values do   not significantly deviate from our theoretical projection.   Finally, the Relative Deviations Average (RDA) is virtually   null, reaching only 0.0168.</p>     <p>    ]]></body>
<body><![CDATA[<center><img src="img/revistas/inno/v20n36/36a04f6.jpg"></center></p>     <p>  The linearity of the QQ plot, as well as the outcomes of the   diagnostic measures, reveal that, in the case of the insurer   A, the 125 most severe claims larger than 75 reliably fit to   a GPD with parameters  &xi;=0.488146, &beta;=13.0959 and &mu;=75.1893.</p>     <p>  As to the insurer B, conversely, we applied the XTREMES   algorithm to fix the optimal threshold, for although the   empirical mean excess function proves to be insufficient,   the QQ plot suggests that the extremes will likely fit to a   heavy-tailed distribution.</p>     <p>  Maximum-likelihood was selected among a variety of estimation   methods since it minimizes both the MSE and the   RDA. Accordingly, the graphic below displays the estimated   parameter for the extremes under discussion:</p>     <p><a name="#f7">&nbsp;</a></p>     <p>    <center><img src="img/revistas/inno/v20n36/36a04f7.jpg"></center></p>       <p><a href="#f7">Figure 7</a> shows that a value around 0.4 is obtained for 500   observation, whereas the parameter becomes negative by   maximum-likelihood for less than 50 observations, what   implies a short-tailed distribution tending to a right endpoint,   in strict coherence with the shift downwards displayed   by the mean excess plot, and leads to conclude that the   largest observations of the insurer B do not fit to a GPD.   And despite the fact that the dispersion of the major values   reduces their goodness of fit, we apply the optimal fit   rendered by the software XTREMES, i.e. the 159 extreme values over a threshold fixed at 11,908.</p>     <p>  As the next graphic reflects, the tail index &xi; estimated by   maximum likelihood for those 159 observations remains   quite steady at around 0.1.</p>     <p>    ]]></body>
<body><![CDATA[<center><img src="img/revistas/inno/v20n36/36a04f8.jpg"></center></p>       <p>The mean excess plot of the insurer B at a threshold set at   11,908 shown in <a href="#f9">figure 9</a>, exhibits a growing trend until   approximately 37,000, but stabilizes and even decreases beyond.</p>     <p><a name="f9">&nbsp;</a></p>     <p>    <center><img src="img/revistas/inno/v20n36/36a04f9.jpg"></center></p>     <p>One may wonder if this non-increasing pattern at the tail is   relevant enough to cast into doubt the adjustment of the   estimated GPD to the claims of the insurer B over 11,908,   whose parameters are  &xi;=0.137872 &beta;=8,454.29 and &mu;=11,908.</p>     <p>  It is necessary, then, to check the GPD QQ plot, with the   estimated theoretical Quantiles resulting from:</p>     <p><a name="e2">&nbsp;</a></p>       <p>    <center><img src="img/revistas/inno/v20n36/36a04e12.jpg"></center></p>     ]]></body>
<body><![CDATA[<p>&nbsp;</p>     <p>    <center><img src="img/revistas/inno/v20n36/36a04f10.jpg"></center></p>     <p>For two similar series of claims (71,851 and 71,541; 54,792   and 54,420, respectively), the mean excess plot decreases   at the tail, what at the same time increases the goodness   measures (up to MSE = 1,274.388 and RDA = 0.0171)   and does not reduce effectiveness, for R<sup>2</sup> is still of an accurate   99.32 percent. Moreover, disregarding the last observations,   R<sup>2</sup> raises to 99.8 percent, while the goodness   measures significantly decrease (<i>MSE</i> = 194,556 and   <i>RDA</i> = 0.01469), as displayed in the next QQ plot.</p>     <p>    <center><img src="img/revistas/inno/v20n36/36a04f11.jpg"></center></p>     <p>Considering the linearity of the QQ plot and the outcomes   of both MSE and RDA, the goodness-of-fit of the estimated   GPD to the extremes of the insurer B seems entirely reliable.</p>     <p>&nbsp;</p>     <p><font size="3"><b><i>  Goodness-of-fit</i></b></font></p>     <p>  Based on the previous parameters estimation, the GPD   function of the insurer A is given by</p>     ]]></body>
<body><![CDATA[<p>    <center><img src="img/revistas/inno/v20n36/36a04e13.jpg"></center></p>   where <i>W</i> stands for the truncated distribution function of the exceedances over the threshold, while for the insurer B, the GPD function is,     <p>    <center><img src="img/revistas/inno/v20n36/36a04e14.jpg"></center></p> Together with the previous test to check the GPD goodness-of-fit to the 125 adjusted values of the insurer A, we compare the estimated GPD distribution with the empirical distribution function represented by the pairs</p>     <p>    <center>   <img src="img/revistas/inno/v20n36/36a04e15.jpg">. </center></p>     <p>    <center><img src="img/revistas/inno/v20n36/36a04f12.jpg"></center></p>     <p>The plot shows a virtual coincidence between both distributions,   what suggests an accurate capture of the claims   exceeding the optimal threshold (75). Nevertheless, it   seems that the theoretical distribution (black line) at the   tail shows values slightly lower than those of the empirical   ones (red line). Future claims will lead us to a more accurate adjustment.</p>     <p>With respect to the insurer B, the graph below reflects that   claims larger than the optimal threshold (11,908) perfectly fit to the previously calculated GPD:</p>     ]]></body>
<body><![CDATA[<p>    <center><img src="img/revistas/inno/v20n36/36a04f13.jpg"></center></p>     <p>&nbsp;</p>     <p><font size="3"><b><i>Conditional inference and prediction</i></b></font></p>     <p>  Some relevant solvency-based probabilities are calculated   in this Section, on the basis of both the estimated GP df   and the estimated GP survival function.</p>     <p>  As far as the insurer A is concerned, we find that, say, 99   out of the next 100 claims over the threshold will cost less   than 350, whilst the other 1 will cost more:</p>     <p>    <center><img src="img/revistas/inno/v20n36/36a04t5.jpg"></center></p>     <p>Our finding for the insurer B is that, say, 970 out of the   next 1,000 claims exceeding the layer fixed at 11,908 remain under 50,000.</p>     <p>    ]]></body>
<body><![CDATA[<center><img src="img/revistas/inno/v20n36/36a04t6.jpg"></center></p>     <p>The inverse of the insurer A probability function generates   the estimated theoretical Quantile function (<a href="#e1">equation (1)</a>)   that makes it possible to perform the following relevant calculations in terms of solvency,</p>     <p>    <center><img src="img/revistas/inno/v20n36/36a04t7.jpg"></center></p>     <p>resulting that, for instance, an excess of 75 with probability   99 percent will not cost more than 302.387, while 1 out   of 100 claims over the threshold will probably surpass the reference value of 302.387.</p>     <p>  Applying the <a href="#e2">equation (2)</a> to the insurer B, we find that   excesses over a threshold set at 11,908 will cost less than   66,291, with a probability of 99 percent. This means that   100 claims over the threshold will have to occur to find one   larger than 66,291 c. u.</p>     <p>    <center><img src="img/revistas/inno/v20n36/36a04t8.jpg"></center></p>     <p>&nbsp;</p>     <p><font size="3"><b><i>Solvency Unconditional inference and prediction</i></b></font></p>     ]]></body>
<body><![CDATA[<p>  By properly approximating the conditional probabilities   and Quantiles as done before, insurers will be able to estimate   the unconditional ones and take optimal decisions   on free funds, solvency margins and reinsurance cession.</p>     <p>  The probability <i>p</i>' of an extreme over an amount (X) happening   results by multiplying the GPD-adjusted conditional   probability of claims over a certain threshold, but   can also be obtained as the ratio between the number of   events (insurer A: 125; insurer B: 159) over the threshold   (insurer A: 75; insurer B: 11,908) and the total claims occurred   in the respective portfolios over the ten year period   (insurer A: 48,304; insurer B: 181,757):</p>     <p>    <center><img src="img/revistas/inno/v20n36/36a04e16.jpg"></center></p>     <p>At this stage, a key question to determine the capital requirements   lies in calculating the expected number of   claims over a certain threshold over the next year. This issue   may be solved by extrapolating onto the next year either   the historical number of claims or the historical loss   occurrence frequency per policies, or even by assuming a Poisson distribution.</p>     <p>  The claim frequency per policy was very stable in the case   of the insurer A. It remained within a short range of between   13 and 16 percent over the last nine years, (shown   in y-axis right in <a href="img/revistas/inno/v20n36/36a04f14.jpg" target="_blank">figure 14</a>).</p>     <p>  and has gradually decreased, in the case of the insurer B,   due to the strong growth of its portfolio over the last four   years, finally stabilized at levels around 40 percent (y-axis   right in <a href="img/revistas/inno/v20n36/36a04f15.jpg" target="_blank">figure 15</a>).</p>     <p>Past tendencies of the insurer B, however, will not probably   be extrapolable to the close future and the recent behavior will more likely be explicative of the following years.</p>     <p> If we take the historical claim's number of the insurer A (insurer B) to infer forthcoming frequencies, what was done   by means of a linear adjustment with R<sup>2</sup> = 95.93 percent   (R<sup>2</sup> = 99.55 percent for the last five years), we find that:</p>     <p>  Between 6,250 and 6,680 (45,765) claims are expected   to occur as a global number and 16 or perhaps 17 (40)   out of them are expected to exceed the threshold <i>u</i> set at   75 (11,908). So, being <i>&ucirc;<sub>e</sub></i>   the expected number of large   claims higher than <i>u</i>:</p>     ]]></body>
<body><![CDATA[<p>    <center><img src="img/revistas/inno/v20n36/36a04e17.jpg"></center></p>     <p>Alternatively, if we extrapolate the portfolio and the claim   frequency per policy (red line in figures 16 and 17) of the   insurer A (insurer B), with linear adjustment R<sup>2</sup> = 98.9 percent   (R<sup>2</sup> = 99.67 percent, considering only the last five   years), and apply it to the weighted mean claim frequency   ("weighted" mean the loss frequency of the last five years),   the expected total number of claims reaches as much as 6,390 (51,071).</p>     <p>  This number remains, as regards the insurer A, within the   interval previously established, even for the largest claims <img src="img/revistas/inno/v20n36/36a04e18.jpg" align="absmiddle">, whilst the estimation is slightly more pessimistic   for the insurer B, since its expected claim frequency over   the next year will probably be lower than the average of   the last five years <img src="img/revistas/inno/v20n36/36a04e19.jpg" align="absmiddle">.</p>     <p>Finally, if the choice is to assume a Poisson distribution, its parameter turns out to be <img src="img/revistas/inno/v20n36/36a04e20.jpg" align="absmiddle"> for the insurer A.</p>     <p>Selecting this value as the average number of claims is   feasible, as the number of claims above the threshold 75   remained stable over the time, and also due to the fact   that the mean and variance of the distribution are similar.   It would not be valid to assume, by contrast, 15.9 as the   average number of claims for the insurer B, since its number   of claims exceeding the threshold gradually increased   over the years, and the variance of the distribution stands quite above the mean.</p>     <p>    <center><img src="img/revistas/inno/v20n36/36a04t9.jpg"></center></p>     <p>With respect to the insurer A, and assuming a Poisson distribution,   one may expect as much as 18 claims exceeding   the threshold (fixed at 75) over the next year, with a 95 percent level of confidence <i>P<sub>12.5</sub></i>(<i>n</i>=18) = 0.948. Such approximation renders a more slightly pessimistic projection. For this reason, and according to the principle of prudence, 18 will be assumed as the expected number of claims larger than 75.</p>     <p>  Then, extremes larger than 75 expected to exceed a loss   amount of, say, 350, over the next year can be quantified   as follows:</p>     ]]></body>
<body><![CDATA[<p>    <center><img src="img/revistas/inno/v20n36/36a04e21.jpg"></center></p>     <p>As far as the insurer B is concerned, a conservative approach   suggests that the number of claims larger than 11,908 fits to a Poisson distribution if, and only if, <img src="img/revistas/inno/v20n36/36a04e22.jpg" align="absmiddle"> is taken as the highest number of claims among those observed over the ten year interval (that is, 35). Under such assumption, the expected number of claims above 11,908 will equal 45, with a notable 95.75 percent level of confidence.</p>     <p>  Since this approximation yields very similar results to those   obtained by extrapolation based on the number of policies,   the principle of prudence leads to assume the latter as   the expected number of claims larger than 11,908. Subject   to those conditions, extremes over 11,908 expected to exceed   50,000 over the next year will be</p>     <p>    <center><img src="img/revistas/inno/v20n36/36a04e23.jpg"></center></p>     <p>Conversely, and assuming the hypothesis <img src="img/revistas/inno/v20n36/36a04e24.jpg" align="absmiddle"> and <img src="img/revistas/inno/v20n36/36a04e25.jpg" align="absmiddle">, it is possible to use equations <a href="#e1">(1)</a> and <a href="#e2">(2)</a> to calculate the expected loss amount X, given a certain return period.</p>     <p>For the insurer A (insurer B), <a href="img/revistas/inno/v20n36/36a04t10.jpg" target="_blank">Table 10</a> indicates that the   amount 1,509 (146,147) will not be exceeded with 0.5   percent (1 percent) probability over the next year, and   reflects a return period of 200 (100) years for such kind of claims.</p>     <p>  Thus, we find that the expected amount for the 100-year   return period of the insurer A is 2.24 times the expected   claim for the insurer B for its corresponding 100-year return   period. These are the explanatory reasons:</p> <ul>     <p>    ]]></body>
<body><![CDATA[<li>The threshold of the insurer A is almost twice as much   as that of the insurer B.</li></p>     <p>    <li>The tail index of the insurer A (and therefore its extreme   claims-linked probabilities) is larger than the one fitted for the insurer B.</li></p>     </ul>     <p>&nbsp;</p>     <p><font size="3"><b>5. APPLICATION TO THE XL REINSURANCE:   PARAMETRIC ESTIMATION OF THE NET REINSURANCE PREMIUM</b></font></p>     <p>  Excess of Loss reinsurance - XL covers a primary insurer   against losses over a certain amount, referred to as layer   (<i>P</i>). On the basis of its own risk portfolio, the reinsurer   must know exactly both the kind of severe losses assumed   and their best fitting model, since both factors will determine   the reinsurance risk premium, <i>RP<sub>XL</sub></i>= <i>E<sub>R</sub></i>(<i>S</i>).</p>     <p>  Whereas <i>E<sub>R</sub></i>(<i>S</i>) has traditionally been estimated in a non   parametric way upon the historical total loss, we propose   in this Section the use of a parametric EVT model to more   accurately perform such calculation.</p>     <p>  Under the classical risk theory hypotheses, the expected   total loss over a period is given by <i>E<sub>R</sub></i>(<i>S</i>) = <i>E</i>(<i>N</i>) &times;   <i>E<sub>R</sub></i>(<i>X</i>). An unbiased estimator of this average is (Reiss et   al., 2001):</p>     <p>    ]]></body>
<body><![CDATA[<center><img src="img/revistas/inno/v20n36/36a04e26.jpg"></center></p>     <p>that is, the quotient between the total loss amount occurred   along <i>T</i> periods <i>S<sub>(T)</sub></i> and the number T of periods considered.</p>     <p>  However the reinsurance risk premium can be estimated   parametrically:</p>     <p>    <center><img src="img/revistas/inno/v20n36/36a04e27.jpg"></center></p>     <p>where the number of claims larger than the threshold can   be estimated through a Poisson distribution, and the expected   loss amount above the layer <i>P</i>, which is covered by the reinsurer, results from the adjusted GPD as follows:</p>     <p>    <center><img src="img/revistas/inno/v20n36/36a04e28.jpg"></center></p>     <p>with <i>dF<sup>u</sup></i>(<i>x</i>) = <i>w</i>(<i>x</i>) being the density function of the adjusted GPD.</p>     <p>Nevertheless, since the reinsurance layer does not have to   coincide with the threshold of the optimized GPD, <i>e<sub>F</sub></i>(<i>u</i>) can be estimated, under the necessary condition  <i>P</i>&gt;<i>u</i>, by</p>     ]]></body>
<body><![CDATA[<p>    <center><img src="img/revistas/inno/v20n36/36a04e29.jpg"></center></p>     <p>It is well known that reinsurers only cover that part of the   final cost corresponding to the expected excess over the   layer, that is, <i>E</i> &#91;(<i>X</i> &zwnj; <i>X</i> &gt; <i>P</i>)-<i>P</i>&#93;. Assuming that both the   occurrence moments and the loss amounts fulfill the conditions   of a compound Poisson process (<i>&lambda;, W</i>), with &lambda; denoting   the average claims number over a period, and <i>W</i>   the GPD df of excesses above the layer <i>P</i>, the risk premium appropriate to the subsequent period is</p>     <p>    <center><img src="img/revistas/inno/v20n36/36a04e30.jpg"></center></p>     <p>where <i>m</i>(<i>W<sub>&xi;,&beta;,P</sub></i>) stands for the expected value of the GPD, with parameters <i>&xi;, &beta;</i>, and layer <i>P</i>, such that</p>     <p>    <center><img src="img/revistas/inno/v20n36/36a04e31.jpg"></center></p>     <p>For instance, with layers <i>P<sup>A</sup></i>=350 and <i><i>P<sup>B</sup></i></i>=50,000 the estimated   number of exceeding claims over the next year are, respectively,</p>     <p>    ]]></body>
<body><![CDATA[<center><img src="img/revistas/inno/v20n36/36a04e32.jpg"></center></p>     <p>By contrast, a non parametric estimation of the risk premium   to be paid by the insurer B (for instance, following the simple equation 7) renders as result 6,675.6, what implies an underestimation of the reinsurer's risk premium.</p>     <p>  Even assuming the historical behavior as non significant   (since six claims larger than 50,000 took place over the last four years), and applying the average cost times the   number of expected excesses</p>     <p>    <center><img src="img/revistas/inno/v20n36/36a04e33.jpg"></center></p>     <p>the net premium would be 29.2 percent lower than that estimated with parametric methods.</p>     <p>This leads to the logical conclusion that non-parametric   methods should not be applied when the historical background   available is insufficient, which is precisely the case   of the insurer A, with only one historic claim larger than 350.</p>     <p>  The adjustment of data on severe losses with EVT not only   appears relevant for the reinsurer. Knowledge on its own   extremes allows the direct insurer to optimally decide two   key questions: (a) either reinsuring the risk of losses over a   certain layer in exchange of a premium, or retaining a sufficient   financial capacity to accept claims over a certain loss   layer, (b) choosing the suitable thresholds for both cession   and retention.</p>       <p>&nbsp;</p>     <p><font size="3"><b>  6. EVT AS A MANAGEMENT TOOL</b></font></p>     ]]></body>
<body><![CDATA[<p>  In the light of the imminent implementation of Solvency II,   insurers are developing growing efforts to determine their   optimal capital level, considering that a higher cession to   reinsurance (i.e. low priorities) involves a lower level of free   funds (less remuneration of the net worth), but also a larger   cost to cover severe risks, and vice versa.</p>     <p>  Under Solvency II, capital requirements (Solvency Capital   Requirement, SCR) will be statistically-based and suitable   to be determined through measures relying on both cost   distributions and risk percentiles (Dowd and Blake, 2006),   such as VaR and TVaR, which can be approximated by the   GPD distribution fitted as well.</p>     <p>  These are the conditioned VaR and the TVaR with the adjustment   of the GPD for a threshold optimized, respectively,   at 75 (insurer A) and 11,908 (insurer B):</p>     <p>&nbsp;</p>     <p><font size="3"><b>  7. CONCLUDING REMARKS</b></font></p>     <p>  Insurers and reinsurers share a deep concern in accurately   estimating the probability of claims over a certain threshold.   Expertise in handling extreme risks is decisive to   determine that level of financial capacity required to assuming   or ceding extreme losses.</p>     <p>  Our analysis of sample data from insurers operating within   the Spanish motor liability insurance market illustrates that   fitting a GPD to claims above a high threshold is a powerful   tool to model the tail of severe losses.</p>     <p>Classical approaches are good at modeling mass risks, but   not so much at capturing rare or extreme risks escaping   from the domain of attraction of the traditional distributions.   Conversely, EVT has nothing to do with mass risk,   but renders a good performance when it comes to modeling rare or extreme losses.</p>     <p>  Not intending to overestimate the predictive properties of   EVT, but rather complement the traditional methods, we   show that a sole cost distribution cannot suitably model a   portfolio as a whole. Extreme losses require independent   modeling with self-specific distributions, so that the adjustment   of classical models to blunted losses is more efficient   and less biased, and the fitting of extreme values   to the peaks refine the ultimate inference wished by any   insurer.</p>     <p>  Whereas the classical risk theory appropriately determines   capital level for a certain probability of ruin, EVT does the   same with regard to the volume of funds necessary to attend   peak claims.</p>     ]]></body>
<body><![CDATA[<p>  Being familiar with the behavior of extreme events allows   the insurer to decide either assuming or ceding them and,   as required by Solvency II, determine risk measures (such   as VaR or TVaR). At the same time, it permits the reinsurer   to asses the expectation of losses over a certain layer,   and hence the risk premium to perceive in exchange. As   we have illustrated in this paper, insurers must choose the   best option available in terms of cost of capital. That is, either   keeping a financial capacity to cover VaR or TVaR, or   paying an XL reinsurance premium.</p>     <p>&nbsp;</p>     <p><font size="3"><b>FOOTNOTES</b></font></p>     <p><a href="#s1" name="1">&#91;1&#93;</a> The decreasing trend in the claim frequency has several reasons:   better underwriting rules, more restricted products and the portfolio   cleansing. </p>     <p>&nbsp;</p>     <p><font size="3"><b>  REFERENCES</b></font></p>     <!-- ref --><p>  Beirlant, J., Teugels, J. L. &amp; Vynckier, P. (1996). <i>Practical Analysis of Extreme   Values</i>. Leuven: Leuven University Press.    &nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;[&#160;<a href="javascript:void(0);" onclick="javascript: window.open('/scielo.php?script=sci_nlinks&ref=000289&pid=S0121-5051201000010000400001&lng=','','width=640,height=500,resizable=yes,scrollbars=1,menubar=yes,');">Links</a>&#160;]<!-- end-ref --></p>     <!-- ref --><p>  Cebri&aacute;n, A. C., Denuit, M. &amp; Lambert, P. (2003). Generalized Pareto fit to the society of actuaries' large claims databas. <i>North American    Actuarial Journal</i>, <i>7</i>(3), 18-36.    &nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;[&#160;<a href="javascript:void(0);" onclick="javascript: window.open('/scielo.php?script=sci_nlinks&ref=000291&pid=S0121-5051201000010000400002&lng=','','width=640,height=500,resizable=yes,scrollbars=1,menubar=yes,');">Links</a>&#160;]<!-- end-ref --></p>     ]]></body>
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<surname><![CDATA[Jones]]></surname>
<given-names><![CDATA[B. L]]></given-names>
</name>
</person-group>
<article-title xml:lang="en"><![CDATA[An extreme value analysis of advanced age mortality data]]></article-title>
<source><![CDATA[North American Actuarial Journal]]></source>
<year>2006</year>
<volume>10</volume>
<numero>4</numero>
<issue>4</issue>
<page-range>162-178</page-range></nlm-citation>
</ref>
</ref-list>
</back>
</article>
