<?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>0120-4483</journal-id>
<journal-title><![CDATA[Ensayos sobre POLÍTICA ECONÓMICA]]></journal-title>
<abbrev-journal-title><![CDATA[Ens. polit. econ.]]></abbrev-journal-title>
<issn>0120-4483</issn>
<publisher>
<publisher-name><![CDATA[Banco de la República]]></publisher-name>
</publisher>
</journal-meta>
<article-meta>
<article-id>S0120-44832010000200007</article-id>
<title-group>
<article-title xml:lang="en"><![CDATA[Statistical inference for testing Gini Coefficients: An application for Colombia]]></article-title>
<article-title xml:lang="es"><![CDATA[Inferencia y pruebas estadísticas sobre los Coeficientes de Gini: Una aplicación para Colombia]]></article-title>
<article-title xml:lang="pt"><![CDATA[Inferência e testes estatísticos sobre o Coeficiente de Gini: Uma Aplicação para a Colômbia]]></article-title>
</title-group>
<contrib-group>
<contrib contrib-type="author">
<name>
<surname><![CDATA[Gamboa]]></surname>
<given-names><![CDATA[Luis Fernando]]></given-names>
</name>
<xref ref-type="aff" rid="A01"/>
</contrib>
<contrib contrib-type="author">
<name>
<surname><![CDATA[García-Suaza]]></surname>
<given-names><![CDATA[Andrés]]></given-names>
</name>
<xref ref-type="aff" rid="A01"/>
</contrib>
<contrib contrib-type="author">
<name>
<surname><![CDATA[Otero]]></surname>
<given-names><![CDATA[Jesús]]></given-names>
</name>
<xref ref-type="aff" rid="A01"/>
</contrib>
</contrib-group>
<aff id="A01">
<institution><![CDATA[,Universidad del Rosario Faculty of Economics ]]></institution>
<addr-line><![CDATA[Bogotá ]]></addr-line>
<country>Colombia</country>
</aff>
<pub-date pub-type="pub">
<day>00</day>
<month>06</month>
<year>2010</year>
</pub-date>
<pub-date pub-type="epub">
<day>00</day>
<month>06</month>
<year>2010</year>
</pub-date>
<volume>28</volume>
<numero>62</numero>
<fpage>226</fpage>
<lpage>241</lpage>
<copyright-statement/>
<copyright-year/>
<self-uri xlink:href="http://www.scielo.org.co/scielo.php?script=sci_arttext&amp;pid=S0120-44832010000200007&amp;lng=en&amp;nrm=iso"></self-uri><self-uri xlink:href="http://www.scielo.org.co/scielo.php?script=sci_abstract&amp;pid=S0120-44832010000200007&amp;lng=en&amp;nrm=iso"></self-uri><self-uri xlink:href="http://www.scielo.org.co/scielo.php?script=sci_pdf&amp;pid=S0120-44832010000200007&amp;lng=en&amp;nrm=iso"></self-uri><abstract abstract-type="short" xml:lang="en"><p><![CDATA[This paper uses Colombian household survey data collected over the 1984-2005 period to estimate Gini coefficients and their corresponding standard errors. We find a statistically significant increase in wage income inequality following the adoption of the liberalization measures during the early 1990s, and mixed evidence from the recovery years that followed the economic recession during the late 1990s. We also find that in several cases the observed differences in the Gini coefficients across cities have not been statistically significant.]]></p></abstract>
<abstract abstract-type="short" xml:lang="es"><p><![CDATA[Este artículo usa información recolectada a través del Sistema de Encuestas de Hogares en Colombia para el periodo 1984-2005 con el fin de estimar coeficientes de Gini y sus errores estándar correspondientes. Encontramos un aumento estadísticamente significativo en la medida de desigualdad salarial, consecuencia de las medidas de liberalización económica adoptadas al comienzo de los años noventa, así como evidencia mixta durante los años de recuperación que siguieron a la recesión económica de finales de esta misma década. Además, encontramos que en muchos casos las variaciones observadas entre los coeficientes de Gini de las diferentes ciudades y a través del tiempo no son significativas en términos estadísticos.]]></p></abstract>
<abstract abstract-type="short" xml:lang="pt"><p><![CDATA[Este artigo estima coeficientes de Gini para a Colômbia, com seus correspondentes erros padrão, utilizando informação proveniente das Pesquisas de Opinião de Lares durante o período 1984-2005. Encontra-se um incremento estatísticamente significativo na desigualdade do salário por hora no período posterior à abertura econômica do começo da década dos noventa; para os anos posteriores à recessão de finais dos anos noventa, a evidência não é concluinte. Também se encontra que as diferenças observadas nos indicadores de desigualdade entre cidades não foram estatísticamente significativa em vários casos.]]></p></abstract>
<kwd-group>
<kwd lng="en"><![CDATA[inequality]]></kwd>
<kwd lng="en"><![CDATA[Gini coefficient]]></kwd>
<kwd lng="en"><![CDATA[bootstrap]]></kwd>
<kwd lng="en"><![CDATA[Colombia]]></kwd>
<kwd lng="es"><![CDATA[inequidad]]></kwd>
<kwd lng="es"><![CDATA[coeficiente de Gini]]></kwd>
<kwd lng="es"><![CDATA[bootstrap]]></kwd>
<kwd lng="es"><![CDATA[Colombia]]></kwd>
<kwd lng="pt"><![CDATA[Desigualdade]]></kwd>
<kwd lng="pt"><![CDATA[Coeficiente de Gini]]></kwd>
<kwd lng="pt"><![CDATA[bootstrap]]></kwd>
<kwd lng="pt"><![CDATA[Colômbia]]></kwd>
</kwd-group>
</article-meta>
</front><body><![CDATA[ <p align="center"><font size="4"><b> Statistical inference for testing   Gini Coefficients:   An application for Colombia</b></font></p>     <p>&nbsp;</p>     <p align="center"><font size="3"><b>Inferencia y pruebas estad&iacute;sticas   sobre los Coeficientes de Gini: Una aplicaci&oacute;n para Colombia</b></font></p>     <p>&nbsp;</p>     <p align="center"><font size="3"><b>Infer&ecirc;ncia e testes estat&iacute;sticos sobre   o Coeficiente de Gini:   Uma Aplica&ccedil;&atilde;o para a Col&ocirc;mbia</b></font></p>     <p>&nbsp;</p> <font face="Verdana" size="2">     <p><b> Luis Fernando Gamboa, Andr&eacute;s Garc&iacute;a-Suaza,    Jes&uacute;s Otero*</b></p>     <p>* Faculty of Economics,   Universidad del Rosario,   Bogot&aacute;, Colombia.   We would like to thank   Russell Davidson, Luis   Eduardo Fajardo, Ana   Mar&iacute;a Iregui (Editor),   Jeremy Smith and an   anonymous referee for   their useful comments and   suggestions. The usual   disclaimer applies.   E-mails: <a href="mailto:luis.gamboa@urosario.edu.co">luis.gamboa@urosario.edu.co</a>; <a href="mailto:andres.garcia66@urosario.edu.co">andres.garcia66@urosario.edu.co</a>; <a href="mailto:jesus.otero@urosario.edu.co">jesus.otero@urosario.edu.co</a> (corresponding   author)</p>     <p>Document received:   23 february 2010; final   version accepted: 18 may   2010.</p> <hr size="1">     <p>This paper uses Colombian household survey data   collected over the 1984-2005 period to estimate   Gini coefficients and their corresponding standard   errors. We find a statistically significant increase in   wage income inequality following the adoption of   the liberalization measures during the early 1990s,   and mixed evidence from the recovery years that   followed the economic recession during the late   1990s. We also find that in several cases the observed   differences in the Gini coefficients across   cities have not been statistically significant.</p>     ]]></body>
<body><![CDATA[<p><b> JEL classification: </b>C12; D31; I32</p> </font>     <p><font size="2" face="Verdana"><b> <font size="3">Keywords:</font></b> inequality, Gini coefficient, bootstrap,   Colombia.</font></p> <font face="Verdana" size="2"> <hr size="1">     <p>Este art&iacute;culo usa informaci&oacute;n recolectada a trav&eacute;s   del Sistema de Encuestas de Hogares en Colombia   para el periodo 1984-2005 con el fin de estimar coeficientes   de Gini y sus errores est&aacute;ndar correspondientes.   Encontramos un aumento estad&iacute;sticamente   significativo en la medida de desigualdad salarial,   consecuencia de las medidas de liberalizaci&oacute;n econ&oacute;mica   adoptadas al comienzo de los a&ntilde;os noventa,   as&iacute; como evidencia mixta durante los a&ntilde;os de recuperaci&oacute;n   que siguieron a la recesi&oacute;n econ&oacute;mica de   finales de esta misma d&eacute;cada. Adem&aacute;s, encontramos   que en muchos casos las variaciones observadas   entre los coeficientes de Gini de las diferentes   ciudades y a trav&eacute;s del tiempo no son significativas en t&eacute;rminos estad&iacute;sticos.</p>     <p><b>Clasificaci&oacute;n JEL:</b> C12; D31; I32.</p> </font>     <p><font size="2" face="Verdana"><b><font size="3">Palabras clave: </font></b>inequidad, coeficiente de Gini,   bootstrap, Colombia.</font></p> <font face="Verdana" size="2"> <hr size="1">     <p>Este artigo estima coeficientes de Gini para a Col&ocirc;mbia,   com seus correspondentes erros padr&atilde;o,   utilizando informa&ccedil;&atilde;o proveniente das Pesquisas   de Opini&atilde;o de Lares durante o per&iacute;odo 1984-2005.   Encontra-se um incremento estat&iacute;sticamente significativo   na desigualdade do sal&aacute;rio por hora no   per&iacute;odo posterior &agrave; abertura econ&ocirc;mica do come&ccedil;o   da d&eacute;cada dos noventa; para os anos posteriores &agrave;   recess&atilde;o de finais dos anos noventa, a evid&ecirc;ncia n&atilde;o   &eacute; concluinte. Tamb&eacute;m se encontra que as diferen&ccedil;as   observadas nos indicadores de desigualdade entre   cidades n&atilde;o foram estat&iacute;sticamente significativa em v&aacute;rios casos.</p>     <p><b>Classifica&ccedil;&atilde;o JEL:</b> C12; D31; I32.</p> </font>     <p><font size="2" face="Verdana"><b><font size="3">Palavras chave:</font></b> Desigualdade, Coeficiente de   Gini, bootstrap, Col&ocirc;mbia. </font></p> <font face="Verdana" size="2"> <hr size="1">   </font>     <p><font size="3"><b>I. INTRODUCTION</b></font></p> <font face="Verdana" size="2">       <p>Measuring the evolution of income distribution over time and/or across regions and     assessing the effect of policy measures on income concentration are topics of research     that have historically received a great deal of attention. To address these topics,     authors typically provide comparisons based on the ranking of estimated Gini     coefficients without acknowledging the fact that, being a sample statistic, these coefficients     have associated sampling distributions; see e.g., Baer and Maloney (1997),     Caselli and Battini (2000), and Ezcurra and Pascual (2009).</p>       ]]></body>
<body><![CDATA[<p>A number of authors have considered different methodologies to estimate the standard     error of the Gini coefficient: Zheng and Cushing (2001), Giles (2004 and 2006),     Ogwang (2000, 2004 and 2006), and Modarres and Gastwirth (2006). However, in a     recent paper Davidson (2009) points out that the estimators available in the literature     are either mathematically complex to calculate or quite unreliable. For example, Davidson     (2009) shows that the jackknife estimator of the variance is not a consistent     estimator of the asymptotic variance of the Gini coefficient, and therefore does not     give reliable inference. Davidson (2009) presents a procedure to compute an asymptotically     correct standard error for the Gini coefficient based on a relatively simple     expression. The work by Davidson has at least three main contributions. First, it     provides a bias-corrected estimator of the Gini coefficient. Second, it derives an     approximation for the standard error of the Gini coefficient that expresses it as a     sum of independent and identically distributed (iid) random variables. Third, it illustrates     how bootstrap methods can be used to yield reliable inference about the     Gini coefficient.</p>       <p>This paper uses Colombian household survey data collected over the 1984-2005     period to estimate the Gini coefficient for labor income in the urban labor market,     as well as for the labor markets in the main seven urban areas. Rankings of Gini     coefficients based on income distributions for Colombia have been undertaken by     Berry and Urrutia (1976) and Birchenall (2001, 2007), among others. In sharp contrast     to this literature, in this paper we estimate standard errors on Gini coefficients.     This enables us to test for statistical variation across urban areas and over time. The     chosen sample period is interesting because the Colombian government instituted     a series of major liberalizing reforms during the early 1990s, although this was followed     by the deepest recession experienced by the country in the last century and the   subsequent years of recovery.</p>       <p>The paper is organized as follows: Section II briefly describes the methodology used     for the estimation of the Gini coefficient and its corresponding standard error. Section     III describes the data set and summarizes the main results. Section IV concludes.</p> </font>     <p><font size="3"><b>    II METHODOLOGY</b></font></p> <font face="Verdana" size="2">       <p>The Gini coefficient, defined as twice the area between the equidistribution line     (i.e., the 45o line) and the Lorenz (1905) curve, is perhaps the most commonly used     measure of inequality. It ranges between zero (perfect equality) and one (perfect     inequality). Recently, Davidson (2009) expressed the Gini coefficient as:</p>         <p align="center">   <img src="img/revistas/espe/v28n62/v28n62a07ecu1.gif"/></p>       <p>where, <em>y<sub>(i)</sub>, i = 1</em>,2,.., <em>n</em>, is the series of order statistics of the income variable <em>y</em> (that is, the original series sorted in increasing order), and is the estimated     mean of <em>y</em>. Davidson (2009) finds an approximate expression for the bias of <em>G,</em> from which he derives the following bias-corrected estimator of the Gini coefficient,     denoted <em>G</em> which is given by:       <p align="center">   <img src="img/revistas/espe/v28n62/v28n62a07ecu2.gif"/></p>         <p>While the estimator (2) is still biased, its bias is of order smaller than <em>n<sup>-1</sup></em>  Equation (2) can be used to obtain an estimate of the standard error of <em>G</em> Using:</p>         <p align="center">   <img src="img/revistas/espe/v28n62/v28n62a07ecu3.gif"/></p>     where         <img src="img/revistas/espe/v28n62/v28n62a07for2.gif"/>. The standard error of the bias-corrected Gini coefficient is denoted as:       ]]></body>
<body><![CDATA[<p align="center">   <img src="img/revistas/espe/v28n62/v28n62a07ecu4.gif"/></p>       <p>Davidson (2009) shows, via simulation experiments, that the asymptotic distribution     of the Gini coefficient is reliable even for sample sizes of around 100 observations.     However, in case the underlying income distribution follows a lognormal distribution     with a large variance or when the distribution has heavy tails, reliable inference     can be obtained by applying the bootstrap method. In particular, Davidson (2009)   suggests implementing the bootstrap method as follows. First, let</p>       <p align="center">   <img src="img/revistas/espe/v28n62/v28n62a07ecu5.gif"/></p>       <p>be the test statistic required to test the null hypothesis that the bias-corrected Gini     coefficient is equal to G<sub>o</sub> Then, one generates b= 1,..., B bootstrap samples of     size n by resampling with replacement from the observed income data (which is     also of size <em> n</em> ). For bootstrap sample <em>b</em>, one computes a bootstrap statistic <em>T<sup>*</sup><sub>b</sub></em> as in     (5), but with G<sub>o</sub> replaced by <em>G</em>, that is the value of the statistic computed from the     observed sample. This is required so that the hypothesis tested should be true of the bootstrap      data-generating process. To calculate an interval at nominal confidence level (1 &minus; &alpha;) one estimates the &alpha;/2 and 1 &minus; &alpha;/2 quantiles of the empirical distribution     of the bootstrap statistics T<sup>*</sup><sub>b</sub>.</p> </font>     <p><font size="3"><b>III DATA AND MAIN RESULTS</b></font></p> <font face="Verdana" size="2">         <p>      We use data from the nationwide household surveys periodically undertaken by       the Departamento Administrativo Nacional de Estad&iacute;stica (DANE). Our period of analysis, i.e., 1984 to 2005, is characterized by the implementation of two different       surveys, namely the Encuesta Nacional de Hogares (ENH) and the Encuesta Continua       de Hogares (ECH). The former was applied quarterly from 1979 to 2000, and       up until 1983 it included the four main cities of Colombia: Bogot&aacute;, Medell&iacute;n, Cali,       and Barranquilla. In 1984 three more cities were added to the ENH: Bucaramanga,       Manizales, and Pasto. In 2001, the ENH was superseded by the ECH, which is a       monthly survey of thirteen cities: the original seven plus Ibagu&eacute;, Monter&iacute;a, Cartagena,       Pereira, Villavicencio, and C&uacute;cuta<sup><a href="#1" name="s1">1</a></sup>.</p>         <p>      The dataset used in the analysis consists of the hourly wage per worker (in constant       prices of 2005) during the 1984-2005 period, which is used as a proxy for labor income.       The choice of this variable has three important implications for the analysis.       First, hourly wage per worker exhibits less variation than personal income. Indeed,       over the period from 1984 to 2005 the coefficient of variation of the former       ranges from 1.1 to 2.4, while the corresponding coefficient of variation of the       latter ranges from 1.2 to 3.2. This implies that Gini coefficients based on hourly       wage per worker will be lower than those based on personal income. Second, calculations       not reported here suggest that problems of censored and truncated data are       more frequent when dealing with personal income than with our measure of hourly       wage per worker. For example, in 2001 and 2002 the percentage of individuals who       do not report income amounts to approximately 43% and 44%, respectively, while       the corresponding percentages for the individuals who do not report wage are 19% and       21%, respectively. Third, the use of hourly wage per worker offers the advantage that it       controls for the fact that an individual may earn several wages from different jobs.</p>         <p>      The unit of analysis is the employed individuals. This means that individuals who       report having worked during the previous week but do not report labor income are       excluded from the sample. One might be inclined to think that individuals in the       upper tail of the income distribution do not tend to report their income. However,       results not reported here indicate that there is no statistical difference between individuals       who report labor income and those who do not report it, once one controls       for human capital variables, such as education and experience. Furthermore, given       that in this paper we are interested in assessing changes in Gini coefficients over       time and across cities, it is likely that underreporting will be randomly distributed       within the sample.</p>         <p>The data for each year in the 1984-2005 period were obtained by aggregating the       surveys of every given year. We use the seven main cities that are available throughout       the sample period: Bogot&aacute;, Medell&iacute;n, Cali, Barranquilla, Bucaramanga, Manizales,       and Pasto. These account for more than seventy percent of the country&#39;s total     urban population.</p>         <p>      <a href="img/revistas/espe/v28n62/v28n62a07tab1.gif" target="_blank">Table 1</a> reports bias-corrected Gini coefficients for the main seven cities and for       the country<sup><a href="#2" name="s2">2</a></sup>.</p>         ]]></body>
<body><![CDATA[<p>      This table also contains the corresponding standard errors based on equation (4),       which can be used to construct confidence intervals using the quantiles of the standard       normal distribution. The standard errors that result from implementing the       bootstrap procedure outlined in the previous section (using 9.999 bootstrap replications)       are reported in the Appendix. At this point it is also worth mentioning that the       application of the jackknife method results is much larger estimates of the variance of       the bias-corrected Gini coefficients; indeed, when using the data for all seven cities the       estimated jackknife variance is almost 1.8 times the estimated asymptotic variance       derived by the formula given in Davidson (2009)<sup><a href="#3" name="s3">3</a></sup>.</p>         <p>      <a href="#(tab2)">Table 2</a> reports the number of times the bias-corrected Gini coefficients between       pairs of cities are statistically the same over the sample period under consideration,       1984-2005. For example, when looking at Bucaramanga and Barranquilla, in 11 out       of the 21 possible cases the coefficients between these two cities do not appear to be       statistically different. This table shows that there are only three pairs of cities, namely       Bogot&aacute;-Medell&iacute;n, Medell&iacute;n-Pasto and Bucaramanga-Pasto, for which the estimated       coefficients always appear to be statistically different throughout the sample period.</p>           <p align="center"><a name="(tab2)"><img src="img/revistas/espe/v28n62/v28n62a07tab2.gif"></a></p>         <p><a href="#(tab3)">Table 3</a> compares the evolution of the Gini coefficients for each city and for the       country, with respect to three different base years: 1984, 1990 and 1999. The first       base year is chosen simply because it is the beginning of our sample period. The second       base year allows us to compare with respect to the year when the government       introduced a series of structural policy measures aimed at liberalizing Colombian       trade and foreign exchange transactions, which were also accompanied by legislation       to free the labor market while granting greater protection to union rights (see     Urrutia (1994) for a review of these policy reforms). The third base year allows us to provide a comparison with respect to the lowest point of the most serious recession     recorded during the last century.</p>           <p align="center"><a name="(tab3)"><img src="img/revistas/espe/v28n62/v28n62a07tab3.gif"></a></p>         <p>      Let us consider first the results when using 1984 as base year. The cities of Barranquilla,       Medell&iacute;n and Manizales exhibit a downward trend in their Gini coefficients       during the 1980s and early 1990s, which is subsequently reversed starting in the mid-       1990s. In the case of Pasto, wage income distributions appear not to have changed       with respect to the level observed in 1984. In the cases of Bogota and the aggregate       of the seven cities, the corresponding Gini coefficients appear to have moved upwards.</p>         <p>Using 1990 as base year, we find that most of the Gini coefficients exhibit an increase.       This suggests that the liberalizing policy reforms of the early 1990s led to a worsening       distribution of income. Lastly, when looking at the period that followed the deepest       recession of the last century, evidence is somewhat mixed. The years of recovery       do not appear to have had an effect on wage income distribution in 21 out of the 48       comparisons provided, whereas in 18 cases there is a statistically significant fall in     the Gini coefficients.</p>         <p>Overall, when assessing variations in the distributions of wage income with respect to       1990 and 1999, the picture that emerges is not particularly optimistic in the sense that       most of the observed variations in the Gini coefficients are in the positive direction (reflecting       a worsening in inequality). It appears that the best-case scenario is that which     reflects no statistically significant variation at all.</p> </font>     <p><font size="3"><b>      IV. CONCLUDING REMARKS</b></font></p> <font face="Verdana" size="2">     <p>      This paper analyses the evolution of the Gini coefficient in Colombia across cities, as       measured by the hourly wage per worker, over a period of more than two decades. To       provide valid inference on the observed variations of the estimated Gini coefficients,       we implement the Davidson (2009) methodology to compute asymptotically correct       standard errors. The estimated standard errors were used to perform hypotheses       tests on wage income distribution equality across cities and over time. Focusing first       on the cross section dimension, we find several years during which the observed       differences in the Gini coefficients at the city level do not appear to be statistically       different from zero. This highlights the importance of taking into account the coefficient       estimated standard errors when performing comparisons. As to the time se ries dimension, we compare the corresponding Gini coefficients for each city with       the values observed in 1984, 1990 and 1999, and find that in most cases inequality       has worsened.</p> </font>     ]]></body>
<body><![CDATA[<p><font size="3"><b>COMMENTS</b></font></p> <font face="Verdana" size="2">         <p><sup><a href="#s1" name="1" id="#1">1</a></sup> The ECH also introduced changes in the phrasing of questions aimed at measuring       labor market indicators, such as the concept of unemployment, and unpaid workers, etc. These     methodological differences do not affect our measure of wage income.</p>         <p><sup><a href="#s2" name="2" id="#2">2</a></sup> All the calculations were performed in the econometrics software RATS 6.1 and Stata SE 9.2.</p>         <p>      <sup><a href="#s3" name="3" id="#3">3</a></sup> In the case of the city of Pasto, the estimated jackknife variance is almost 3 times the       estimated asymptotic variance. Jackknife estimates of the standard errors are not reported here for       brevity, but are available from the authors upon request.</p> </font>     <p><font size="3"><b>REFERENCES</b></font></p> <font face="Verdana" size="2">     <!-- ref --><p>      1. Baer, W.; Maloney, W. &quot;Neoliberalism and income       distribution in Latin America&quot;, World Development, vol. 25, no. 3, pp. 311-327, 1997.    &nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;[&#160;<a href="javascript:void(0);" onclick="javascript: window.open('/scielo.php?script=sci_nlinks&ref=000058&pid=S0120-4483201000020000700001&lng=','','width=640,height=500,resizable=yes,scrollbars=1,menubar=yes,');">Links</a>&#160;]<!-- end-ref --></p>     <!-- ref --><p>      2. Berry, A.; Urrutia, M. 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