Comparing Double Minimization and Zigzag Algorithms in Joint Regression Analysis: the Complete Case

dc.contributor.authorPereira, Dulce
dc.date.accessioned2008-06-03T12:00:19Z
dc.date.available2008-06-03T12:00:19Z
dc.date.issued2007-08
dc.description.abstractJoint Regression Analysis is a widely used technique for cultivar comparison. For each cultivar a linear regression is adjusted on a non observable regressor: the environmental index. This index measures, for each block, the corresponding productivity. When all cultivars are present in all the blocks in the field trials the series of experiments is complete. To carry out the minimization of the sum of sums of squares of residuals in order to estimate the coefficients of the regressions and the environmental indexes an iterative algorithm, the zigzag algorithm, see Mexia et al. (1999), was introduced. This algorithm performs well, see, e.g., Mexia et al. (2001) and Mexia & Pereira (2001), but it has not been shown that it converges to the absolute minimum of the goal function. We presented, see Pereira & Mexia (2007) an alternative algorithm and showed that, in the complete case, it converges to the absolute minimum. Through an example it was shown that the results obtained using both algorithms agreed. We now analyse the reason behind the agreement between both algorithms.en
dc.format.extent34117 bytes
dc.format.mimetypeapplication/pdf
dc.identifier.accesstyperestrito_ueen
dc.identifier.authoremaildgsp@uevora.pt
dc.identifier.comunicacaoComparing Double Minimization and Zigzag Algorithms in Joint Regression Analysis: the Complete Caseen
dc.identifier.local56th Session of the International Statistical Institute (ISI 2007), Lisboaen
dc.identifier.paginapag 4en
dc.identifier.sharewithEste registo é para ser partilhado na comunidade CIMA-UE.en
dc.identifier.urihttp://hdl.handle.net/10174/1212
dc.identifier.withinvitedoralpresentationnaoen
dc.identifier.withoralpresentationsimen
dc.identifier.withposternaoen
dc.language.isoeng
dc.rightsrestrictedAccessen
dc.subjectJoint Regression Analysisen
dc.subjectLinear regressionsen
dc.subjectL2 environmental indexesen
dc.subjectDouble minimizationen
dc.subjectZigzag algorithmen
dc.titleComparing Double Minimization and Zigzag Algorithms in Joint Regression Analysis: the Complete Caseen
dc.typelectureen

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