2007
DOI: 10.2139/ssrn.1004460
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Stock Picking via Nonsymmetrically Pruned Binary Decision Trees

Abstract: Stock picking is the field of financial analysis that is of particular interest for many professional investors and researchers. In this study stock picking is implemented via binary classification trees. Optimal tree size is believed to be the crucial factor in forecasting performance of the trees. While there exists a standard method of tree pruning, which is based on the cost-complexity tradeoff and used in the majority of studies employing binary decision trees, this paper introduces a novel methodology of… Show more

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