Pearson product-moment correlation coefficient represents a fundamental measure of similarity between two data vectors. In various applications, it is meaningful to consider its weighted version known as the weighted Pearson correlation coefficient. Its properties are studied in this theoretical paper; these include the robustness to rounding, as it is an important issue in approximate neurocomputing, or specific robustness properties for the context of template matching in image analysis. For a highly robust correlation coefficient inspired by the least weighted estimator, properties are derived and novel hypothesis tests are proposed. This robust measure is recommendable particularly for data contaminated by outliers (not only) in the context of image analysis.
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Univ Calif Los Angeles, Anderson Sch Management, Los Angeles, CA 90095 USAUniv Calif Los Angeles, Anderson Sch Management, Los Angeles, CA 90095 USA
Fattahi, Ali
Dasu, Sriram
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Univ Southern Calif, Marshall Sch Business, Los Angeles, CA 90089 USAUniv Calif Los Angeles, Anderson Sch Management, Los Angeles, CA 90095 USA
Dasu, Sriram
Ahmadi, Reza
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Univ Calif Los Angeles, Anderson Sch Management, Los Angeles, CA 90095 USAUniv Calif Los Angeles, Anderson Sch Management, Los Angeles, CA 90095 USA