López-Rubio E. Robust location and spread measures for nonparametric probability density function estimation.
Int J Neural Syst 2010;
19:345-57. [PMID:
19885963 DOI:
10.1142/s0129065709002075]
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Abstract
Robustness against outliers is a desirable property of any unsupervised learning scheme. In particular, probability density estimators benefit from incorporating this feature. A possible strategy to achieve this goal is to substitute the sample mean and the sample covariance matrix by more robust location and spread estimators. Here we use the L1-median to develop a nonparametric probability density function (PDF) estimator. We prove its most relevant properties, and we show its performance in density estimation and classification applications.
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