Robust Factorization of a Data Matrix

نویسندگان

  • Christophe Croux
  • Peter Filzmoser
چکیده

In this note we show how the entries of a data matrix can be approximated by a sum of row effects, column effects and interaction terms in a robust way using a weighted L1 estimator. We discuss an algorithm to compute this fit, and show by a simulation experiment and an example that the proposed method can be a useful tool in exploring data matrices. Moreover, a robust biplot is produced as a byproduct.

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تاریخ انتشار 1998