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G-KMM: A Flexible Kernel Mean Matching Optimization Method for Density Ratio Estimation Involving Multiple Train & Test Datasets

Authors

Cristian Daniel Alecsa, Technical University of Cluj-Napoca, Romania

Abstract

In the present paper we introduce new optimization algorithms for the task of density ratio estimation. More precisely, we consider extending the well-known KMM (kernel mean matching) method using the construction of a suitable loss function, in order to encompass more general situations involving the estimation of density ratio with respect to subsets of the training data and test data, respectively. The codes associated to our Python implementation can be found at https://github.com/CDAlecsa/ Generalized-KMM.

Keywords

Kernel mean matching, quadratic optimization, density ratio estimation, loss function.

Full Text  Volume 13, Number 24