Direct Density Ratio Estimation for Large-scale Covariate Shift Adaptation
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概要
- 論文の詳細を見る
<i>Covariate shift</i> is a situation in supervised learning where training and test <i>inputs</i> follow different distributions even though the functional relation remains unchanged. A common approach to compensating for the bias caused by covariate shift is to reweight the loss function according to the <i>importance</i>, which is the ratio of test and training densities. We propose a novel method that allows us to directly estimate the importance from samples without going through the hard task of density estimation. An advantage of the proposed method is that the computation time is nearly independent of the number of test input samples, which is highly beneficial in recent applications with large numbers of unlabeled samples. We demonstrate through experiments that the proposed method is computationally more efficient than existing approaches with comparable accuracy. We also describe a promising result for large-scale covariate shift adaptation in a natural language processing task.
- 一般社団法人情報処理学会の論文
- 2009-04-15
著者
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Hisashi Kashima
Tokyo Research Laboratory Ibm Research
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Yuta Tsuboi
Tokyo Research Laboratory, IBM Research
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Shohei Hido
Tokyo Research Laboratory, IBM Research
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Steffen Bickel
Department of Computer Science, University of Potsdam, Germany
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Masashi Sugiyama
Department of Computer Science, Tokyo Institute of Technology
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Yuta Tsuboi
Tokyo Research Laboratory Ibm Research
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Shohei Hido
Tokyo Research Laboratory Ibm Research
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Steffen Bickel
Department Of Computer Science University Of Potsdam Germany
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Masashi Sugiyama
Department Of Computer Science Tokyo Institute Of Technology
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