Sequential approaches for learning datum-wise sparse representations

作者:Gabriel Dulac-Arnold, Ludovic Denoyer, Philippe Preux, Patrick Gallinari

摘要

In supervised classification, data representation is usually considered at the dataset level: one looks for the “best” representation of data assuming it to be the same for all the data in the data space. We propose a different approach where the representations used for classification are tailored to each datum in the data space. One immediate goal is to obtain sparse datum-wise representations: our approach learns to build a representation specific to each datum that contains only a small subset of the features, thus allowing classification to be fast and efficient. This representation is obtained by way of a sequential decision process that sequentially chooses which features to acquire before classifying a particular point; this process is learned through algorithms based on Reinforcement Learning.

论文关键词:Classification, Features selection, Sparsity, Sequential models, Reinforcement learning

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论文官网地址:https://doi.org/10.1007/s10994-012-5306-7