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arxiv: 1706.02289 · v4 · pith:HY5QW4F7new · submitted 2017-06-06 · 💻 cs.LG · stat.AP· stat.CO· stat.ME

Meta-Learning for Resampling Recommendation Systems

classification 💻 cs.LG stat.APstat.COstat.ME
keywords resamplingapproachclassificationmeta-learningrecommendationselectionsystemsaffects
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One possible approach to tackle the class imbalance in classification tasks is to resample a training dataset, i.e., to drop some of its elements or to synthesize new ones. There exist several widely-used resampling methods. Recent research showed that the choice of resampling method significantly affects the quality of classification, which raises resampling selection problem. Exhaustive search for optimal resampling is time-consuming and hence it is of limited use. In this paper, we describe an alternative approach to the resampling selection. We follow the meta-learning concept to build resampling recommendation systems, i.e., algorithms recommending resampling for datasets on the basis of their properties.

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