2020
DOI: 10.48550/arxiv.2005.09856
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A Novel Meta Learning Framework for Feature Selection using Data Synthesis and Fuzzy Similarity

Abstract: This paper presents a novel meta learning framework for feature selection (FS) based on fuzzy similarity. The proposed method aims to recommend the best FS method from four candidate FS methods for any given dataset. This is achieved by firstly constructing a large training data repository using data synthesis. Six meta features that represent the characteristics of the training dataset are then extracted. The best FS method for each of the training datasets is used as the meta label. Both the meta features an… Show more

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