BELIEF: A distance-based redundancy-proof feature selection method for Big Data

Information Sciences(2021)

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摘要
With the advent of Big Data era, data reduction methods are in highly demand given their ability to simplify huge data, and ease complex learning processes. Concretely, algorithms able to select relevant dimensions from a set of millions are of huge importance. Although effective, these techniques also suffer from the “scalability” curse when they are brought into tackle large-scale problems.
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关键词
Apache spark,Big Data,Feature selection (FS),Redundancy elimination,High-dimensional
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