Unsupervised Feature Selection via Adaptive Multimeasure Fusion

Volume: 30, Issue: 9, Pages: 2886 - 2892
Published: Sep 1, 2019
Abstract
Since multiple criteria can be adopted to estimate the similarity among the given data points, problem regarding diverse representations of pairwise relations is brought about. To address this issue, a novel self-adaptive multimeasure (SAMM) fusion problem is proposed, such that different measure functions can be adaptively merged into a unified similarity measure. Different from other approaches, we optimize similarity as a variable instead of...
Paper Details
Title
Unsupervised Feature Selection via Adaptive Multimeasure Fusion
Published Date
Sep 1, 2019
Volume
30
Issue
9
Pages
2886 - 2892
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