Relief-Based Feature Selection: Introduction and Review
Ryan J. Urbanowicz, Melissa Meeker, William LaCava, Randal S. Olson,, Jason H. Moore

TL;DR
This paper reviews Relief-based feature selection algorithms, highlighting their ability to efficiently identify complex feature interactions in biomedical data without exhaustive computation.
Contribution
It introduces the Relief algorithm, explains its intuition, and provides a comprehensive review and comparison of various Relief-based methods and their characteristics.
Findings
Relief algorithms effectively detect feature interactions.
ReliefF is a popular descendant with broad applicability.
Relief methods balance computational efficiency and interaction sensitivity.
Abstract
Feature selection plays a critical role in biomedical data mining, driven by increasing feature dimensionality in target problems and growing interest in advanced but computationally expensive methodologies able to model complex associations. Specifically, there is a need for feature selection methods that are computationally efficient, yet sensitive to complex patterns of association, e.g. interactions, so that informative features are not mistakenly eliminated prior to downstream modeling. This paper focuses on Relief-based algorithms (RBAs), a unique family of filter-style feature selection algorithms that have gained appeal by striking an effective balance between these objectives while flexibly adapting to various data characteristics, e.g. classification vs. regression. First, this work broadly examines types of feature selection and defines RBAs within that context. Next, we…
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