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Jensen-Shannon 발산×Hellinger 거리×쿨백-라이블러 발산×
분야의사결정의사결정의사결정
계열MCDMMCDMMCDM
기원 연도199119091951
창시자J. LinErnst HellingerSolomon Kullback and Richard Leibler
유형Symmetric probability distribution dissimilaritySymmetric metric for probability distributionsAsymmetric probability distribution dissimilarity
원전Lin, J. (1991). Divergence measures based on the Shannon entropy. IEEE Transactions on Information Theory, 37(1), 145-151. DOI ↗Hellinger, E. (1909). Neue Begründung der Theorie quadratischer Formen von unendlichvielen Veränderlichen. Journal für die Reine und Angewandte Mathematik, 136, 210-271. DOI ↗Kullback, S., & Leibler, R. A. (1951). On information and sufficiency. Annals of Mathematical Statistics, 22(1), 79-86. DOI ↗
별칭JS divergence, symmetric KL divergence, JS distanceBhattacharyya distance, Hellinger metricKL divergence, relative entropy, information divergence
관련222
요약Jensen-Shannon divergence is a symmetric information-theoretic measure of the difference between two probability distributions. Developed by Jian Lin in 1991 as a refinement to the asymmetric Kullback-Leibler divergence, it overcomes KL's directional limitation by averaging the divergences in both directions. The result is a true metric (satisfying triangle inequality) that ranges from 0 (identical distributions) to 1, making it suitable for symmetric comparison tasks.Hellinger distance is a symmetric, bounded metric that measures the difference between two probability distributions. Rooted in the work of Ernst Hellinger (1909) and later formalized in statistical divergence by Anil Bhattacharyya (1946), this distance ranges from 0 (identical distributions) to 1. It is a true metric satisfying all mathematical distance properties and is particularly well-suited for comparing probability distributions in a symmetric, numerically stable manner.Kullback-Leibler divergence, also called relative entropy or information divergence, measures the asymmetric difference between two probability distributions. Introduced by Solomon Kullback and Richard Leibler in 1951, this information-theoretic measure quantifies how one probability distribution diverges from a reference distribution, ranging from 0 (identical distributions) to infinity. It is foundational in information theory, machine learning, and decision-making with probabilistic frameworks.
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ScholarGate방법 비교: Jensen-Shannon Divergence · Hellinger Distance · Kullback-Leibler Divergence. 2026-06-19에 다음에서 검색함: https://scholargate.app/ko/compare