A measure of association between vectors based on "similarity covariance"
Roberto D. Pascual-Marqui, Dietrich Lehmann, Kieko Kochi, Toshihiko, Kinoshita, Naoto Yamada

TL;DR
This paper introduces a similarity-based measure of association between vectors, called similarity correlation, which emphasizes local relationships and extends the concept to complex vectors, showing advantages over traditional distance correlation.
Contribution
It proposes a novel similarity correlation measure inspired by spectral clustering, extending distance correlation, and demonstrates its practical benefits through examples and asymptotic equivalence results.
Findings
Similarity correlation emphasizes local relationships.
Similarity correlation differs from distance correlation on circular data.
Software implementation and test data are publicly available.
Abstract
The "maximum similarity correlation" definition introduced in this study is motivated by the seminal work of Szekely et al on "distance covariance" (Ann. Statist. 2007, 35: 2769-2794; Ann. Appl. Stat. 2009, 3: 1236-1265). Instead of using Euclidean distances "d" as in Szekely et al, we use "similarity", which can be defined as "exp(-d/s)", where the scaling parameter s>0 controls how rapidly the similarity falls off with distance. Scale parameters are chosen by maximizing the similarity correlation. The motivation for using "similarity" originates in spectral clustering theory (see e.g. Ng et al 2001, Advances in Neural Information Processing Systems 14: 849-856). We show that a particular form of similarity correlation is asymptotically equivalent to distance correlation for large values of the scale parameter. Furthermore, we extend similarity correlation to coherence between complex…
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Taxonomy
TopicsMorphological variations and asymmetry · Advanced Statistical Methods and Models · Sensory Analysis and Statistical Methods
