Litcius/Paper detail

On Approximating Total Variation Distance

Arnab Bhattacharyya, Sutanu Gayen, Kuldeep S. Meel, Dimitrios Myrisiotis, A. Pavan, N. V. Vinodchandran

202314 citationsDOIOpen Access PDF

Abstract

Total variation distance (TV distance) is a fundamental notion of distance between probability distributions. In this work, we introduce and study the problem of computing the TV distance of two product distributions over the domain {0,1}^n. In particular, we establish the following results. 1. The problem of exactly computing the TV distance of two product distributions is #P-complete. This is in stark contrast with other distance measures such as KL, Chi-square, and Hellinger which tensorize over the marginals leading to efficient algorithms. 2. There is a fully polynomial-time deterministic approximation scheme (FPTAS) for computing the TV distance of two product distributions P and Q where Q is the uniform distribution. This result is extended to the case where Q has a constant number of distinct marginals. In contrast, we show that when P and Q are Bayes net distributions the relative approximation of their TV distance is NP-hard.

Topics & Concepts

Hellinger distanceMathematicsStatistical distanceTotal variationProduct (mathematics)Contrast (vision)Probability distributionCombinatoricsDomain (mathematical analysis)Discrete mathematicsApplied mathematicsComputer scienceMathematical analysisStatisticsGeometryArtificial intelligenceBayesian Modeling and Causal InferenceMachine Learning and AlgorithmsBayesian Methods and Mixture Models