Bhattacharya coefficient
Editor-In-Chief: C. Michael Gibson, M.S., M.D. [1]
Overview
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The Bhattacharya coefficient is an approximate measurement of the amount of overlap between two statistical samples. The coefficient can be used to determine the relative closeness of the two samples being considered.
Calculating the Bhattacharya coefficient involves a rudimentary form of integration of the overlap of the two samples. The interval of the values of the two samples is split into a chosen number of partitions, and the number of members of each sample in each partition is used in the following formula,
- <math>Bhattacharya = \sqrt{\sum_{i=1}^{n}(\mathbf{\Sigma a}_i\cdot\mathbf{\Sigma b}_i)^2}</math>
where considering the samples a and b, n is the number of partitions, and ai, bi are the number of members of samples a and b in the i'th partition.
This formula hence is larger with each partition that has members from both sample, and larger with each partition that has a large overlap of the two sample's members within it. The choice of number of partitions depends on the number of members in each sample; too few partitions will lose accuracy by over-estimating the overlap region, and too many partitions will lose accuracy by creating individual partitions with no members despite being in a surroundingly populated sample space.
The Bhattacharya coefficient will be 0 if there is no overlap at all due to the multiplication by zero in every partition. This means the distance between fully separated samples will not be exposed by this coefficient alone.