A Multiple Hypothesis Testing Approach to Detection Changes in Distribution
- Authors: Golubev G.1, Safarian M.2
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Affiliations:
- Inst. for Information Transmission Probl.
- Dept. of Economics
- Issue: Vol 28, No 2 (2019)
- Pages: 155-167
- Section: Article
- URL: https://journal-vniispk.ru/1066-5307/article/view/225914
- DOI: https://doi.org/10.3103/S1066530719020054
- ID: 225914
Cite item
Abstract
Let X1, X2,... be independent random variables observed sequentially and such that X1,..., Xθ−1 have a common probability density p0, while Xθ, Xθ+1,... are all distributed according to p1 ≠ p0. It is assumed that p0 and p1 are known, but the time change θ ∈ ℤ+ is unknown and the goal is to construct a stopping time τ that detects the change-point θ as soon as possible. The standard approaches to this problem rely essentially on some prior information about θ. For instance, in the Bayes approach, it is assumed that θ is a random variable with a known probability distribution. In the methods related to hypothesis testing, this a priori information is hidden in the so-called average run length. The main goal in this paper is to construct stopping times that are free from a priori information about θ. More formally, we propose an approach to solving approximately the following minimization problem:
where α(θ; τ) = Pθ{τ < θ} is the false alarm probability and Δ(θ; τ) = Eθ(τ − θ)+ is the average detection delay computed for a given stopping time τ. In contrast to the standard CUSUM algorithm based on the sequential maximum likelihood test, our approach is related to a multiple hypothesis testing methods and permits, in particular, to construct universal stopping times with nearly Bayes detection delays.
About the authors
G. Golubev
Inst. for Information Transmission Probl.
Author for correspondence.
Email: golubev.yuri@gmail.com
Russian Federation, Moscow
M. Safarian
Dept. of Economics
Author for correspondence.
Email: mher.safarian@kit.edu
Germany, Karlsruhe
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