DocumentCode
3609099
Title
Large-Scale Multi-Stream Quickest Change Detection via Shrinkage Post-Change Estimation
Author
Yuan Wang ; Yajun Mei
Author_Institution
H. Milton Stewart Sch. of Ind. & Syst. Eng., Georgia Inst. of Technol., Atlanta, GA, USA
Volume
61
Issue
12
fYear
2015
Firstpage
6926
Lastpage
6938
Abstract
The quickest change detection problem is considered in the context of monitoring large-scale independent normal distributed data streams with possible changes in some of the means. It is assumed that for each individual local data stream, either there are no local changes, or there is a big local change that is larger than a pre-specified lower bound. Two different types of scenarios are studied: one is the sparse post-change case when the unknown number of affected data streams is much smaller than the total number of data streams, and the other is when all local data streams are affected simultaneously although not necessarily identically. We propose a systematic approach to develop efficient global monitoring schemes for quickest change detection by combining hard thresholding with linear shrinkage estimators to estimating all post-change parameters simultaneously. Our theoretical analysis demonstrates that the shrinkage estimation can balance the tradeoff between the first-order and second-order terms of the asymptotic expression on the detection delays, and our numerical simulation studies illustrate the usefulness of shrinkage estimation and the challenge of Monte Carlo simulation of the average run length to false alarm in the context of online monitoring large-scale data streams.
Keywords
Monte Carlo methods; data handling; numerical analysis; Monte Carlo simulation; asymptotic expression; detection delays; global monitoring schemes; large-scale independent normal distributed data streams; large-scale multistream quickest change detection; local data stream; numerical simulation; post change parameters; shrinkage post-change estimation; sparse post change case; Context; Delays; Distributed databases; Maximum likelihood estimation; Method of moments; Monitoring; Asymptotic optimality; Shiryaev-Roberts; change-point; quickest detection; sequential detection; shrinkage estimation;
fLanguage
English
Journal_Title
Information Theory, IEEE Transactions on
Publisher
ieee
ISSN
0018-9448
Type
jour
DOI
10.1109/TIT.2015.2495361
Filename
7308036
Link To Document