Title
Hypothesis Testing with Dependent Observations
Document Type
Article
Publication Date
3-1-2017
Abstract
This paper considers the problem of detection in a network consisting of heterogeneous sensors collecting measurements which are dependent both among the samples collected by each sensor and among the data collected by different sensors. The dependence in the data is modeled by using copula theory. It is assumed that the statistics of the sensors' data is not completely known and that, in particular, the probability distribution of the sensors' data involves unknown parameters. Our goal is to estimate these parameters and to detect the state of nature. The expectation maximization algorithm is developed and solved for this problem. Then, a case study including the Gaussian and Student's t copulas is investigated. The proposed method is compared with similar methods which ignore the dependence among the data. Numerical results are presented from simulations showing the efficacy of the proposed method for both parameter estimation and hypothesis testing.
Publication Source (Journal or Book title)
IEEE Transactions on Signal Processing
First Page
1183
Last Page
1195
Recommended Citation
Sobhiyeh, S., & Naraghi-Pour, M. (2017). Hypothesis Testing with Dependent Observations. IEEE Transactions on Signal Processing, 65 (5), 1183-1195. https://doi.org/10.1109/TSP.2016.2633243