Title :
Dimension Reduction for Hypothesis Testing in Worst-Case Scenarios
Author :
Suleiman, Raja Fazliza Raja ; Mary, D. ; Ferrari, A.
Author_Institution :
Lab. J.-L. Lagrange, Univ. de Nice Sophia Antipolis, Nice, France
Abstract :
This paper considers a “one among many” detection problem, where one has to discriminate between pure noise and one among L alternatives that are known up to an amplitude factor. Two issues linked to high dimensionality arise in this framework. First, the computational complexity associated to the Generalized Likelihood Ratio (GLR) with the constraint of sparsity-one inflates linearly with L, which can be an obstacle when multiple data sets have to be tested. Second, standard procedures based on dictionary learning aimed at reducing the dimensionality may suffer from severe power losses for some alternatives, thus suggesting a worst-case scenario strategy. In the case where the learned dictionary has K=1 column, we show that the exact solution of the resulting detection problem, which can be formulated as a minimax problem, can be obtained by Quadratic Programming. Because it allows a better sampling of the diversity of the alternatives, the case K > 1 is expected to improve the detection performances over the case K=1. The worst-case analysis of this case, which is more involved, leads us to propose two “minimax learning algorithms”. Numerical results show that these algorithms indeed allow to increase performances over the K=1 case and are in fact comparable to the GLR using the full set of alternatives, while being computationally simpler.
Keywords :
computational complexity; learning (artificial intelligence); minimax techniques; numerical analysis; quadratic programming; signal detection; signal sampling; GLR; amplitude factor; computational complexity; dictionary learning; generalized likelihood ratio; hypothesis testing; minimax learning algorithm; multiple data set; noise; one among many detection problem; quadratic programming; signal sampling; sparsity-one constraint; worst-case scenario strategy; Computational modeling; Dictionaries; Libraries; Numerical models; Object detection; Signal processing algorithms; Testing; Classification; detection; dictionary learning; minimax; sparsity;
Journal_Title :
Signal Processing, IEEE Transactions on
DOI :
10.1109/TSP.2014.2359641