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arxiv: 1603.01399 · v2 · pith:DGTI2YUOnew · submitted 2016-03-04 · 💻 cs.IT · cond-mat.dis-nn· cond-mat.stat-mech· math.IT· stat.ME

Sampling approach to sparse approximation problem: determining degrees of freedom by simulated annealing

classification 💻 cs.IT cond-mat.dis-nncond-mat.stat-mechmath.ITstat.ME
keywords approachapproximationannealingdegreesdeterminingfreedomproblemsampling
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The approximation of a high-dimensional vector by a small combination of column vectors selected from a fixed matrix has been actively debated in several different disciplines. In this paper, a sampling approach based on the Monte Carlo method is presented as an efficient solver for such problems. Especially, the use of simulated annealing (SA), a metaheuristic optimization algorithm, for determining degrees of freedom (the number of used columns) by cross validation is focused on and tested. Test on a synthetic model indicates that our SA-based approach can find a nearly optimal solution for the approximation problem and, when combined with the CV framework, it can optimize the generalization ability. Its utility is also confirmed by application to a real-world supernova data set.

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