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Optimizing quantization for Lasso recovery

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arxiv 1606.03055 v1 pith:G4G2HXHJ submitted 2016-06-09 cs.IT math.IT

Optimizing quantization for Lasso recovery

classification cs.IT math.IT
keywords quantizationsignalfunctionlassoraterecoveryactualanalysis
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This letter is focused on quantized Compressed Sensing, assuming that Lasso is used for signal estimation. Leveraging recent work, we provide a framework to optimize the quantization function and show that the recovered signal converges to the actual signal at a quadratic rate as a function of the quantization level. We show that when the number of observations is high, this method of quantization gives a significantly better recovery rate than standard Lloyd-Max quantization. We support our theoretical analysis with numerical simulations.

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