3 research outputs found

    A Distributed Computationally Aware Quantizer Design via Hyper Binning

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    We design a distributed function aware quantization scheme for distributed functional compression. We consider 22 correlated sources X1X_1 and X2X_2 and a destination that seeks the outcome of a continuous function f(X1, X2)f(X_1,\,X_2). We develop a compression scheme called hyper binning in order to quantize ff via minimizing entropy of joint source partitioning. Hyper binning is a natural generalization of Cover's random code construction for the asymptotically optimal Slepian-Wolf encoding scheme that makes use of orthogonal binning. The key idea behind this approach is to use linear discriminant analysis in order to characterize different source feature combinations. This scheme captures the correlation between the sources and function's structure as a means of dimensionality reduction. We investigate the performance of hyper binning for different source distributions, and identify which classes of sources entail more partitioning to achieve better function approximation. Our approach brings an information theory perspective to the traditional vector quantization technique from signal processing
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