Optimized Quantization in Distributed Graph Signal Processing
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2013
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Distributed graph signal processing algorithms require the network nodes to communicate by exchanging messages in order to achieve a common objective. These messages have a finite precision in realistic networks, which may necessitate to implement message ...
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IEEE2015
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IEEE2016
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