0000000000988177

AUTHOR

Emilio Ruiz-moreno

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Tracking of Quantized Signals Based on Online Kernel Regression

2021

Kernel-based approaches have achieved noticeable success as non-parametric regression methods under the framework of stochastic optimization. However, most of the kernel-based methods in the literature are not suitable to track sequentially streamed quantized data samples from dynamic environments. This shortcoming occurs mainly for two reasons: first, their poor versatility in tracking variables that may change unpredictably over time, primarily because of their lack of flexibility when choosing a functional cost that best suits the associated regression problem; second, their indifference to the smoothness of the underlying physical signal generating those samples. This work introduces a …

Flexibility (engineering)SmoothnessComputer scienceSignal reconstructionKernel (statistics)Kernel regressionRegretStochastic optimizationAlgorithmRegression2021 IEEE 31st International Workshop on Machine Learning for Signal Processing (MLSP)
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