Publication | Closed Access
Generalized information potential criterion for adaptive system training
234
Citations
23
References
2002
Year
Artificial IntelligenceConvolution SmoothingEngineeringMachine LearningIntelligent SystemsAdaptive ComputingError EntropyAdaptive SystemsData SciencePattern RecognitionSystems EngineeringSupervised LearningComputational Learning TheoryComputer ScienceAdaptive AlgorithmStatistical Learning TheoryDeep LearningSignal ProcessingEntropyInformation Potential CriterionQuadratic RenyiAdaptive LearningKernel Method
We have previously proposed the quadratic Renyi's error entropy as an alternative cost function for supervised adaptive system training. An entropy criterion instructs the minimization of the average information content of the error signal rather than merely trying to minimize its energy. In this paper, we propose a generalization of the error entropy criterion that enables the use of any order of Renyi's entropy and any suitable kernel function in density estimation. It is shown that the proposed entropy estimator preserves the global minimum of actual entropy. The equivalence between global optimization by convolution smoothing and the convolution by the kernel in Parzen windowing is also discussed. Simulation results are presented for time-series prediction and classification where experimental demonstration of all the theoretical concepts is presented.
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