4.7 Article Proceedings Paper

Data smoothing regularization, multi-sets-learning, and problem solving strategies

Journal

NEURAL NETWORKS
Volume 16, Issue 5-6, Pages 817-825

Publisher

PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/S0893-6080(03)00119-9

Keywords

data smoothing; Tikhonov regularization; Gaussian mixture; multiple objects; problem solving

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First, we briefly introduce the basic idea of data smoothing regularization, which was firstly proposed by Xu [Brain-like computing and intelligent information systems (1997) 241] for parameter learning in a way similar to Tikhonov regularization but with an easy solution to the difficulty of determining an appropriate hyper-parameter. Also, the roles of this regularization are demonstrated on Gaussian-mixture via smoothed versions of the EM algorithm, the BYY model selection criterion, adaptive harmony algorithm as well as its related Rival penalized competitive learning. Second, these studies arc extended to a mixture of reconstruction errors of Gaussian types, which provides a new probabilistic formulation for the multi-sets learning approach [Proc. IEEE ICNN94 1 (1994) 315] that learns multiple objects in typical geometrical structures such as points, lines, hyperplanes, circles, ellipses, and templates of given shapes. Finally, insights are provided on three problem solving strategies, namely the competition-penalty adaptation based learning, the global evidence accumulation based selection, and the guess-test based decision, with a general problem solving paradigm suggested. (C) 2003 Elsevier Science Ltd. All fights reserved.

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