Supervised VQ learning based on temporal inhibition

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Abstract

In the context of supervised vectorial quantization (VQ) learning algorithms, we present an algorithm (SLTI) tlmt exploits the self-organizing properties arising from a particular process of temporal inhibition of the winning units in competitive learning. This exploitation consists of establishing independence capabilities in the initialization of the prototypes (weight vectors), together with generalization capabilities, which to a certain extent solve some of the critical problems involved in the use of conventional algorithmss such as LVQs and DSM. Another original aspect of this paper is the inclusion in SLT1 of a simple rule for prototype adaptation, which incorporates certain useful features that make possible to plan the configuration of the SLTl parameters with specific goals in order to approach classification tasks of varied complexity and natures (versatility). This versatility is experimentally demonstrated with synthetic data comprising non linearly-separable classes, overlapping classes and interlaced classes with a certain degree of overlap.

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Martín-Smith, P., Pelayo, F. J., Ros, E., & Prieto, A. (1999). Supervised VQ learning based on temporal inhibition. In Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics) (Vol. 1606, pp. 611–620). Springer Verlag. https://doi.org/10.1007/BFb0098219

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