Quantization effects in digitally behaving circuit implementationsof Kohonen networks |
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Authors: | Thiran P. Peiris V. Heim P. Hochet B. |
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Affiliation: | Dept. of Electr. Eng., Swiss Federal Inst. of Technol., Lausanne. |
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Abstract: | Implementing a neural network on a digital or mixed analog and digital chip yields the quantization of the synaptic weights dynamics. This paper addresses this topic in the case of Kohonen's self-organizing maps. We first study qualitatively how the quantization affects the convergence and the properties, and deduce from this analysis the way to choose the parameters of the network (adaptation gain and neighborhood). We show that a spatially decreasing neighborhood function is far more preferable than the usually rectangular neighborhood function, because of the weight quantization. Based on these results, an analog nonlinear network, integrated in a standard CMOS technology, and implementing this spatially decreasing neighborhood function is then presented. It can be used in a mixed analog and digital circuit implementation. |
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