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A method of BP network learning by expanding the distribution of category

✍ Scribed by Naoki Tanaka; Toshiaki Koreyeda; Takeshi Inoue; Koji Kajitani


Publisher
John Wiley and Sons
Year
1999
Tongue
English
Weight
300 KB
Volume
30
Category
Article
ISSN
0882-1666

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✦ Synopsis


In backpropagation networks, unlearned regions are left between categories if the learning samples are comparatively small. Such unlearned regions are one of the reasons for the degradation of network generalization ability. To improve the generalization ability, it is preferable that the boundaries of the categories are more accurately reflected by the pattern distribution. This article presents the method of expansion of the category distribution by adding displacements proportional to the distance from the center of gravity of the category to learning samples, and a backpropagation (BP) learning method using given learning samples and those displaced samples. The method is applied to the recognition of handwritten Kanji characters. We confirm increased generalization abilities as a result of increased recognition performance of unlearned samples in comparison to the normal learning method.


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