SCIS & ISIS
SCIS & ISIS 2006
セッションID: FR-H4-3
会議情報

FR-H4 Interaction and Intelligence
A Self-organized Incremental Network for Online Supervised Learning and Topology Learning
*Youki KamiyaShen FuraoToshiaki IshiiOsamu Hasegawa
著者情報
会議録・要旨集 フリー

詳細
抄録
A new self-organizing incremental network is designed for online supervised learning. During learning of the network, an adaptive similarity threshold is used to judge if new nodes are needed when online training data are introduced into the system. Nodes caused by noise are deleted to decrease the misclassification. The proposed network suits the following tasks: (1) online or even life-long supervised learning; (2) learning new information without destroying old learned information; (3) learning without any predefined optimal condition; (4) representing the topology structure of inputting online data; and (5) learning the number of nodes needed to represent every class. Experiments of artificial data and high-dimension real-world data show that the proposed method can achieve classification with a high recognition ratio, high speed, and low memory.
著者関連情報
© 2006 Japan Society for Fuzzy Theory and Intelligent Informatics
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