MBNR: Case-Based Reasoning with Local Feature Weighting by Neural Network

作者:Jae Heon Park, Kwang Hyuk Im, Chung-Kwan Shin, Sang Chan Park

摘要

Our aim is to build an integrated learning framework of neural network and case-based reasoning. The main idea is that feature weights for case-based reasoning can be evaluated by neural networks. In this paper, we propose MBNR (Memory-Based Neural Reasoning), case-based reasoning with local feature weighting by neural network. In our method, the neural network guides the case-based reasoning by providing case-specific weights to the learning process. We developed a learning algorithm to train the neural network to learn the case-specific local weighting patterns for case-based reasoning. We showed the performance of our learning system using four datasets.

论文关键词:local feature weighting, case-based reasoning, neural network, hybrid system

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论文官网地址:https://doi.org/10.1023/B:APIN.0000043559.83167.3d