首页> 外文会议>Fuzzy Systems, 1994. IEEE World Congress on Computational Intelligence., Proceedings of the Third IEEE Conference on >Fuzzy LAPART supervised learning through inferencing for stable category recognition
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Fuzzy LAPART supervised learning through inferencing for stable category recognition

机译:模糊LAPART通过推理监督学习以实现稳定的类别识别

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Fuzzy LAPART (laterally primed adaptive resonance theory), a neural network architecture for supervised learning through logical inferencing, is introduced with fast and slow learning algorithms and match tracking capability. Based on the original architecture developed by Healy, et al., the enhanced architecture consists of interconnected fuzzy adaptive resonance theory (fuzzy ART) modules originated by Carpenter, et al. The interconnections enable fuzzy LAPART to infer one pattern class from another to form a predictive pattern class. Slow learning capability has been incorporated into the neural network with fast commit and slow recode options. The problem of separation of spirals is used to perform benchmark tests for fuzzy LAPART. Also, based on fuzzy set theory, geometric interpretations are presented in 2 and 3 dimensional spaces using fuzzy LAPART. Performance results for both test cases are compared to results obtained from a counterpropagation clustering network.
机译:引入了模糊LAPART(横向启动自适应共振理论),它是一种通过逻辑推理进行监督学习的神经网络体系结构,具有快速学习算法和慢速学习算法以及匹配跟踪功能。基于Healy等人开发的原始体系结构,增强的体系结构由Carpenter等人提出的互连的模糊自适应共振理论(模糊ART)模块组成。互连使模糊LAPART可以从另一个推断出一个模式类别,以形成一个预测模式类别。慢学习功能已被纳入具有快速提交和慢速重新编码选项的神经网络中。螺旋分离的问题用于执行模糊LAPART的基准测试。同样,基于模糊集理论,使用模糊LAPART在2维和3维空间中显示了几何解释。将两个测试用例的性能结果与从反向传播聚类网络获得的结果进行比较。

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