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Machine Learning: Automated Knowledge acquisition based on Unsupervised Neural Network and Expert System Paradigms

机译:机器学习:基于无监督神经网络和专家系统范例的自动化知识获取

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Self-organizing maps are unsupervised neural network models that lend themselves to the cluster analysis of high-dimensional input data. Interpreting a trained map is difficult because features responsible for specific cluster assignment are not evident from resulting map representation. This paper presents an approach to automated knowledge acquisition using Kohonen's self-organizing maps and k-means clustering. To demonstrate the architecture and validation, a data set representing animal world has been used as the training data set. The verification of the produced knowledge base is done by using conventional expert system.
机译:自组织映射是无监督的神经网络模型,可用于对高维输入数据进行聚类分析。解释经过训练的地图非常困难,因为从结果地图表示中看不到负责特定聚类分配的要素。本文提出了一种使用Kohonen的自组织图和k-means聚类进行自动化知识获取的方法。为了演示架构和验证,已将代表动物世界的数据集用作训练数据集。所产生的知识库的验证是通过使用常规专家系统完成的。

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