自动推理的分层知识表示

J. Będkowski, A. Maslowski
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引用次数: 2

摘要

本文对自动推理中的知识层次表示进行了研究。为了实现预测建模,提出了层次知识表示方法。它改进了一种有效的自动推理结构,用于数据集分析和基于数据之间复杂关系的决策。需要强调的是,它不被认为是关于数据结构的先验知识,因此该方法自动发现数据之间的特定约束。它提供了一种验证层次知识表示构建过程的技术,可用于模型证明。数值实验表明了该方法的优越性。假设所提出的自动推理可以用于难以选择正确分类器的分类目的。
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The hierarchical knowledge representation for automated reasoning
In the paper the study of knowledge hierarchical representation for automated reasoning is presented. The hierarchical knowledge representation is proposed for predictive modeling purpose. It is improved an effective automated reasoning structure for data set analyzes and making decisions based on complex relations between this data. It is important to emphasize that it is not considered a — priori knowledge concerning data structure, therefore the approach automatically discovers particular constraints between data. It provides a technique of the verification the hierarchical knowledge representation building process that can be useful for the model justification. The presented numerical experiment shows an advantage of proposed approach. It is assumed that the presented automated reasoning can be used for classification purpose where there is a difficulty of proper classifier choice.
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