互动使用归纳方法分析和发展概念结构

I. Birzniece
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引用次数: 1

摘要

归纳学习算法从训练样本中学习分类,并使用归纳分类器处理新实例。使用概念数据结构作为分类器的输入使得这项任务变得更加复杂,分类器可能会遇到类预测的困难。为了扩大基于归纳学习的分类器的适用性,系统和人类专家之间的协作方法将是有用的。所提出的交互系统在不确定条件下可以向人类寻求建议,并通过这种交互产生的规则来改进其知识库。为了实现大学学习课程的半自动比较,提出了一种基于交互式归纳学习的分类系统。
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Interactive use of inductive approach for analyzing and developing conceptual structures
Inductive learning algorithms learns classification from training examples and uses induced classifier for dealing with new instances. The use of conceptual data structures for classifier's input is making this task more complicated and classifier may meet the difficulties in class prediction. To broaden applicability of inductive learning based classifiers a collaborative approach between the system and human expert would be useful. The proposed interactive system in uncertain conditions can ask for human advice and improve its knowledge base with the rule derived from this interaction. Interactive inductive learning based classification system is proposed for helping to compare university study courses semi-automatically.
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