基于客观指标预测人类假设构建阶段的规则评价模型学习成本评价

H. Abe, S. Tsumoto, M. Ohsaki, H. Yokoi, Takahira Yamaguchi
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引用次数: 6

摘要

针对数据挖掘后处理中迭代规则评价支持方法,提出了一种基于客观指标的规则评价模型学习成本评价方法。挖掘结果的后处理是数据挖掘过程中的关键环节之一。然而,对于人类专家来说,很难从带有噪声的大型数据集中获得的数千条规则中发现有价值的知识。为了降低规则评价任务的成本,我们开发了基于规则评价模型的规则评价支持方法,该方法从挖掘的分类规则的客观指标和人类专家对每条规则的评价中学习。为了估计用客观规则评价指标预测人类兴趣的学习成本,我们用实际数据挖掘结果进行了两个案例研究,其中包括人类兴趣的不同阶段。针对这些结果,我们讨论了学习算法的性能与人类假设构建过程之间的关系。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evaluation of Learning Costs of Rule Evaluation Models Based on Objective Indices to Predict Human Hypothesis Construction Phases
In this paper, we present an evaluation of learning costs of rule evaluation models based on objective indices for an iterative rule evaluation support method in data mining post-processing. Post-processing of mined results is one of the key processes in a data mining process. However, it is difficult for human experts to find out valuable knowledge from several thousands of rules obtained with a large dataset with noises. To reduce the costs in such rule evaluation task, we have developed the rule evaluation support method with rule evaluation models, which learn from objective indices for mined classification rules and evaluations by a human expert for each rule. To estimate learning costs for predicting human interests with objective rule evaluation indices, we have done the two case studies with actual data mining results, which include different phases of human interests. With regarding to these results, we discuss about the relationship between performances of learning algorithms and human hypothesis construction process.
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