模糊归纳推理的层次视角

Solmaz Bagherpour, F. Mugica, À. Nebot
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引用次数: 1

摘要

基于过去的数据归纳假设以预测未来是人类学习的本质核心。到目前为止,已经开发了各种成功的方法和技术,对当前数据进行某种分类,以便预测未来未见的病例。多类分类问题也是其中之一。在许多领域,尽管有这些自动技术,人类专家的参与是至关重要的。在本文中,我们提出了一个层次的观点,模糊归纳推理(FIR)方法作为一个分类器,以提供专家更多的见解,由FIR提供的预测模型。此外,该方法对FIR的泛化进行了分层约束,这可能有助于发现和预测不遵循模型提供的一般规则的数据异常情况。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Hierarchical perspective to Fuzzy Inductive Reasoning
Generalizing hypotheses based on the past data in order to predict the future is the essential core of human learning. Various successful methods and techniques have been developed so far that perform some sort of classification of current data in order to predict future unseen cases. Multi class classification problems are among them as well. In many domains in spite of these automatic techniques, involvement of human experts is crucial. In this paper we are proposing a Hierarchical perspective to Fuzzy Inductive Reasoning (FIR) method as a classifier, in order to provide more insights for experts to the predictive model offered by FIR. Also, This method puts a hierarchical constrain on FIR's generalization which might be useful in finding and predicting exceptional cases of data that don't follow the general rule offered by the model.
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