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Multiknowledge for decision making

机译:多知识决策

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The representation of knowledge has an important effect on automated decision-making. In this paper, vector spaces are used to describe a condition space and a decision space, and knowledge is represented by a mapping from the condition space to the decision space. Many such mappings can be obtained from a training set. A set of mappings, which are created from multiple reducts in the training set, is defined as multiknowledge. In order to get a good reduct and find multiple reducts, the WADF (worst-attribute-drop-first) algorithm is developed through analysis of the properties of decision systems using rough set theory. An approach that combines multiknowledge and the naïve Bayes classifier is applied to make decisions for unseen instances or for instances with missing attribute values. Benchmark data sets from the UCI Machine Learning Repository are used to test the algorithms. The experimental results are encouraging; the prediction accuracy for unseen instances by using the algorithms is higher than by using other approaches based on a single body of knowledge.
机译:知识的表示对自动化决策具有重要影响。在本文中,向量空间用于描述条件空间和决策空间,并且知识通过从条件空间到决策空间的映射来表示。可以从训练集中获得许多这样的映射。由训练集中的多个约简创建的一组映射定义为多知识。为了获得良好的约简并找到多个约简,通过使用粗糙集理论对决策系统的属性进行分析,开发了WADF(最差属性先降)算法。结合了多知识和朴素贝叶斯分类器的方法可用于为看不见的实例或缺少属性值的实例做出决策。 UCI机器学习存储库中的基准数据集用于测试算法。实验结果令人鼓舞;与基于单一知识体系的其他方法相比,使用该算法对未见实例的预测精度更高。

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