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Knowledge-Rich Similarity-Based Classification

机译:基于知识相似度的分类

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摘要

This paper proposes to enhance similarity-based classification with different types of imperfect domain knowledge. We introduce a hierarchy of knowledge types and show how the types can be incorporated into similarity measures. Furthermore, we analyze how properties of the domain theory, such as partialness and vagueness, influence classification accuracy. Experiments in a simple domain suggest that partial knowledge is more useful than vague knowledge. However, for data sets from the UCI Machine Learning Repository, we show that even vague domain knowledge that in isolation performs at chance level can substantially increase classification accuracy when being incorporated into similarity-based classification.
机译:本文提出使用不同类型的不完善领域知识来增强基于相似度的分类。我们介绍了知识类型的层次结构,并说明了如何将这些类型合并到相似性度量中。此外,我们分析了领域理论的属性(如偏性和模糊性)如何影响分类准确性。在简单领域中的实验表明,部分知识比模糊知识更有用。但是,对于来自UCI机器学习存储库的数据集,我们表明,即使将模糊的领域知识单独运用于机会级别,也可以在将其纳入基于相似度的分类时大大提高分类的准确性。

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