Incremental Approach to Classification Learning

Q1 Computer Science
Xenia A. Naidenova
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引用次数: 2

Abstract

An approach to incremental classification learning is proposed. Classification learning is based on approximation of a given partitioning of objects into disjointed blocks in multivalued space of attributes. Good approximation is defined in the form of good maximally redundant classification test or good formal concept. A concept of classification context is introduced. Four situations of incremental modification of classification context are considered: adding and deleting objects and adding and deleting values of attributes. Algorithms of changing good concepts in these incremental situations are given and proven.
分类学习的增量方法
提出了一种增量分类学习方法。分类学习是基于在属性的多值空间中将给定的对象划分为不相交的块的近似。良好的近似以良好的最大冗余分类检验或良好的形式概念的形式定义。引入了分类上下文的概念。考虑了分类上下文增量修改的四种情况:对象的添加和删除以及属性值的添加和删除。给出并证明了在这些增量情况下的好概念变换算法。
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来源期刊
Foundations and Trends in Human-Computer Interaction
Foundations and Trends in Human-Computer Interaction Computer Science-Computer Science Applications
CiteScore
10.10
自引率
0.00%
发文量
2
期刊介绍: Foundations and Trends® in Human-Computer Interaction publishes surveys and tutorials in the following topics: - History of the research community - Design and Evaluation - Theory - Technology - Computer Supported Cooperative Work - Interdisciplinary influence - Advanced topics and trends - Information visualization
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