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An adaptive information agent for document title classification and filtering in document-intensive domains

机译:用于文档密集型领域中文档标题分类和过滤的自适应信息代理

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摘要

Effective decision making is based on accurate and timely information. However, human decision makers are often overwhelmed by the huge amount of electronic data these days. The main contribution of this paper is the development of effective information agents which can autonomously classify and filter incoming electronic data on behalf of their human users. The proposed information agents are innovative because they can quickly classify electronic documents solely based on the short titles of these documents. Moreover, supervised learning is not required to train the classification models of these agents. Document classification is based on information inference conducted over a high dimensional semantic information space. What is more, a belief revision mechanism continuously maintains a set of user preferred information categories and filter documents with respect to these categories. Preliminary experimental results show that our document classification and filtering mechanism outperforms the Support Vector Machines (SVM) model which is regarded as one of the best performing classifiers.
机译:有效的决策基于准确,及时的信息。但是,如今,人类决策者常常不知所措。本文的主要贡献是开发了有效的信息代理,它们可以代表人类用户自动分类和过滤传入的电子数据。提议的信息代理是创新的,因为它们可以仅根据这些文档的简短标题就可以对电子文档进行快速分类。而且,不需要监督学习来训练这些代理的分类模型。文档分类基于在高维语义信息空间上进行的信息推断。此外,信念修订机制会持续维护一组用户首选信息类别,并针对这些类别过滤文档。初步实验结果表明,我们的文档分类和过滤机制优于支持向量机(SVM)模型,后者被认为是性能最好的分类器之一。

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