Suggesting novel but related topics: towards context-based support for knowledge model extension

Ana Gabriela Maguitman, David B. Leake, T. Reichherzer
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引用次数: 32

Abstract

Much intelligent user interfaces research addresses the problem of providing information relevant to a current user topic. However, little work addresses the complementary question of helping the user identify potential topics to explore next. In knowledge acquisition, this question is crucial to deciding how to extend previously-captured knowledge. This paper examines requirements for effective topic suggestion and presents a domain-independent topic-generation algorithm designed to generate candidate topics that are novel but related to the current context. The algorithm iteratively performs a cycle of topic formation, Web search for connected material, and context-based filtering. An experimental study shows that this approach significantly outperforms a baseline at developing new topics similar to those chosen by an expert for a hand-coded knowledge model.
提出新颖但相关的主题:为知识模型扩展提供基于上下文的支持
许多智能用户界面研究解决了提供与当前用户主题相关的信息的问题。然而,很少有工作解决帮助用户确定下一步探索的潜在主题的补充问题。在知识获取中,这个问题对于决定如何扩展先前捕获的知识至关重要。本文研究了有效主题建议的要求,并提出了一种独立于领域的主题生成算法,该算法旨在生成新颖但与当前上下文相关的候选主题。该算法迭代地执行主题形成、连接材料的Web搜索和基于上下文的过滤的循环。一项实验研究表明,这种方法在开发新主题方面明显优于基线,类似于由专家为手工编码的知识模型选择的主题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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