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A fuzzy decision strategy for topic identification and dynamic selection of language models

机译:主题识别和语言模型动态选择的模糊决策策略

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The paper introduces a new effective model for topic recognition. The model follows a multi-expert decision paradigm based on fuzzy relations in which fuzzy variables express degrees of reliability of expert decision. Heterogeneous measures are integrated by the fuzzy relations whose structure and components may evolve in time. Experiments resulted in more than 80/100 topic classification accuracy on articles of the French newspaper Le Monde which describe a very large variety of facts with a very large vocabulary (of the order of 500 000 words). Experiments show a significant improvement when the above mentioned integration of multi-expert decision is used. A robust strategy for dynamic language model (LM) selection, based on topic recognition and switching between topic models, is proposed. It is effective because it relies on a small set of well trained topic-dependent LMs and on reliable topic recognition. By using perplexity as a performance measure of the LM switching model, a tangible reduction is observed with respect to the use of a single, general, static LM.
机译:本文介绍了一种新的主​​题识别有效模型。该模型遵循基于模糊关系的多专家决策范式,其中模糊变量表示专家决策的可靠性程度。异构度量通过模糊关系整合在一起,其结构和组件可能会随时间变化。通过实验,法国《世界报》的文章对主题分类的准确率达到80/100以上,这些文章用非常大的词汇量(约50万个单词)描述了各种各样的事实。当使用上述多专家决策集成时,实验显示出显着改进。提出了一种基于主题识别和主题模型之间切换的动态语言模型(LM)选择的鲁棒策略。它之所以有效是因为它依赖于少量受过良好训练的与主题相关的LM,并且依赖于可靠的主题识别。通过使用困惑度作为LM切换模型的性能度量,相对于使用单个通用静态LM而言,可以观察到明显的减少。

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