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Classifying Document Titles Based on Information Inference

机译:根据信息推断对文献标题进行分类

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We propose an intelligent document title classification agent based on a theory of information inference. The information is represented as vectorial spaces computed by a cognitively motivated model, namely Hyperspace Analogue to Language (HAL). A combination heuristic is used to combine a group of concepts into one single combination vector. Information inference can be performed on the HAL spaces via computing information flow between vectors or combination vectors. Based on this theory, a document title is treated as a combination vector by applying the combination heuristic to all the nonstop terms in the title. Two methodologies for learning and assigning categories to document titles are addressed. Experimental results on Reuters-21578 corpus show that our framework is promising and its performance achieves 71% of the upper bound (which is approximated by using whole documents).
机译:我们提出了一个基于信息推理理论的智能文档标题分类代理。该信息表示为由认知激励模型计算的矢量空间,即语言(HAL)的Hyperspace类似物。组合启发式旨在将一组概念组合成一个单个组合矢量。可以通过在向量或组合向量之间的计算信息流来对HAL空间执行信息推断。基于该理论,通过将组合启发式应用于标题中的所有非级别术语,将文档标题视为组合矢量。解决了用于学习和分配文档标题类别的两种方法。 Reuters-21578语料库上的实验结果表明,我们的框架是有前途的,其性能达到了71%的上限(通过使用整个文件近似)。

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