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Topic identification based on document coherence and spectral analysis
Authors:Joris D’hondt  Paul-Armand Verhaegen  Joris Vertommen  Dirk Cattrysse  Joost R Duflou
Affiliation:Centre for Industrial Management, Katholieke Universiteit Leuven, Celestijnenlaan 300A bus 2422, 3001 Heverlee, Belgium
Abstract:In a world with vast information overload, well-optimized retrieval of relevant information has become increasingly important. Dividing large, multiple topic spanning documents into sets of coherent subdocuments facilitates the information retrieval process. This paper presents a novel technique to automatically subdivide a textual document into consistent components based on a coherence quantification function. This function is based on stem or term chains linking document entities, such as sentences or paragraphs, based on the reoccurrences of stems or terms. Applying this function on a document results in a coherence graph of the document linking its entities. Spectral graph partitioning techniques are used to divide this coherence graph into a number of subdocuments. A novel technique is introduced to obtain the most suitable number of subdocuments. These subdocuments are an aggregation of (not necessarily adjacent) entities. Performance tests are conducted in test environments based on standardized datasets to prove the algorithm’s capabilities. The relevance of these techniques for information retrieval and text mining is discussed.
Keywords:Topic identification  Spectral theory  Text mining
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