Using Fuzzy Logic to Leverage HTML Markup for Web Page Representation
June 14, 2016 Β· Declared Dead Β· π IEEE transactions on fuzzy systems
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Authors
Alberto P. GarcΓa-Plaza, VΓctor Fresno, Raquel MartΓnez, Arkaitz Zubiaga
arXiv ID
1606.04429
Category
cs.IR: Information Retrieval
Cross-listed
cs.CL
Citations
29
Venue
IEEE transactions on fuzzy systems
Last Checked
4 months ago
Abstract
The selection of a suitable document representation approach plays a crucial role in the performance of a document clustering task. Being able to pick out representative words within a document can lead to substantial improvements in document clustering. In the case of web documents, the HTML markup that defines the layout of the content provides additional structural information that can be further exploited to identify representative words. In this paper we introduce a fuzzy term weighing approach that makes the most of the HTML structure for document clustering. We set forth and build on the hypothesis that a good representation can take advantage of how humans skim through documents to extract the most representative words. The authors of web pages make use of HTML tags to convey the most important message of a web page through page elements that attract the readers' attention, such as page titles or emphasized elements. We define a set of criteria to exploit the information provided by these page elements, and introduce a fuzzy combination of these criteria that we evaluate within the context of a web page clustering task. Our proposed approach, called Abstract Fuzzy Combination of Criteria (AFCC), can adapt to datasets whose features are distributed differently, achieving good results compared to other similar fuzzy logic based approaches and TF-IDF across different datasets.
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