Statistical cross-language Web content quality assessment

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摘要

Cross-language Web content quality assessment plays an important role in many Web content processing applications. In the previous research, natural language processing, heuristic content and term frequency-inverse document frequency features based statistical systems have proven effective for Web content quality assessment. However, these are language-dependent features, which are not suitable for cross-language ranking. This paper proposes a cross-language Web content quality assessment method. First multi-modal language-independent features are extracted. The extracting features include character features, domain registration features, two-layer hyperlink analysis features and third-party Web service features. All the extracted features are then fused. Based on the fused features, feature selection is carried out to get a new eigenspace. Finally cross-language Web content quality model on the eigenspace can be learned. The experiments on ECML/PKDD 2010 Discovery Challenge cross-language datasets demonstrate that every scale feature has discriminability; different modalities of features are complementary to each other; and the feature selection is effective for statistical learning based cross-language Web content quality assessment.

论文关键词:Web content quality assessment,Feature extraction,Statistical learning,Feature selection,Web spam

论文评审过程:Received 8 February 2012, Revised 18 April 2012, Accepted 27 May 2012, Available online 5 June 2012.

论文官网地址:https://doi.org/10.1016/j.knosys.2012.05.018