A comparison of discriminative classifiers for web news content extraction

Recherche d'Information Assistee par Ordinateur(2010)

引用 24|浏览32
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摘要
Until now, approaches to web content extraction have focused on random field models, largely neglecting large margin methods. Structured large margin methods, however, have recently shown great practical success. We compare, for the first time, greedy and structured support vector machines with conditional random fields on a real-world web news content extraction task, showing that large margin approaches are indeed competitive with random field models.
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关键词
conditional random field,real-world web news content,large margin method,discriminative classifier,structured support vector machine,web news content extraction,extraction task,large margin approach,structured large margin method,great practical success,random field model,web content extraction,random field,svm,support vector
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