A tag-centric discriminative model for web objects classification

Lina Yao, Quan Z. Sheng
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引用次数: 1

Abstract

This paper studies web object classification problem with the novel exploration of social tags. More and more web objects are increasingly annotated with human interpretable labels (i.e., tags), which can be considered as an auxiliary attribute to assist the object classification. Automatically classifying web objects into manageable semantic categories has long been a fundamental pre-process for indexing, browsing, searching, and mining heterogeneous web objects. However, such heterogeneous web objects often suffer from a lack of easy-extractable and uniform descriptive features. In this paper, we propose a discriminative tag-centric model for web object classification by jointly modeling the objects category labels and their corresponding social tags and un-coding the relevance among social tags. Our approach is based on recent techniques for learning large-scale discriminative models. We conduct experiments to validate our approach using real-life data. The results show the feasibility and good performance of our approach.
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一个以标签为中心的web对象分类判别模型
本文通过对社会标签的新颖探索来研究web对象分类问题。越来越多的web对象被标注为人类可解释的标签(即标签),可以将其视为辅助对象分类的辅助属性。自动将web对象分类为可管理的语义类别一直是索引、浏览、搜索和挖掘异构web对象的基本预处理。然而,这种异构的web对象往往缺乏易于提取和统一的描述性特征。本文提出了一种以判别标签为中心的web对象分类模型,该模型通过对对象类别标签及其对应的社会标签进行联合建模,并对社会标签之间的相关性进行反编码。我们的方法是基于学习大规模判别模型的最新技术。我们利用现实生活中的数据进行实验来验证我们的方法。结果表明了该方法的可行性和良好的性能。
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