Exploring Social Tagging Graph for Web Object Classification
This paper studies web object classification problem with
the novel exploration of social tags. Automatically classifying
web objects into manageable semantic categories has
long been a fundamental preprocess for indexing, browsing,
searching, and mining these objects. The explosive growth
of heterogeneous web objects, especially non-textual objects
such as products, pictures, and videos, has made the problem
of web classification increasingly challenging. Such objects
often suffer from a lack of easy-extractable features
with semantic information, interconnections between each
other, as well as training examples with category labels.
In this paper, we explore the social tagging data to bridge
this gap. We cast web object classification problem as an
optimization problem on a graph of objects and tags. We
then propose an efficient algorithm which not only utilizes
social tags as enriched semantic features for the objects, but
also infers the categories of unlabeled objects from both homogeneous
and heterogeneous labeled objects, through the
implicit connection of social tags. Experiment results show
that the exploration of social tags effectively boosts web object
classification. Our algorithm significantly outperforms
the state-of-the-art of general classification methods.
Date: August 30, 2009
Book Title: Proc. 2009 ACM SIGKDD Int. Conf. on Knowledge Discovery and Data Mining (KDD'09)
Type: InProceedings
Address: Paris, France
Downloads: 93
Has 1 soft copy
remote linkBibtex
@InProceedings{Exploring_Social_Tagging_Graph_for_Web_O,
author = "Zhijun Yin and Rui Li and Qiaozhu Mei and Jiawei Han",
title = "{Exploring Social Tagging Graph for Web Object Classification}",
month = "August",
year = "2009",
address = ", Paris, France",
booktitle = "Proc. 2009 ACM SIGKDD Int. Conf. on Knowledge Discovery and Data Mining (KDD'09)",
}