TY - JOUR T1 - Improving Classifier Performance by Autonomously Collecting Background Knowledge from the Web JF - 2011 10th International Conference on Machine Learning and Applications Workshops Y1 - 2011 A1 - Minton,S.N. A1 - Michelson,M. A1 - See,K. A1 - Macskassy,S. A1 - Gazen,B.C. A1 - Getoor, Lise AB - Many websites allow users to tag data items to makethem easier to find. In this paper we consider the problem of classifying tagged data according to user-specified interests. We present an approach for aggregating background knowledge from the Web to improve the performance of a classier. In previous work, researchers have developed technology for extracting knowledge, in the form of relational tables, from semi- structured websites. In this paper we integrate this extraction technology with generic machine learning algorithms, showing that knowledge extracted from the Web can significantly benefit the learning process. Specifically, the knowledge can lead to better generalizations, reduce the number of samples required for supervised learning, and eliminate the need to retrain the system when the environment changes. We validate the approach with an application that classifies tagged Fickr data. ER -