@article{oai:nagoya.repo.nii.ac.jp:00005904, author = {Khy, Sophoin and Ishikawa, Yoshiharu and Kitagawa, Hiroyuki}, journal = {Proceedings of the 22nd International Conference on Data Engineering Workshops (ICDEW'06)}, month = {Apr}, note = {Document clustering has been used as a core technique in managing vast amount of data and providing needed information. In on-line environments, generally new information gains more interests than old one. Traditional clustering focuses on grouping similar documents into clusters by treating each document with equal weight. We proposed a novelty-based incremental clustering method for on-line documents that has biases on recent documents. In the clustering method, the notion of 'novelty' is incorporated into a similarity function and a clustering method, a variant of the K-means method, is proposed. We examine the efficiency and behaviors of the method by experiments.}, pages = {40--40}, title = {Novelty-based Incremental Document Clustering for On-line Documents}, year = {2006} }