Chidanand Apté, Fred Damerau, et al.
ACM Transactions on Information Systems (TOIS)
We present results for automated text categorization of the Reuters-810000 collection of news stories. Our experiments use the entire one-year collection of 810,000 stories and the entire subject index. We divide the data into monthly groups and provide an initial benchmark of text categorization performance on the complete collection. Experimental results show that efficient sparse-feature implementations of linear methods and decision trees, using a global unstemmed dictionary, can readily handle applications of this size. Predictive performance is approximately as strong as the best results for the much smaller older Reuters collections. Detailed results are provided over time periods. It is shown that a smaller time horizon does not appreciably diminish predictive quality, implying reduced demands for retraining when sample size is large. © 2003 Elsevier Ltd. All rights reserved.
Chidanand Apté, Fred Damerau, et al.
ACM Transactions on Information Systems (TOIS)
Arun Viswanathan, Nancy Feldman, et al.
IEEE Communications Magazine
Anupam Gupta, Viswanath Nagarajan, et al.
Operations Research
Charles H. Bennett, Aram W. Harrow, et al.
IEEE Trans. Inf. Theory