Combining Classifiers in Text Categorization (1996)
| Citations: | 110 - 5 self |
BibTeX
@INPROCEEDINGS{Larkey96combiningclassifiers,
author = {Leah Larkey and W. Bruce Croft},
title = {Combining Classifiers in Text Categorization},
booktitle = {},
year = {1996},
pages = {289--297},
publisher = {ACM Press}
}
Years of Citing Articles
OpenURL
Abstract
Three different types of classifiers were investigated in the context of a text categorization problem in the medical domain: the automatic assignment of ICD9 codes to dictated inpatient discharge summaries. K-nearest-neighbor, relevance feedback, and Bayesian independence classifers were applied individually and in combination. A combination of different classifiers produced better results than any single type of classifier. For this specific medical categorization problem, new query formulation and weighting methods used in the k-nearest-neighbor classifier improved performance. 1 Introduction Past research in information retrieval has shown that one can improve retrieval effectiveness by using multiple representations in indexing and query formulation [27] [19] [3] [11] and by using multiple search strategies [5] [24] [7]. In this work, we investigate whether we can attain similar improvements in the domain of text categorization by combining different representations and classif...







