HIERARCHIC AGGLOMERATIVE CLUSTERING METHODS FOR AUTOMATIC DOCUMENT CLASSIFICATION
This paper considers the classifications produced by application of the single linkage, complete linkage, group average and Ward clustering methods to the Keen and Cranfield document test collections. Experiments were carried out to study the structure of the hierarchies produced by the different methods, the extent to which the methods distort the input similarity matrices during the generation of a classification, and the retrieval effectiveness obtainable in cluster based retrieval. The results would suggest that the single linkage method, which has been used extensively in previous work on document clustering, is not the most effective procedure of those tested, although it should be emphasized that the experiments have used only small document test collections.
Year of publication: |
1984
|
---|---|
Authors: | GRIFFITHS, ALAN ; ROBINSON, LESLEY A. ; WILLETT, PETER |
Published in: |
Journal of Documentation. - MCB UP Ltd, ISSN 1758-7379, ZDB-ID 1479864-5. - Vol. 40.1984, 3, p. 175-205
|
Publisher: |
MCB UP Ltd |
Saved in:
Saved in favorites
Similar items by person
-
Computer science research in Malaysia: a bibliometric analysis
Bakri, Aryati, (2011)
-
Griffiths, Alan, (1990)
-
Griffiths, Alan, (1962)
- More ...