posted on 2007-01-01, 00:00authored byYang Xiang, Wanlei Zhou, J Chen
Email overload is a recent problem that there is increasingly difficulty people have faced to process the large number of emails received daily. Currently this problem becomes more and more serious and it has already affected the normal usage of email as a knowledge management tool. It has been recognized that categorizing emails into meaningful groups can greatly save cognitive load to process emails and thus this is an effective way to manage email overload problem. However, most current approaches still require significant human input when categorizing emails. In this paper we develop an automatic email clustering system, underpinned by a new nonparametric text clustering algorithm. This system does not require any predefined input parameters and can automatically generate meaningful email clusters. Experiments show our new algorithm outperforms existing text clustering algorithms with higher efficiency in terms of computational time and clustering quality measured by different gauges.
History
Journal
Lecture notes in computer science
Volume
4672
Pagination
81 - 90
Location
Berlin, Germany
Open access
Yes
ISSN
0302-9743
eISSN
1611-3349
Language
eng
Notes
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Publication classification
C1 Refereed article in a scholarly journal
Copyright notice
2007, IFIP International Federation for Information Processing; 2008, Springer Berlin