TY  - RPRT
ID  - jf:TUD-KE-2009-05
T1  - Learning To Recognize Missing E-mail Attachments
A1  - Ghiglieri, Marco
A1  - Fürnkranz, Johannes
Y1  - 2009
IS  - TUD-KE-2009-05
T2  - Knowledge Engineering Group, TU Darmstadt
UR  - /publications/reports/tud-ke-2009-05.pdf
N2  - Forgotten attachments of e-mail message are a common and obnoxious problem. Several E-mail readers provide plugins that attempt to tackle this problem by trying to guess whether a message needs an attachment and warn the user in case s/he does not attach a file to such a message. However, these approaches essentially only work with a fixed list of keywords, which trigger such a warning whenever they occur in a message. In this paper, we try conventional machine learning techniques, which have been previously shown to work well for related problems such as spam mail filtering, on this new problem. Our results show that they work very well, clearly outperforming simple keyword-based approaches. The software is available as plugin for the Thunderbird e-mail reader.
ER  -