Computer Science – Information Retrieval
Scientific paper
2010-08-27
Journal of Computer Science (IBAIS University), Vol. 1, No. 1, pp. 15-18, 2007
Computer Science
Information Retrieval
7 pages, 2 figures
Scientific paper
In this paper, we have proposed an architecture of active learning SVMs with relevance feedback (RF)for classifying e-mail. This architecture combines both active learning strategies where instead of using a randomly selected training set, the learner has access to a pool of unlabeled instances and can request the labels of some number of them and relevance feedback where if any mail misclassified then the next set of support vectors will be different from the present set otherwise the next set will not change. Our proposed architecture will ensure that a legitimate e-mail will not be dropped in the event of overflowing mailbox. The proposed architecture also exhibits dynamic updating characteristics making life as difficult for the spammer as possible.
Amin Iftekharul Md.
Islam Saiful Md.
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