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Software systems and computational methods
Reference:

Korobeynikov A.G., Sidorkina I.G., Blinov S.Yu., Leyman A.V. Algorithm of information classification for solving the problem of spam filtration.

Abstract: In this article authors consider the problem of spam determination and filtering based on the support vector machine. A modi fication of construction of a separating hyper plane using Fejer mappings is given. Authors suggest replacing the projection operation with the sequence of mapping operations to allow the work with the time-varying data, specific to the problems of classification of documents.


Keywords:

Software, classification of informa tion, spam, strong separability problem, Hil bert space, support vector method, the hyperplane, Fejér mapping algorithm conver gence, filtering


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