Context changes detection by one-class SVMs

نویسندگان

  • Gaëlle Loosli
  • Sang-Goog Lee
  • Stéphane Canu
چکیده

We are interested in a low level part of user modeling, which is the change detection in the context of the user. We present a method to detect on line changes in the context of a user equipped with non invasive sensors. Our point is to provide, in real time, series of unlabeled contexts that can be classi ed and analyzed on a higher level.

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تاریخ انتشار 2005