Title of article :
A belief function classifier based on information provided by noisy and dependent features Original Research Article
Author/Authors :
Paul-André Monney، نويسنده , , Moses Chan، نويسنده , , Paul Romberg، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2011
Abstract :
A model and method are proposed for dealing with noisy and dependent features in classification problems. The knowledge base consists of uncertain logical rules forming a probabilistic argumentation system. Assumption-based reasoning is the inference mechanism that is used to derive information about the correct class of the object. Given a hypothesis regarding the correct class, the system provides a symbolic expression of the arguments for that hypothesis as a logical disjunctive normal form. These arguments turn into degrees of support for the hypothesis when numerical weights are assigned to them, thereby creating a support function on the set of possible classes. Since a support function is a belief function, the pignistic transformation is then applied to the support function and the object is placed into the class with maximal pignistic probability.
Keywords :
Object classification , Dempster–Shafer Theory , Noisy measurements , Dependent features , Evidence theory
Journal title :
International Journal of Approximate Reasoning
Journal title :
International Journal of Approximate Reasoning