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 ahmad and tresp


Efficient Methods for Dealing with Missing Data in Supervised Learning

Neural Information Processing Systems

In many applications it is important to know how to react if the available information is incomplete, if sensors fail or if sources of information become A.t the time of the research for this paper, a visiting researcher at the Center for Biological and Computational Learning, MIT.


Efficient Methods for Dealing with Missing Data in Supervised Learning

Neural Information Processing Systems

In many applications it is important to know how to react if the available information is incomplete, if sensors fail or if sources of information become A.t the time of the research for this paper, a visiting researcher at the Center for Biological and Computational Learning, MIT.


Efficient Methods for Dealing with Missing Data in Supervised Learning

Neural Information Processing Systems

Palo Alto, CA 94304 Abstract We present efficient algorithms for dealing with the problem of missing inputs(incomplete feature vectors) during training and recall. Our approach is based on the approximation of the input data distribution usingParzen windows. For recall, we obtain closed form solutions for arbitrary feedforward networks. For training, we show how the backpropagation step for an incomplete pattern can be approximated by a weighted averaged backpropagation step. The complexity of the solutions for training and recall is independent of the number of missing features.