Processing of missing data by neural networks

05/18/2018
by   Marek Śmieja, et al.
0

We propose a general, theoretically justified mechanism for processing missing data by neural networks. Our idea is to replace typical neuron response in the first hidden layer by its expected value. This approach can be applied for various types of networks at minimal cost in their modification. Moreover, in contrast to recent approaches, it does not require complete data for training. Experimental results performed on different types of architectures show that our method gives better results than typical imputation strategies and other methods dedicated for incomplete data.

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