Conference paper

A neural network for classification with incomplete data: application to robust ASR

If the data vector for input to an automatic classifier is incomplete, the optimal estimate for each class probability must be calculated as the expected value of the classifier output. We identify a form of RBF classifier whose expected outputs can easily be evaluated in terms of the original function parameters. We then describe two ways in which this classifier can be applied to robust automatic speech recognition, depending on whether or not the position of missing data is known

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