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キーワード:
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要旨:
The problem of active learning is approached in this paper by minimizing
directly an estimate of the expected test error. The main difficulty
in this ``optimal'' strategy is that output probabilities need to be
estimated accurately. We suggest here different methods
for estimating those efficiently.
In this context, the Parzen window classifier is considered
because it is both simple and probabilistic. The analysis of experimental
results highlights that regularization is a key ingredient for this strategy.