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Learning Classification with Unlabeled Data

Virginia R. de

Year
1993
Citations
205

Abstract

One of the advantages of supervised learning is that the final error met-ric is available during training. For classifiers, the algorithm can directly reduce the number of misclassifications on the training set. Unfortu-nately, when modeling human learning or constructing classifiers for au-tonomous robots, supervisory labels are often not available or too ex-pensive. In this paper we show that we can substitute for the labels by making use of structure between the pattern distributions to different sen-sory modalities. We show that minimizing the disagreement between the outputs of networks processing patterns from these different modalities is a sensible approximation to minimizing the number of misclassifications in each modality, and leads to similar results. Using the Peterson-Barney vowel dataset we show that the algorithm performs well in finding ap-propriate placement for the codebook vectors particularly when the con-fuseable classes are different for the two modalities. 1

Keywords

Artificial intelligenceCodebookComputer scienceModalitiesMachine learningMetric (unit)Modality (human–computer interaction)Set (abstract data type)Pattern recognition (psychology)

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