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Unsupervised Data Selection for Supervised Learning

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arxiv 1810.12142 v2 pith:3OCJUPGA submitted 2018-10-29 cs.CV

Unsupervised Data Selection for Supervised Learning

classification cs.CV
keywords datalearninghoweverresultssupervisedunsupervisedaddressedarchitectures
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Recent research put a big effort in the development of deep learning architectures and optimizers obtaining impressive results in areas ranging from vision to language processing. However little attention has been addressed to the need of a methodological process of data collection. In this work we hypothesize that high quality data for supervised learning can be selected in an unsupervised manner and that by doing so one can obtain models capable to generalize better than in the case of random training set construction. However, preliminary results are not robust and further studies on the subject should be carried out.

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