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arxiv: 1509.01053 · v1 · pith:VQBFMSZAnew · submitted 2015-09-03 · 💻 cs.LG

Training a Restricted Boltzmann Machine for Classification by Labeling Model Samples

classification 💻 cs.LG
keywords modelsamplestrainingclassificationboltzmanndataexamplesfashion
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We propose an alternative method for training a classification model. Using the MNIST set of handwritten digits and Restricted Boltzmann Machines, it is possible to reach a classification performance competitive to semi-supervised learning if we first train a model in an unsupervised fashion on unlabeled data only, and then manually add labels to model samples instead of training data samples with the help of a GUI. This approach can benefit from the fact that model samples can be presented to the human labeler in a video-like fashion, resulting in a higher number of labeled examples. Also, after some initial training, hard-to-classify examples can be distinguished from easy ones automatically, saving manual work.

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