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Learning Sparse Feature Representations using Probabilistic Quadtrees and Deep Belief Nets

About

Learning sparse feature representations is a useful instrument for solving an unsupervised learning problem. In this paper, we present three labeled handwritten digit datasets, collectively called n-MNIST. Then, we propose a novel framework for the classification of handwritten digits that learns sparse representations using probabilistic quadtrees and Deep Belief Nets. On the MNIST and n-MNIST datasets, our framework shows promising results and significantly outperforms traditional Deep Belief Networks.

Saikat Basu, Manohar Karki, Sangram Ganguly, Robert DiBiano, Supratik Mukhopadhyay, Ramakrishna Nemani• 2015

Related benchmarks

TaskDatasetResultRank
Image ClassificationNoisy Bangla Numeral AWGN (test)
Accuracy91.34
5
Image ClassificationNoisy Bangla Numeral Contrast (test)
Accuracy87.31
5
ClassificationNoisy Bangla characters AWGN (test)
Accuracy57.31
5
ClassificationNoisy Bangla characters Motion (test)
Accuracy58.8
5
ClassificationNoisy Bangla characters Contrast (test)
Accuracy46.63
5
Image ClassificationNoisy Bangla Numeral Motion (test)
Accuracy92.66
5
Digit RecognitionMNIST motion noisy (test)
Error Rate2.6
4
Character ClassificationNoisy Bangla Numeral awgn
Error Rate8.66
4
Character ClassificationNoisy Bangla Numeral contrast
Error (%)12.69
4
Image ClassificationMNIST motion noisy (test)
Accuracy97.4
4
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