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A Deep Learning Approach to Unsupervised Ensemble Learning

About

We show how deep learning methods can be applied in the context of crowdsourcing and unsupervised ensemble learning. First, we prove that the popular model of Dawid and Skene, which assumes that all classifiers are conditionally independent, is {\em equivalent} to a Restricted Boltzmann Machine (RBM) with a single hidden node. Hence, under this model, the posterior probabilities of the true labels can be instead estimated via a trained RBM. Next, to address the more general case, where classifiers may strongly violate the conditional independence assumption, we propose to apply RBM-based Deep Neural Net (DNN). Experimental results on various simulated and real-world datasets demonstrate that our proposed DNN approach outperforms other state-of-the-art methods, in particular when the data violates the conditional independence assumption.

Uri Shaham, Xiuyuan Cheng, Omer Dror, Ariel Jaffe, Boaz Nadler, Joseph Chang, Yuval Kluger• 2016

Related benchmarks

TaskDatasetResultRank
Unsupervised Ensemble LearningArtiChars
Accuracy83.53
13
Unsupervised Ensemble LearningGesturePhsm
Accuracy66.57
13
Unsupervised Ensemble LearningPetFinder
Accuracy78.36
13
Unsupervised Ensemble LearningMicroAgg2
Accuracy62.35
13
Unsupervised Ensemble LearningTree3k
Accuracy93.28
13
Unsupervised Ensemble LearningMnistE
Accuracy78.63
13
Unsupervised Ensemble LearningCSGO
Accuracy82.79
13
Unsupervised Ensemble LearningEyeMovem
Accuracy68.48
13
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