Abstract 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 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 st...
A Deep Boltzmann Machine is described for learning a generative model of data that consists of multi...
Ensemble multifeatured deep learning methodology has emerged as a powerful approach to overcome the ...
Making deep learning models efficient at inferring nowadays requires training with an extensive numb...
Abstract. Deep neural networks with several layers have during the last years become a highly succes...
We investigate group invariance in unsupervised learning in the context of certain generative networ...
Over the last few years, deep learning has revolutionized the field of machine learning by dramatica...
This thesis is a compilation of five research contributions whose goal is to do unsupervised and tra...
We explore the training and usage of the Restricted Boltzmann Machine for unsupervised feature extra...
Unsupervised learning algorithms aim to discover the structure hidden in the data, and to learn repr...
The goal of a generative model is to capture the distribution underlying the data, typically through...
We introduce a new method for training deep Boltzmann machines jointly. Prior methods of training DB...
Although supervised learning requires a labeled dataset, obtaining labels from experts is generally ...
Although supervised learning requires a labeled dataset, ob- taining labels from experts is generall...
Thesis (Ph.D.)--University of Washington, 2020Unsupervised learning is the branch of machine learnin...
We consider restricted Boltzmann machine (RBMs) trained over an unstructured dataset made of blurred...
A Deep Boltzmann Machine is described for learning a generative model of data that consists of multi...
Ensemble multifeatured deep learning methodology has emerged as a powerful approach to overcome the ...
Making deep learning models efficient at inferring nowadays requires training with an extensive numb...
Abstract. Deep neural networks with several layers have during the last years become a highly succes...
We investigate group invariance in unsupervised learning in the context of certain generative networ...
Over the last few years, deep learning has revolutionized the field of machine learning by dramatica...
This thesis is a compilation of five research contributions whose goal is to do unsupervised and tra...
We explore the training and usage of the Restricted Boltzmann Machine for unsupervised feature extra...
Unsupervised learning algorithms aim to discover the structure hidden in the data, and to learn repr...
The goal of a generative model is to capture the distribution underlying the data, typically through...
We introduce a new method for training deep Boltzmann machines jointly. Prior methods of training DB...
Although supervised learning requires a labeled dataset, obtaining labels from experts is generally ...
Although supervised learning requires a labeled dataset, ob- taining labels from experts is generall...
Thesis (Ph.D.)--University of Washington, 2020Unsupervised learning is the branch of machine learnin...
We consider restricted Boltzmann machine (RBMs) trained over an unstructured dataset made of blurred...
A Deep Boltzmann Machine is described for learning a generative model of data that consists of multi...
Ensemble multifeatured deep learning methodology has emerged as a powerful approach to overcome the ...
Making deep learning models efficient at inferring nowadays requires training with an extensive numb...