We propose a novel approach for using unsupervised boosting to create an ensemble of generative models, where models are trained in sequence to correct earlier mistakes. Our meta-algorithmic framework can leverage any existing base learner that permits likelihood evaluation, including recent deep expressive models. Further, our approach allows the ensemble to include discriminative models trained to distinguish real data from model-generated data. We show theoretical conditions under which incorporating a new model in the ensemble will improve the fit and empirically demonstrate the effectiveness of our black-box boosting algorithms on density estimation, classification, and sample generation on benchmark datasets for a wide range of genera...
We present a new ensemble learning algorithm, DeepBoost, which can use as base classifiers a hypothe...
In this paper, we examine ensemble algorithms (Boosting Lite and Ivoting) that provide accuracy appr...
Ensemble learning is a multiple-classier machine learning approach which combines, produces collecti...
International audienceUnsupervised learning of generative models has seen tremendous progress over r...
Boosting is an iterative ensemble-learning paradigm. Every iteration, a weak predictor learns a clas...
Boosting is an iterative ensemble-learning paradigm. Every iteration, a weak predictor learns a clas...
Ensemble learning is a multiple-classifier machine learning approach which produces collections and ...
Abstract — Ensemble learning is a multiple-classifier machine learning approach which produces colle...
This electronic version was submitted by the student author. The certified thesis is available in th...
We introduce BoostEM, a semi-supervised ensemble method which combines the benefits of using an ense...
We consider the problem of learning deep gener-ative models from data. We formulate a method that ge...
Ensemble machine learning methods are often used when the true prediction function is not easily app...
Ensemble methods like Bagging and Boosting which combine the decisions of multiple hypotheses are so...
Generative models can be used for a wide range of tasks, and have the appealing ability to learn fro...
AdaBoost is a well-known ensemble learning algorithm that constructs its constituent or base models ...
We present a new ensemble learning algorithm, DeepBoost, which can use as base classifiers a hypothe...
In this paper, we examine ensemble algorithms (Boosting Lite and Ivoting) that provide accuracy appr...
Ensemble learning is a multiple-classier machine learning approach which combines, produces collecti...
International audienceUnsupervised learning of generative models has seen tremendous progress over r...
Boosting is an iterative ensemble-learning paradigm. Every iteration, a weak predictor learns a clas...
Boosting is an iterative ensemble-learning paradigm. Every iteration, a weak predictor learns a clas...
Ensemble learning is a multiple-classifier machine learning approach which produces collections and ...
Abstract — Ensemble learning is a multiple-classifier machine learning approach which produces colle...
This electronic version was submitted by the student author. The certified thesis is available in th...
We introduce BoostEM, a semi-supervised ensemble method which combines the benefits of using an ense...
We consider the problem of learning deep gener-ative models from data. We formulate a method that ge...
Ensemble machine learning methods are often used when the true prediction function is not easily app...
Ensemble methods like Bagging and Boosting which combine the decisions of multiple hypotheses are so...
Generative models can be used for a wide range of tasks, and have the appealing ability to learn fro...
AdaBoost is a well-known ensemble learning algorithm that constructs its constituent or base models ...
We present a new ensemble learning algorithm, DeepBoost, which can use as base classifiers a hypothe...
In this paper, we examine ensemble algorithms (Boosting Lite and Ivoting) that provide accuracy appr...
Ensemble learning is a multiple-classier machine learning approach which combines, produces collecti...