Supervised machine learning techniques have been very successful for a variety of tasks and domains including natural language processing, computer vision, and computational biology. Unfortunately, their use often requires creation of large problem-specific training corpora that can make these methods prohibitively expensive. At the same time, we often have access to external problem-specific information that we cannot alway easily incorporate. We might know how to solve the problem in another domain (e.g. for a different language); we might have access to cheap but noisy training data; or a domain expert might be available who would be able to guide a human learner much more efficiently than by simply creating an IID training corpus. A key...
Bilen H., Pedersoli M., Tuytelaars T., ''Weakly supervised object detection with posterior regulariz...
We propose a method for jointly inferring labels across a collection of data samples, where each sam...
Supervised learning from data is investigated from an optimization viewpoint. Ill-posedness issues o...
Supervised machine learning techniques have been very successful for a variety of tasks and domains ...
Supervised machine learning techniques have been very successful for a variety of tasks and domains ...
We present posterior regularization, a probabilistic framework for structured, weakly supervised lea...
We present Posterior Regularization, a probabilistic framework for structured, weakly supervised lea...
We present posterior regularization, a probabilistic framework for structured, weakly supervised lea...
Existing Bayesian models, especially nonparametric Bayesian methods, rely on specially conceived pri...
Existing Bayesian models, especially nonparametric Bayesian methods, rely on specially conceived pri...
We present an objective function for learning with unlabeled data that utilizes auxiliary expectatio...
This paper proposes a unified approach to learning from constraints, which integrates the ability of...
Word-level alignment of bilingual text is a critical resource for a growing variety of tasks. Probab...
We consider a multilingual weakly supervised learning scenario where knowledge from an-notated corpo...
24 pages, including 2 pages of references and 10 pages of appendixIn machine learning, it is common ...
Bilen H., Pedersoli M., Tuytelaars T., ''Weakly supervised object detection with posterior regulariz...
We propose a method for jointly inferring labels across a collection of data samples, where each sam...
Supervised learning from data is investigated from an optimization viewpoint. Ill-posedness issues o...
Supervised machine learning techniques have been very successful for a variety of tasks and domains ...
Supervised machine learning techniques have been very successful for a variety of tasks and domains ...
We present posterior regularization, a probabilistic framework for structured, weakly supervised lea...
We present Posterior Regularization, a probabilistic framework for structured, weakly supervised lea...
We present posterior regularization, a probabilistic framework for structured, weakly supervised lea...
Existing Bayesian models, especially nonparametric Bayesian methods, rely on specially conceived pri...
Existing Bayesian models, especially nonparametric Bayesian methods, rely on specially conceived pri...
We present an objective function for learning with unlabeled data that utilizes auxiliary expectatio...
This paper proposes a unified approach to learning from constraints, which integrates the ability of...
Word-level alignment of bilingual text is a critical resource for a growing variety of tasks. Probab...
We consider a multilingual weakly supervised learning scenario where knowledge from an-notated corpo...
24 pages, including 2 pages of references and 10 pages of appendixIn machine learning, it is common ...
Bilen H., Pedersoli M., Tuytelaars T., ''Weakly supervised object detection with posterior regulariz...
We propose a method for jointly inferring labels across a collection of data samples, where each sam...
Supervised learning from data is investigated from an optimization viewpoint. Ill-posedness issues o...