We consider the problem of learning accurate models from multiple sources of nearby data. Given distinct samples from multiple data sources and estimates of the dissimilarities between these sources, we provide a general theory of which samples should be used to learn models for each source. This theory is applicable in a broad decision-theoretic learning framework, and yields general results for classification and regression. A key component of our approach is the development of approximate triangle inequalities for expected loss, which may be of independent interest. We discuss the related problem of learning parameters of a distribution from multiple data sources. Finally, we illustrate our theory through a series of synthetic simulati...
jon~dcs.rhbnc.ac.uk In this paper the problem of learning appropriate domain-specific bias is addres...
115 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 1993.This thesis examines issues r...
We initiate the study of learning from multiple sources of limited data, each of which may be corru...
We consider the problem of learning accurate models from multiple sources of nearby data. Given di...
We consider the problem of learning accurate models from multiple sources of “nearby ” data. Given d...
We consider the problem of learning a model from multiple heterogeneous sources with the goal of per...
In large variety of practical applications, using information from different sources or different ki...
Learning from multiple sources of information is an important problem in machine-learning research. ...
Discriminative learning methods for classification perform well when training and test data are draw...
International audienceIn many real-world applications, it may be desirable to benefit from a classi-...
In many applications, training data is provided in the form of related datasets obtained from severa...
Given multiple correlated data sets, an important question is how to make use of them to benefit lat...
We initiate the study of learning from multiple sources of limited data, each of which may be corrup...
This paper considers the two-dataset problem, where data are collected from two potentially differen...
© 2020 Elsevier Inc. Transfer learning addresses the problem of how to leverage acquired knowledge f...
jon~dcs.rhbnc.ac.uk In this paper the problem of learning appropriate domain-specific bias is addres...
115 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 1993.This thesis examines issues r...
We initiate the study of learning from multiple sources of limited data, each of which may be corru...
We consider the problem of learning accurate models from multiple sources of nearby data. Given di...
We consider the problem of learning accurate models from multiple sources of “nearby ” data. Given d...
We consider the problem of learning a model from multiple heterogeneous sources with the goal of per...
In large variety of practical applications, using information from different sources or different ki...
Learning from multiple sources of information is an important problem in machine-learning research. ...
Discriminative learning methods for classification perform well when training and test data are draw...
International audienceIn many real-world applications, it may be desirable to benefit from a classi-...
In many applications, training data is provided in the form of related datasets obtained from severa...
Given multiple correlated data sets, an important question is how to make use of them to benefit lat...
We initiate the study of learning from multiple sources of limited data, each of which may be corrup...
This paper considers the two-dataset problem, where data are collected from two potentially differen...
© 2020 Elsevier Inc. Transfer learning addresses the problem of how to leverage acquired knowledge f...
jon~dcs.rhbnc.ac.uk In this paper the problem of learning appropriate domain-specific bias is addres...
115 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 1993.This thesis examines issues r...
We initiate the study of learning from multiple sources of limited data, each of which may be corru...