We study the average case performance of multi-task Gaussian process (GP) re-gression as captured in the learning curve, i.e. the average Bayes error for a chosen task versus the total number of examples n for all tasks. For GP covariances that are the product of an input-dependent covariance function and a free-form inter-task covariance matrix, we show that accurate approximations for the learning curve can be obtained for an arbitrary number of tasks T. We use these to study the asymptotic learning behaviour for large n. Surprisingly, multi-task learning can be asymptotically essentially useless, in the sense that examples from other tasks help only when the degree of inter-task correlation, ρ, is near its maximal value ρ = 1. This effec...
We introduce the collaborative multi-output Gaussian process (GP) model for learning dependent tasks...
Aggregated data is commonplace in areas such as epidemiology and demography. For example, census dat...
Multi-task Gaussian process (MTGP) is a well-known non-parametric Bayesian model for learning correl...
Learning curves for Gaussian process regression are well understood when the 'student ' mo...
We consider the problem of calculating learning curves (i.e., average generalization performance) o...
Gaussian graphical regression is a powerful means that regresses the precision matrix of a Gaussian ...
We consider the problem of multi-task learning, that is, learning multiple related functions. Our ap...
Based on a statistical mechanics approach, we develop a method for approximately computing average c...
In this paper we investigate multi-task learning in the context of Gaussian Pro-cesses (GP). We prop...
International audienceThis paper deals with the learning curve in a Gaussian process regression fram...
We study learning curves for Gaussian process regression which characterise per-formance in terms of...
Note: This paper is an extended version of the manuscript Learning curves for Gaussian process regr...
Multi-task learning refers to learning multiple tasks simultaneously, in order to avoid tabula rasa ...
Transfer Learning is an emerging framework for learning from data that aims at intelligently transf...
In this paper we introduce and illustrate non-trivial upper and lower bounds on the learning curves ...
We introduce the collaborative multi-output Gaussian process (GP) model for learning dependent tasks...
Aggregated data is commonplace in areas such as epidemiology and demography. For example, census dat...
Multi-task Gaussian process (MTGP) is a well-known non-parametric Bayesian model for learning correl...
Learning curves for Gaussian process regression are well understood when the 'student ' mo...
We consider the problem of calculating learning curves (i.e., average generalization performance) o...
Gaussian graphical regression is a powerful means that regresses the precision matrix of a Gaussian ...
We consider the problem of multi-task learning, that is, learning multiple related functions. Our ap...
Based on a statistical mechanics approach, we develop a method for approximately computing average c...
In this paper we investigate multi-task learning in the context of Gaussian Pro-cesses (GP). We prop...
International audienceThis paper deals with the learning curve in a Gaussian process regression fram...
We study learning curves for Gaussian process regression which characterise per-formance in terms of...
Note: This paper is an extended version of the manuscript Learning curves for Gaussian process regr...
Multi-task learning refers to learning multiple tasks simultaneously, in order to avoid tabula rasa ...
Transfer Learning is an emerging framework for learning from data that aims at intelligently transf...
In this paper we introduce and illustrate non-trivial upper and lower bounds on the learning curves ...
We introduce the collaborative multi-output Gaussian process (GP) model for learning dependent tasks...
Aggregated data is commonplace in areas such as epidemiology and demography. For example, census dat...
Multi-task Gaussian process (MTGP) is a well-known non-parametric Bayesian model for learning correl...