In transfer learning, we aim to improve the predictive modeling of a target output by using the knowledge from some related source outputs. In real-world applications, the data from the target domain is often precious and hard to obtain, while the data from source domains is plentiful. Thus, since the complexity of Gaussian process based multi-task/transfer learning approaches grows cubically with the total number of source+ target observations, the method becomes increasingly impractical for large () source data inputs even with a small amount of target data. In order to scale known transfer Gaussian processes to large-scale source datasets, we propose an efficient aggregation model in this paper, which combines the predictions from distri...
Learning in real-time applications, e.g., online approximation of the inverse dy-namics model for mo...
This paper presents novel Gaussian process decentralized data fusion algorithms exploiting the notio...
Learning from small number of examples is a challenging problem in machine learning. An effective wa...
In transfer learning, we aim to improve the predictive modeling of a target output by using the know...
Transfer Learning is an emerging framework for learning from data that aims at intelligently transf...
Transfer learning aims at reusing the knowledge in some source tasks to improve the learning of a ta...
Abstract. The expressive power of Gaussian process (GP) models comes at a cost of poor scalability i...
In this paper we investigate multi-task learning in the context of Gaussian Pro-cesses (GP). We prop...
We introduce the collaborative multi-output Gaussian process (GP) model for learning dependent tasks...
This thesis was submitted for the award of Doctor of Philosophy and was awarded by Brunel University...
We explore ways to scale Gaussian processes (GP) to large datasets. Two methods with different theor...
We explore ways to scale Gaussian processes (GP) to large datasets. Two methods with different theor...
We propose a practical and scalable Gaussian process model for large-scale nonlinear probabilistic r...
Learning in real-time applications, e.g., online approximation of the inverse dynamics model for mod...
Gaussian processes (GPs) are widely used in the Bayesian approach to supervised learning. Their abil...
Learning in real-time applications, e.g., online approximation of the inverse dy-namics model for mo...
This paper presents novel Gaussian process decentralized data fusion algorithms exploiting the notio...
Learning from small number of examples is a challenging problem in machine learning. An effective wa...
In transfer learning, we aim to improve the predictive modeling of a target output by using the know...
Transfer Learning is an emerging framework for learning from data that aims at intelligently transf...
Transfer learning aims at reusing the knowledge in some source tasks to improve the learning of a ta...
Abstract. The expressive power of Gaussian process (GP) models comes at a cost of poor scalability i...
In this paper we investigate multi-task learning in the context of Gaussian Pro-cesses (GP). We prop...
We introduce the collaborative multi-output Gaussian process (GP) model for learning dependent tasks...
This thesis was submitted for the award of Doctor of Philosophy and was awarded by Brunel University...
We explore ways to scale Gaussian processes (GP) to large datasets. Two methods with different theor...
We explore ways to scale Gaussian processes (GP) to large datasets. Two methods with different theor...
We propose a practical and scalable Gaussian process model for large-scale nonlinear probabilistic r...
Learning in real-time applications, e.g., online approximation of the inverse dynamics model for mod...
Gaussian processes (GPs) are widely used in the Bayesian approach to supervised learning. Their abil...
Learning in real-time applications, e.g., online approximation of the inverse dy-namics model for mo...
This paper presents novel Gaussian process decentralized data fusion algorithms exploiting the notio...
Learning from small number of examples is a challenging problem in machine learning. An effective wa...