We introduce a novel Gaussian process based Bayesian model for asymmet-ric transfer learning. We adopt a two-layer feed-forward deep Gaussian process as the task learner of source and target domains. The first layer projects the data onto a separate non-linear manifold for each task. We perform knowledge transfer by projecting the target data also onto the source domain and linearly combin-ing its representations on the source and target domain manifolds. Our approach achieves the state-of-the-art in a benchmark real-world image categorization task, and improves on it in cross-tissue tumor detection from histopathology tissue slide images.
We propose a novel Bayesian nonparametricmethod to learn translation-invariant relationshipson non-E...
We consider the intersection of two research fields: transfer learning and statistics on manifolds. ...
When a series of problems are related, representations derived from learning earlier tasks may be us...
We introduce a novel Gaussian process based Bayesian model for asymmetric transfer learn-ing. We ado...
Transfer learning aims at reusing the knowledge in some source tasks to improve the learning of a ta...
Transfer learning considers related but distinct tasks defined on heterogenous domains and tries to ...
Transfer Learning is an emerging framework for learning from data that aims at intelligently transf...
Since the deep learning revolution, a general trend in machine learning literature has been that lar...
In transfer learning, we aim to improve the predictive modeling of a target output by using the know...
In transfer learning, we aim to improve the predictive modeling of a target output by using the know...
Abstract—Bayesian network structure learning algorithms with limited data are being used in domains ...
This thesis was submitted for the award of Doctor of Philosophy and was awarded by Brunel University...
Breast Cancer is the most common cancer in women and it's harming women's mental and physical health...
When a series of problems are related, representations derived fromlearning earlier tasks may be use...
Transfer learning allows us to exploit knowledge gained from one task to assist in solving another b...
We propose a novel Bayesian nonparametricmethod to learn translation-invariant relationshipson non-E...
We consider the intersection of two research fields: transfer learning and statistics on manifolds. ...
When a series of problems are related, representations derived from learning earlier tasks may be us...
We introduce a novel Gaussian process based Bayesian model for asymmetric transfer learn-ing. We ado...
Transfer learning aims at reusing the knowledge in some source tasks to improve the learning of a ta...
Transfer learning considers related but distinct tasks defined on heterogenous domains and tries to ...
Transfer Learning is an emerging framework for learning from data that aims at intelligently transf...
Since the deep learning revolution, a general trend in machine learning literature has been that lar...
In transfer learning, we aim to improve the predictive modeling of a target output by using the know...
In transfer learning, we aim to improve the predictive modeling of a target output by using the know...
Abstract—Bayesian network structure learning algorithms with limited data are being used in domains ...
This thesis was submitted for the award of Doctor of Philosophy and was awarded by Brunel University...
Breast Cancer is the most common cancer in women and it's harming women's mental and physical health...
When a series of problems are related, representations derived fromlearning earlier tasks may be use...
Transfer learning allows us to exploit knowledge gained from one task to assist in solving another b...
We propose a novel Bayesian nonparametricmethod to learn translation-invariant relationshipson non-E...
We consider the intersection of two research fields: transfer learning and statistics on manifolds. ...
When a series of problems are related, representations derived from learning earlier tasks may be us...