Transfer learning has received a lot of attention in the machine learning community over the last years, and several effective algorithms have been developed. However, relatively little is known about their theoretical properties, especially in the setting of lifelong learning, where the goal is to transfer information to tasks for which no data have been observed so far. In this work we study lifelong learning from a theoretical perspective. Our main result is a PAC-Bayesian generalization bound that offers a unified view on existing paradigms for transfer learning, such as the transfer of parameters or the transfer of low-dimensional representations. We also use the bound to derive two principled life-long learning algorithms, and we show...
The first two parts of the thesis study pseudo-Bayesian estimation for the problem of matrix complet...
All authors contributed equally to this work. We propose a PAC-Bayesian analysis of the transductive...
Better understanding of the potential benefits of information transfer and representation learning i...
Transfer learning has received a lot of attention in the machine learning community over the last ye...
Transfer learning has received a lot of attention in the machine learning community over the last ye...
Transfer learning has received a lot of attention in the machine learning community over the last ye...
In this work we aim at extending the theoretical foundations of lifelong learning. Previous work ana...
We consider the problem of knowledge transfer when an agent is facing a series of Reinforcement Lear...
A major challenge in today's world is the Big Data problem, which manifests itself in Web and Mobile...
The aim of transfer learning is to reduce sample complexity required to solve a learning task by usi...
In transfer learning the aim is to solve new learning tasks using fewer examples by using informatio...
Lifelong learning is the problem of learning multiple consecutive tasks in a sequential manner, wher...
Since the deep learning revolution, a general trend in machine learning literature has been that lar...
for public release and sale; its distribution is unliiited. Most research on machine learning has fo...
AbstractIn transfer learning the aim is to solve new learning tasks using fewer examples by using in...
The first two parts of the thesis study pseudo-Bayesian estimation for the problem of matrix complet...
All authors contributed equally to this work. We propose a PAC-Bayesian analysis of the transductive...
Better understanding of the potential benefits of information transfer and representation learning i...
Transfer learning has received a lot of attention in the machine learning community over the last ye...
Transfer learning has received a lot of attention in the machine learning community over the last ye...
Transfer learning has received a lot of attention in the machine learning community over the last ye...
In this work we aim at extending the theoretical foundations of lifelong learning. Previous work ana...
We consider the problem of knowledge transfer when an agent is facing a series of Reinforcement Lear...
A major challenge in today's world is the Big Data problem, which manifests itself in Web and Mobile...
The aim of transfer learning is to reduce sample complexity required to solve a learning task by usi...
In transfer learning the aim is to solve new learning tasks using fewer examples by using informatio...
Lifelong learning is the problem of learning multiple consecutive tasks in a sequential manner, wher...
Since the deep learning revolution, a general trend in machine learning literature has been that lar...
for public release and sale; its distribution is unliiited. Most research on machine learning has fo...
AbstractIn transfer learning the aim is to solve new learning tasks using fewer examples by using in...
The first two parts of the thesis study pseudo-Bayesian estimation for the problem of matrix complet...
All authors contributed equally to this work. We propose a PAC-Bayesian analysis of the transductive...
Better understanding of the potential benefits of information transfer and representation learning i...