textIn several applications, scarcity of labeled data is a challenging problem that hinders the predictive capabilities of machine learning algorithms. Additionally, the distribution of the data changes over time, rendering models trained with older data less capable of discovering useful structure from the newly available data. Transfer learning is a convenient framework to overcome such problems where the learning of a model specific to a domain can benefit the learning of other models in other domains through either simultaneous training of domains or sequential transfer of knowledge from one domain to the others. This thesis explores the opportunities of knowledge transfer in the context of a few applications pertaining to object recogn...
Machine learning methods and algorithms working under the assumption of identically and independentl...
Since the deep learning revolution, a general trend in machine learning literature has been that lar...
Transfer learning is a new machine learning and data mining framework that allows the training and t...
In many machine learning applications, some assumptions are so prevalent as to be left unwritten: al...
abstract: Transfer learning refers to statistical machine learning methods that integrate the knowle...
In many domains data items are represented by vectors of counts; count data arises for example in bi...
International audienceWhen a statistical model is designed in a prediction purpose, a major assumpti...
In many domains data items are represented by vectors of counts: count data arises, for example, in ...
Knowledge transfer from previously learned tasks to a new task is a fundamental com-ponent of human ...
Latent variable models are powerful dimensionality reduction approaches in machine learning and patt...
The design and analysis of machine learning algorithms typically considers the problem of learning o...
Artificial intelligent and machine learning technologies have already achieved significant success i...
We present three related ways of using Transfer Learning to improve feature selection. The three met...
When humans learn new knowledge and skills, we can naturally transfer them to other domains. Along w...
People are able to take knowledge learned in one domainand apply it to an entirely different one. Fo...
Machine learning methods and algorithms working under the assumption of identically and independentl...
Since the deep learning revolution, a general trend in machine learning literature has been that lar...
Transfer learning is a new machine learning and data mining framework that allows the training and t...
In many machine learning applications, some assumptions are so prevalent as to be left unwritten: al...
abstract: Transfer learning refers to statistical machine learning methods that integrate the knowle...
In many domains data items are represented by vectors of counts; count data arises for example in bi...
International audienceWhen a statistical model is designed in a prediction purpose, a major assumpti...
In many domains data items are represented by vectors of counts: count data arises, for example, in ...
Knowledge transfer from previously learned tasks to a new task is a fundamental com-ponent of human ...
Latent variable models are powerful dimensionality reduction approaches in machine learning and patt...
The design and analysis of machine learning algorithms typically considers the problem of learning o...
Artificial intelligent and machine learning technologies have already achieved significant success i...
We present three related ways of using Transfer Learning to improve feature selection. The three met...
When humans learn new knowledge and skills, we can naturally transfer them to other domains. Along w...
People are able to take knowledge learned in one domainand apply it to an entirely different one. Fo...
Machine learning methods and algorithms working under the assumption of identically and independentl...
Since the deep learning revolution, a general trend in machine learning literature has been that lar...
Transfer learning is a new machine learning and data mining framework that allows the training and t...