We present three related ways of using Transfer Learning to improve feature selection. The three methods address different problems, and hence share different kinds of information between tasks or feature classes, but all three are based on the information theoretic Minimum Description Length (MDL) principle and share the same underlying Bayesian interpretation. The first method, MIC, applies when predictive models are to be built simultaneously for multiple tasks (``simultaneous transfer'') that share the same set of features. MIC allows each feature to be added to none, some, or all of the task models and is most beneficial for selecting a small set of predictive features from a large pool of features, as is common in genomic and biologic...
Transfer learning has been found helpful at enhancing the target domain's learning process by tr...
When training and testing data are drawn from different distributions, most statis-tical models need...
Transfer learning is a new machine learning and data mining framework that allows the training and t...
The aim of transfer learning is to reduce sample complexity required to solve a learning task by usi...
The need for efficient data use grows in machine learning algorithm for dataset with larger feature ...
Learning an appropriate feature representation across source and target domains is one of the most e...
Knowledge transfer from previously learned tasks to a new task is a fundamental com-ponent of human ...
Transfer learning transfers knowledge across domains to improve the learning performance. Since feat...
Transfer learning is a successful technique that significantly improves machine learning algorithms ...
Our work focuses on inductive transfer learning, a setting in which one assumes that both source and...
Transfer learning is a new machine learning and data mining framework that allows the training and t...
Abstract. We study the binary transfer learning problem, focusing on how to select sources from a la...
I will present and discuss methods and applications of transfer learning in computational biology. H...
The problem of transfer learning, where information gained in one learning task is used to improve p...
This paper presents a novel feature selection method for classification of high dimensional data, su...
Transfer learning has been found helpful at enhancing the target domain's learning process by tr...
When training and testing data are drawn from different distributions, most statis-tical models need...
Transfer learning is a new machine learning and data mining framework that allows the training and t...
The aim of transfer learning is to reduce sample complexity required to solve a learning task by usi...
The need for efficient data use grows in machine learning algorithm for dataset with larger feature ...
Learning an appropriate feature representation across source and target domains is one of the most e...
Knowledge transfer from previously learned tasks to a new task is a fundamental com-ponent of human ...
Transfer learning transfers knowledge across domains to improve the learning performance. Since feat...
Transfer learning is a successful technique that significantly improves machine learning algorithms ...
Our work focuses on inductive transfer learning, a setting in which one assumes that both source and...
Transfer learning is a new machine learning and data mining framework that allows the training and t...
Abstract. We study the binary transfer learning problem, focusing on how to select sources from a la...
I will present and discuss methods and applications of transfer learning in computational biology. H...
The problem of transfer learning, where information gained in one learning task is used to improve p...
This paper presents a novel feature selection method for classification of high dimensional data, su...
Transfer learning has been found helpful at enhancing the target domain's learning process by tr...
When training and testing data are drawn from different distributions, most statis-tical models need...
Transfer learning is a new machine learning and data mining framework that allows the training and t...