The related problems of transfer learning and multitask learning have attracted significant attention, generating a rich literature of models and algorithms. Yet most existing approaches are studied in an offline fashion, implicitly assuming that data from different domains are given as a batch. Such an assumption is not valid in many real-world applications where data samples arrive sequentially, and one wants a good learner even from few examples. The goal of our work is to provide sound extensions to existing transfer and multitask learning algorithms such that they can be used in an anytime setting. More specifically, we propose two novel online boosting algorithms, one for transfer learning and one for multitask learning, both design...
Transfer learning allows leveraging the knowledge of source domains, available a priori, to help tra...
Abstract. Instance-based transfer learning methods utilize labeled ex-amples from one domain to impr...
Abstract. We present a novel boosting algorithm where temporal consistency is addressed in a short-t...
This paper presents a new learning algorithm for multitask pattern recognition (MTPR) problems. We c...
This paper presents a new learning algorithm for multitask pattern recognition (MTPR) problems. We c...
This paper presents a new learning algorithm for multitask pattern recognition (MTPR) problems. We c...
This paper presents a new learning algorithm for multitask pattern recognition (MTPR) problems. We c...
This paper presents a new learning algorithm for multitask pattern recognition (MTPR) problems. We c...
Prognosis, such as predicting mortality, is common in medicine. When confronted with small numbers o...
The human brain is one of the most complicated biological systems in the world. The brain activities...
Open ended learning is a dynamic process based on the continuous analysis of new data, guided by pas...
Multitask Learning is an inductive transfer method that improves generalization by using domain info...
By exploiting the duality between boosting and online learning, we present a boosting framework whic...
The success of transfer learning on a target task is highly dependent on the selected source data. I...
By exploiting the duality between boosting and online learning, we present a boosting framework whic...
Transfer learning allows leveraging the knowledge of source domains, available a priori, to help tra...
Abstract. Instance-based transfer learning methods utilize labeled ex-amples from one domain to impr...
Abstract. We present a novel boosting algorithm where temporal consistency is addressed in a short-t...
This paper presents a new learning algorithm for multitask pattern recognition (MTPR) problems. We c...
This paper presents a new learning algorithm for multitask pattern recognition (MTPR) problems. We c...
This paper presents a new learning algorithm for multitask pattern recognition (MTPR) problems. We c...
This paper presents a new learning algorithm for multitask pattern recognition (MTPR) problems. We c...
This paper presents a new learning algorithm for multitask pattern recognition (MTPR) problems. We c...
Prognosis, such as predicting mortality, is common in medicine. When confronted with small numbers o...
The human brain is one of the most complicated biological systems in the world. The brain activities...
Open ended learning is a dynamic process based on the continuous analysis of new data, guided by pas...
Multitask Learning is an inductive transfer method that improves generalization by using domain info...
By exploiting the duality between boosting and online learning, we present a boosting framework whic...
The success of transfer learning on a target task is highly dependent on the selected source data. I...
By exploiting the duality between boosting and online learning, we present a boosting framework whic...
Transfer learning allows leveraging the knowledge of source domains, available a priori, to help tra...
Abstract. Instance-based transfer learning methods utilize labeled ex-amples from one domain to impr...
Abstract. We present a novel boosting algorithm where temporal consistency is addressed in a short-t...