| Literature DB >> 27019767 |
Abstract
Transfer learning aims to improve performance on a target task by utilizing previous knowledge learned from source tasks. In this paper we introduce a novel heterogeneous transfer learning technique, Feature- Space Remapping (FSR), which transfers knowledge between domains with different feature spaces. This is accomplished without requiring typical feature-feature, feature instance, or instance-instance co-occurrence data. Instead we relate features in different feature-spaces through the construction of meta-features. We show how these techniques can utilize multiple source datasets to construct an ensemble learner which further improves performance. We apply FSR to an activity recognition problem and a document classification problem. The ensemble technique is able to outperform all other baselines and even performs better than a classifier trained using a large amount of labeled data in the target domain. These problems are especially difficult because in addition to having different feature-spaces, the marginal probability distributions and the class labels are also different. This work extends the state of the art in transfer learning by considering large transfer across dramatically different spaces.Entities:
Keywords: Activity Recognition; Domain Adaption; Heterogeneous Transfer Learning; Text Classification
Year: 2015 PMID: 27019767 PMCID: PMC4804893 DOI: 10.1145/2629528
Source DB: PubMed Journal: ACM Trans Intell Syst Technol ISSN: 2157-6904 Impact factor: 4.654