5 years ago

Multi-source adaptation embedding with feature selection by exploiting correlation information

While feature selection has recently received much research attention, less or limited effort has been made on improving the performance of feature selection by leveraging the shared knowledge from other related domains. Besides, multi-source adaptation embedding by exploiting the correlation information among domain features and distributions has long been largely unaddressed. To this end, we propose in this paper a robust M ulti-source A daptation E mbedding framework with F eature S election (MAEFS) by exploiting the correlation information via joint l 2, 1-norm and trace-norm regularization, and apply it to cross-domain visual recognition. Specifically, to uncover cross-domain invariant subspaces by minimizing the distribution discrepancy between source and target domains, instead of evaluating the importance of each feature individually, MAEFS selects features in a collaborated mode for considering the correlation information among features. Furthermore, multiple feature selection functions for different source adaptation objects are simultaneously learned in a joint framework, which enables MAEFS to utilize the correlated knowledge among multiple source domains via trace-norm regularization, thus facilitating domain invariant embedding. Besides, by employing graph embedding and sparse regression scheme via l 2, 1-norm minimization, MAEFS can preserve the original geometrical structure information as well as be robust to some noises or outliers existed in domains. Finally, an efficient iterative algorithm is proposed to optimize MAEFS, whose convergence is theoretically guaranteed. Comprehensive experimental evidence on a large number of visual datasets verifies the effectiveness of the proposed framework.

Publisher URL: www.sciencedirect.com/science

DOI: S0950705117305889

You might also like
Discover & Discuss Important Research

Keeping up-to-date with research can feel impossible, with papers being published faster than you'll ever be able to read them. That's where Researcher comes in: we're simplifying discovery and making important discussions happen. With over 19,000 sources, including peer-reviewed journals, preprints, blogs, universities, podcasts and Live events across 10 research areas, you'll never miss what's important to you. It's like social media, but better. Oh, and we should mention - it's free.

  • Download from Google Play
  • Download from App Store
  • Download from AppInChina

Researcher displays publicly available abstracts and doesn’t host any full article content. If the content is open access, we will direct clicks from the abstracts to the publisher website and display the PDF copy on our platform. Clicks to view the full text will be directed to the publisher website, where only users with subscriptions or access through their institution are able to view the full article.