Your browser does not support JavaScript!
http://iet.metastore.ingenta.com
1887

access icon free Listwise approach based on the cross-correntropy for learning to rank

The problem of learning to rank is addressed and a novel listwise approach by taking document retrieval as an example is proposed. It first introduces the concept of cross-correntropy into learning to rank and then proposes the listwise loss function based on the cross-correntropy between the ranking list given by the label and the one predicted by training model. The use of the cross-correntropy loss leads to the development of the listwise approach called ListCCE, which employs the gradient descent algorithm to train a neural network model. Experimental results tested on publicly available data sets show that the proposed approach performs better than some existing approaches.

References

    1. 1)
    2. 2)
    3. 3)
      • 5. Xia, F., Liu, T.Y., Wang, J., et al: ‘Listwise approach to learning to rank: theory and algorithm’. Proc. Int. Conf. Machine Learning, (ICML), Helsinki, Finland, July 2008, pp. 11921199.
    4. 4)
      • 4. Cao, Z., Qin, T., Liu, T.Y., et al: ‘Learning to rank: from pairwise approach to listwise approach’. Proc. Int. Conf. Machine Learning, (ICML), Corvalis, OR, USA, June 2007, pp. 129136.
    5. 5)
      • 2. Li, P., Wu, Q., Burges, C.J.: ‘Mcrank: learning to rank using multiple classification and gradient boosting’. Proc. Annual Conf. Neural Information Processing Systems, (NIPS), Vancouver, Canada, December 2008, pp. 897904.
    6. 6)
    7. 7)
      • 7. https://www.microsoft.com/en-us/research/project/letor-learning-rank-information-retrieval/, accessed June 2018.
http://iet.metastore.ingenta.com/content/journals/10.1049/el.2018.0815
Loading

Related content

content/journals/10.1049/el.2018.0815
pub_keyword,iet_inspecKeyword,pub_concept
6
6
Loading
This is a required field
Please enter a valid email address