Self-Paced Multi-Label Learning with Diversity
Seyedi, Seyed Amjad, Ghodsi, S. Siamak, Akhlaghian, Fardin, Jalili, Mahdi, Moradi, Parham
The major challenge of learning from multi-label data has arisen from the overwhelming size of label space which makes this problem NP-hard. This problem can be alleviated by gradually involving easy to hard tags into the learning process. Besides, the utilization of a diversity maintenance approach avoids overfitting on a subset of easy labels. In this paper, we propose a self-paced multi-label learning with diversity (SPMLD) which aims to cover diverse labels with respect to its learning pace. In addition, the proposed framework is applied to an efficient correlation-based multi-label method. The non-convex objective function is optimized by an extension of the block coordinate descent algorithm. Empirical evaluations on real-world datasets with different dimensions of features and labels imply the effectiveness of the proposed predictive model.
Oct-8-2019
- Country:
- Oceania > Australia
- Asia > Middle East
- Iraq > Kurdistan Region (0.04)
- Iran > Kurdistan Province
- Sanandaj (0.04)
- Genre:
- Research Report > Experimental Study (0.47)
- Technology: