Joint optimization for consistent multiple graph matching
Junchi Yan, Yu Tian, et al.
ICCV 2013
In this brief, we propose a novel multilabel learning framework, called multilabel self-paced learning, in an attempt to incorporate the SPL scheme into the regime of multilabel learning. Specifically, we first propose a new multilabel learning formulation by introducing a self-paced function as a regularizer, so as to simultaneously prioritize label learning tasks and instances in each iteration. Considering that different multilabel learning scenarios often need different self-paced schemes during learning, we thus provide a general way to find the desired self-paced functions. To the best of our knowledge, this is the first work to study multilabel learning by jointly taking into consideration the complexities of both training instances and labels. Experimental results on four publicly available data sets suggest the effectiveness of our approach, compared with the state-of-the-art methods.
Junchi Yan, Yu Tian, et al.
ICCV 2013
Yuanyuan Ding, Junchi Yan, et al.
PRAI 2022
Junchi Yan, Chunhua Tian, et al.
SOLI 2012
Jinfeng Yi, Qi Lei, et al.
Big Data 2018