Qian ZhaoDeyu MengLu JiangQi XieZongben XuAlexander G. Hauptmann
Matrix factorization (MF) has been attracting much attention due to its wide applications. However, since MF models are generally non-convex, most of the existing methods are easily stuck into bad local minima, especially in the presence of outliers and missing data. To alleviate this deficiency, in this study we present a new MF learning methodology by gradually including matrix elements into MF training from easy to complex. This corresponds to a recently proposed learning fashion called self-paced learning (SPL), which has been demonstrated to be beneficial in avoiding bad local minima. We also generalize the conventional binary (hard) weighting scheme for SPL to a more effective real-valued (soft) weighting manner. The effectiveness of the proposed self-paced MF method is substantiated by a series of experiments on synthetic, structure from motion and background subtraction data.
Yan ZhangHaoyu WangDefu LianIvor W. TsangHongzhi YinGuowu Yang
Zhen LiuXiaodong FengYecheng WangWenbo Zuo
Jiangtao PengYicong ZhouWeiwei SunQian DuLekang Xia