Non-negative Matrix Factorization (NMF) is an unsupervised technique that projects data into lower dimensional spaces, effectively reducing the number of features of a dataset while retaining the basis information necessary to reconstruct the original data. In this paper we present a semi-supervised NMF approach that reduces the computational cost while improving the accuracy of NMF-based models. The advantages inherent to the proposed method are supported by the results obtained in two well-known face recognition benchmarks.
Pengyu LiChristine TsengYaxuan ZhengJoyce A. ChewLongxiu HuangBenjamin JarmanDeanna Needell
Yanhua ChenManjeet RegeMing DongJing Hua
ChenYanhuaRegeManjeetDongmingHuajing
Xiang ZhangNaiyang GuanZhilong JiaXiaogang QiuZhigang Luo
Liping JingJian YuTieyong ZengYan Zhu