Transfer Hashing With Privileged Information | Awesome Learning to Hash Add your paper to Learning2Hash

Transfer Hashing With Privileged Information

Zhou Joey Tianyi, Xu Xinxing, Pan Sinno Jialin, Tsang Ivor W., Qin Zheng, Goh Rick Siow Mong. Arxiv 2016

[Paper]    
ARXIV Quantisation

Most existing learning to hash methods assume that there are sufficient data, either labeled or unlabeled, on the domain of interest (i.e., the target domain) for training. However, this assumption cannot be satisfied in some real-world applications. To address this data sparsity issue in hashing, inspired by transfer learning, we propose a new framework named Transfer Hashing with Privileged Information (THPI). Specifically, we extend the standard learning to hash method, Iterative Quantization (ITQ), in a transfer learning manner, namely ITQ+. In ITQ+, a new slack function is learned from auxiliary data to approximate the quantization error in ITQ. We developed an alternating optimization approach to solve the resultant optimization problem for ITQ+. We further extend ITQ+ to LapITQ+ by utilizing the geometry structure among the auxiliary data for learning more precise binary codes in the target domain. Extensive experiments on several benchmark datasets verify the effectiveness of our proposed approaches through comparisons with several state-of-the-art baselines.

Similar Work