What Makes Objects Similar: A Unified Multi-Metric Learning Approach

Ye, Han-Jia, Zhan, De-Chuan, Si, Xue-Min, Jiang, Yuan, Zhou, Zhi-Hua

Neural Information Processing Systems 

Linkages are essentially determined by similarity measures that may be derived from multiple perspectives. For example, spatial linkages are usually generated based on localities of heterogeneous data, whereas semantic linkages can come from various properties, such as different physical meanings behind social relations. Many existing metric learning models focus on spatial linkages, but leave the rich semantic factors unconsidered. Similarities based on these models are usually overdetermined on linkages. We propose a Unified Multi-Metric Learning (UM2L) framework to exploit multiple types of metrics.