FISH-MML: Fisher-HSIC Multi-View Metric Learning

@inproceedings{Zhang2018FISHMMLFM,
  title={FISH-MML: Fisher-HSIC Multi-View Metric Learning},
  author={Changqing Zhang and Yeqing Liu and Yue Liu and Qinghua Hu and Xinwang Liu and Peng Fei Zhu},
  booktitle={IJCAI},
  year={2018}
}
This work presents a simple yet effective model for multi-view metric learning, which aims to improve the classification of data with multiple views, e.g., multiple modalities or multiple types of features. The intrinsic correlation, different views describing same set of instances, makes it possible and necessary to jointly learn multiple metrics of different views, accordingly, we propose a multi-view metric learning method based on Fisher discriminant analysis (FDA) and Hilbert-Schmidt… 

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