Sparse Compositional Metric Learning
Shi, Yuan (University of Southern California) | Bellet, Aurélien (University of Southern California) | Sha, Fei (University of Southern California)
We propose a new approach for metric learning by framing it as learning a sparse combination of locally discriminative metrics that are inexpensive to generate from the training data. This flexible framework allows us to naturally derive formulations for global, multi-task and local metric learning. The resulting algorithms have several advantages over existing methods in the literature: a much smaller number of parameters to be estimated and a principled way to generalize learned metrics to new testing data points. To analyze the approach theoretically, we derive a generalization bound that justifies the sparse combination. Empirically, we evaluate our algorithms on several datasets against state-of-the-art metric learning methods. The results are consistent with our theoretical findings and demonstrate the superiority of our approach in terms of classification performance and scalability.
Jul-14-2014
- Country:
- North America > United States > California > Los Angeles County > Los Angeles (0.14)
- Industry:
- Technology: