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Task Affinity with Maximum Bipartite Matching in Few-Shot Learning

Publication ,  Journal Article
Le, CP; Dong, J; Soltani, M; Tarokh, V
October 5, 2021

We propose an asymmetric affinity score for representing the complexity of utilizing the knowledge of one task for learning another one. Our method is based on the maximum bipartite matching algorithm and utilizes the Fisher Information matrix. We provide theoretical analyses demonstrating that the proposed score is mathematically well-defined, and subsequently use the affinity score to propose a novel algorithm for the few-shot learning problem. In particular, using this score, we find relevant training data labels to the test data and leverage the discovered relevant data for episodically fine-tuning a few-shot model. Results on various few-shot benchmark datasets demonstrate the efficacy of the proposed approach by improving the classification accuracy over the state-of-the-art methods even when using smaller models.

Duke Scholars

Publication Date

October 5, 2021
 

Citation

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Le, C. P., Dong, J., Soltani, M., & Tarokh, V. (2021). Task Affinity with Maximum Bipartite Matching in Few-Shot Learning.
Le, Cat P., Juncheng Dong, Mohammadreza Soltani, and Vahid Tarokh. “Task Affinity with Maximum Bipartite Matching in Few-Shot Learning,” October 5, 2021.
Le CP, Dong J, Soltani M, Tarokh V. Task Affinity with Maximum Bipartite Matching in Few-Shot Learning. 2021 Oct 5;
Le CP, Dong J, Soltani M, Tarokh V. Task Affinity with Maximum Bipartite Matching in Few-Shot Learning. 2021 Oct 5;

Publication Date

October 5, 2021