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Improved Automated Machine Learning from Transfer Learning

Publication ,  Journal Article
Le, CP; Soltani, M; Ravier, R; Tarokh, V
February 27, 2021

In this paper, we propose a neural architecture search framework based on a similarity measure between some baseline tasks and a target task. We first define the notion of the task similarity based on the log-determinant of the Fisher Information matrix. Next, we compute the task similarity from each of the baseline tasks to the target task. By utilizing the relation between a target and a set of learned baseline tasks, the search space of architectures for the target task can be significantly reduced, making the discovery of the best candidates in the set of possible architectures tractable and efficient, in terms of GPU days. This method eliminates the requirement for training the networks from scratch for a given target task as well as introducing the bias in the initialization of the search space from the human domain.

Duke Scholars

Publication Date

February 27, 2021
 

Citation

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Le, C. P., Soltani, M., Ravier, R., & Tarokh, V. (2021). Improved Automated Machine Learning from Transfer Learning.
Le, Cat P., Mohammadreza Soltani, Robert Ravier, and Vahid Tarokh. “Improved Automated Machine Learning from Transfer Learning,” February 27, 2021.
Le CP, Soltani M, Ravier R, Tarokh V. Improved Automated Machine Learning from Transfer Learning. 2021 Feb 27;
Le CP, Soltani M, Ravier R, Tarokh V. Improved Automated Machine Learning from Transfer Learning. 2021 Feb 27;

Publication Date

February 27, 2021