Learning to Optimize in Swarms
Cao, Yue, Chen, Tianlong, Wang, Zhangyang, Shen, Yang
Learning to optimize has emerged as a powerful framework for various optimization and machine learning tasks. Current such "meta-optimizers" often learn in the space of continuous optimization algorithms that are point-based and uncertainty-unaware. To overcome the limitations, we propose a meta-optimizer that learns in the algorithmic space of both point-based and population-based optimization algorithms. The meta-optimizer targets at a meta-loss function consisting of both cumulative regret and entropy. Specifically, we learn and interpret the update formula through a population of LSTMs embedded with sample- and feature-level attentions. Meanwhile, we estimate the posterior directly over the global optimum and use an uncertainty measure to help guide the learning process. Empirical results over non-convex test functions and the protein-docking application demonstrate that this new meta-optimizer outperforms existing competitors.
Nov-16-2019
- Country:
- South America > Chile (0.04)
- North America > United States
- Texas > Brazos County > College Station (0.14)
- Genre:
- Research Report (1.00)
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- Technology: