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MONAS: Multi-Objective Neural Architecture Search using Reinforcement Learning

27 June 2018
Chi-Hung Hsu
Shu-Huan Chang
Jhao-Hong Liang
Hsin-Ping Chou
Chun-Hao Liu
Shih-Chieh Chang
Jia-Yu Pan
Yu-Ting Chen
Wei Wei
Da-Cheng Juan
ArXiv (abs)PDFHTML
Abstract

Recent studies on neural architecture search have shown that automatically designed neural networks perform as good as expert-crafted architectures. While most existing works aim at finding architectures that optimize the prediction accuracy, these architectures may have complexity and is therefore not suitable being deployed on certain computing environment (e.g., with limited power budgets). We propose MONAS, a framework for Multi-Objective Neural Architectural Search that employs reward functions considering both prediction accuracy and other important objectives (e.g., power consumption) when searching for neural network architectures. Experimental results showed that, compared to the state-ofthe-arts, models found by MONAS achieve comparable or better classification accuracy on computer vision applications, while satisfying the additional objectives such as peak power.

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