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Survey methodology / Machine learning algorithms / Sampling techniques / Artificial intelligence / Sampling / Support vector machine / Reinforcement learning / Simple random sample / Learning / Machine learning / Cognition
Date: 2016-01-04 03:15:09
Survey methodology
Machine learning algorithms
Sampling techniques
Artificial intelligence
Sampling
Support vector machine
Reinforcement learning
Simple random sample
Learning
Machine learning
Cognition

Self-Practice Imitation Learning from Weak Policy Qing Da, Yang Yu, and Zhi-Hua Zhou National Key Laboratory for Novel Software Technology Nanjing University, Nanjing, China {daq,yuy,zhouzh}@lamda.nju.edu.cn

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