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A Survey on Methods and Applications of Deep Reinforcement Learning
PhD Qualifying Examination
Title: "A Survey on Methods and Applications of Deep Reinforcement
Learning"
by
Mr. Siyi LI
Abstract:
While perception tasks such as visual image classification and object
detection play an important role in human intelligence, the more
sophisticated tasks built upon them that involve decision and planning
require an even higher level of intelligence. The past few years have seen
major advances in many low-level perceptual supervised learning problems
by using deep learning models. For higher-level tasks, however,
reinforcement learning offers a more powerful and flexible framework for
the general sequential decision making problem. While reinforcement
learning has achieved some successes in a variety of domains, their
applicability has previously been limited to domains with low-dimensional
state spaces. To derive efficient and powerful feature representations of
the environment, it is naturally desirable to incorporate deep learning to
the reinforcement learning domains, which we call deep reinforcement
learning. In this survey, we start from research on general reinforcement
learning methods. We then review the recent advances in deep reinforcement
learning, including both the methods and its applications on game playing
and robotics control. Finally, we discuss some possible research issues.
Date: Friday, 13 January 2017
Time: 3:00pm - 5:00pm
Venue: Room 3494
Lifts 25/26
Committee Members: Prof. Dit-Yan Yeung (Supervisor)
Dr. Raymond Wong (Chairperson)
Prof. James Kwok
Prof. Nevin Zhang
**** ALL are Welcome ****