Searched for: subject%3A%22interaction%22
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Li, Guangliang (author), Dibeklioğlu, Hamdi (author), Whiteson, Shimon (author), Hung, H.S. (author)
Interactive reinforcement learning provides a way for agents to learn to solve tasks from evaluative feedback provided by a human user. Previous research showed that humans give copious feedback early in training but very sparsely thereafter. In this article, we investigate the potential of agent learning from trainers’ facial expressions via...
journal article 2020
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Li, Guangliang (author), Whiteson, Shimon (author), Bradley Knox, W (author), Hung, H.S. (author)
Learning from rewards generated by a human trainer observing an agent in action has been proven to be a powerful method for teaching autonomous agents to perform challenging tasks, especially for those non-technical users. Since the efficacy of this approach depends critically on the reward the trainer provides, we consider how the...
journal article 2018