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Reinforcement Learning: A Survey

TLDR
A survey of reinforcement learning from a computer science perspective can be found in this article, where the authors discuss the central issues of RL, including trading off exploration and exploitation, establishing the foundations of RL via Markov decision theory, learning from delayed reinforcement, constructing empirical models to accelerate learning, making use of generalization and hierarchy, and coping with hidden state.
Abstract: 
This paper surveys the field of reinforcement learning from a computer-science perspective. It is written to be accessible to researchers familiar with machine learning. Both the historical basis of the field and a broad selection of current work are summarized. Reinforcement learning is the problem faced by an agent that learns behavior through trial-and-error interactions with a dynamic environment. The work described here has a resemblance to work in psychology, but differs considerably in the details and in the use of the word ``reinforcement.'' The paper discusses central issues of reinforcement learning, including trading off exploration and exploitation, establishing the foundations of the field via Markov decision theory, learning from delayed reinforcement, constructing empirical models to accelerate learning, making use of generalization and hierarchy, and coping with hidden state. It concludes with a survey of some implemented systems and an assessment of the practical utility of current methods for reinforcement learning.

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Policy-contingent abstraction for robust robot control

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Reinforcement learning approach for coordinated passenger inflow control of urban rail transit in peak hours

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A Survey on Applications of Model-Free Strategy Learning in Cognitive Wireless Networks

TL;DR: Model-free learning has been considered as one key implementation approach to adaptive, self-organized network control in cognitive wireless networks as discussed by the authors, which enables the decision-making entities to adapt their behaviors based on the reinforcement from their interaction with the environment and (implicitly) build their understanding of the system from scratch through trial-and-error.
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Multi-agent reinforcement learning: weighting and partitioning

TL;DR: The article presents some ideas regarding weighting of multiple agents and extends them into partitioning an input/state space into multiple regions with differential weighting to reduce the learning complexity of agents (and their function approximators) and thus to facilitate the learning overall.
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Treating epilepsy via adaptive neurostimulation: a reinforcement learning approach.

TL;DR: This work presents an algorithm which is able to automatically learn an adaptive neurostimulation strategy directly from labeled training data acquired from animal brain tissues, and highlights the crucial role that modern machine learning techniques can play in the optimization of treatment strategies for patients with chronic disorders such as epilepsy.
References
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