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This book explores the combination of Reinforcement Learning and
Quantum Computing in the light of complex attacker-defender
scenarios. Reinforcement Learning has proven its capabilities in
different challenging optimization problems and is now an
established method in Operations Research. However, complex
attacker-defender scenarios have several characteristics that
challenge Reinforcement Learning algorithms, requiring enormous
computational power to obtain the optimal solution. The upcoming
field of Quantum Computing is a promising path for solving
computationally complex problems. Therefore, this work explores a
hybrid quantum approach to policy gradient methods in Reinforcement
Learning. It proposes a novel quantum REINFORCE algorithm that
enhances its classical counterpart by Quantum Variational Circuits.
The new algorithm is compared to classical algorithms regarding the
convergence speed and memory usage on several attacker-defender
scenarios with increasing complexity. In addition, to study its
applicability on today's NISQ hardware, the algorithm is evaluated
on IBM's quantum computers, which is accompanied by an in-depth
analysis of the advantages of Quantum Reinforcement Learning.
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