Q-Learning Algorithms: A Comprehensive Classification and Applications
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Abstract
Q-learning is arguably one of the most applied representative reinforcement learning approaches and one of the off-policy strategies. Since the emergence of Q-learning, many studies have described its uses in reinforcement learning and artificial intelligence problems. However, there is an information gap as to how these powerful algorithms can be leveraged and incorporated into general artificial intelligence workflow. Early Q-learning algorithms were unsatisfactory in several aspects and covered a narrow range of applications. It has also been observed that sometimes, this rather powerful algorithm learns unrealistically and overestimates the action values hence abating the overall performance. Recently with…
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Keywords
- Artificial intelligence
- Computer science
- Machine learning
- Reinforcement learning
- Instance-based learning
- Learning classifier system
- Leverage (statistics)
- Computational learning theory
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