We investigate the possibility to apply a known machine learning algorithm of Q-learning in the domain of a Virtual Learning Environment (VLE). It is important in this problem domain to have algorithms that learn their optimal values in a rather short time expressed in terms of the iteration number. The problem domain is a VLE in which an agent plays a role of the teacher. With time it moves to different states and makes decisions which regarding action to choose for moving from current state to the next state. Some actions taken are more efficient than others. The transition process through the set of states ends in a final (goal) state, one which provides the agent with the largest benefit possible. The best course of action is to reach t...
Understanding the power and limitations of quantum access to data in machine learning tasks is primo...
Because reinforcement learning does not require teacher signals, it can continuously improve its cog...
We consider the problem of model-free reinforcement learning in the Markovian decision processes (MD...
We investigate the possibility to apply a known machine learning algorithm of Q-learning in the doma...
Suppose there exist a Virtual Learning Environment in which agent plays a role of the teacher. With ...
Q-learning (Watkins, 1989) is a simple way for agents to learn how to act optimally in controlled Ma...
Reinforcement learning is a machine learning method, which is an unsupervised one which situations a...
© ACM 2013. This is the author's version of the work. It is posted here by permission of ACM for you...
Master of Science in Computer Science, University of KwaZulu-Natal, Westville, 2017.Intelligent cogn...
International audienceRobot learning is a challenging – and somewhat unique – research domain. If a...
We demonstrate how Virtual Reality can explain the basic concepts of Reinforcement Learning through ...
Quantum machine learning (QML) has been identified as one of the key fields that could reap advantag...
© 2016 The Authors and IOS Press. Q-learning associates states and actions of a Markov Decision Proc...
Abstract. Q-Learning is an off-policy algorithm for reinforcement learning, that can be used to find...
We present an approach to solving the reinforcement learning problem in which agents are provided wi...
Understanding the power and limitations of quantum access to data in machine learning tasks is primo...
Because reinforcement learning does not require teacher signals, it can continuously improve its cog...
We consider the problem of model-free reinforcement learning in the Markovian decision processes (MD...
We investigate the possibility to apply a known machine learning algorithm of Q-learning in the doma...
Suppose there exist a Virtual Learning Environment in which agent plays a role of the teacher. With ...
Q-learning (Watkins, 1989) is a simple way for agents to learn how to act optimally in controlled Ma...
Reinforcement learning is a machine learning method, which is an unsupervised one which situations a...
© ACM 2013. This is the author's version of the work. It is posted here by permission of ACM for you...
Master of Science in Computer Science, University of KwaZulu-Natal, Westville, 2017.Intelligent cogn...
International audienceRobot learning is a challenging – and somewhat unique – research domain. If a...
We demonstrate how Virtual Reality can explain the basic concepts of Reinforcement Learning through ...
Quantum machine learning (QML) has been identified as one of the key fields that could reap advantag...
© 2016 The Authors and IOS Press. Q-learning associates states and actions of a Markov Decision Proc...
Abstract. Q-Learning is an off-policy algorithm for reinforcement learning, that can be used to find...
We present an approach to solving the reinforcement learning problem in which agents are provided wi...
Understanding the power and limitations of quantum access to data in machine learning tasks is primo...
Because reinforcement learning does not require teacher signals, it can continuously improve its cog...
We consider the problem of model-free reinforcement learning in the Markovian decision processes (MD...