Abstract. One of the most important issues in educational systems is to define effective teaching policies according to the students learning characteristics. This paper proposes to use the Reinforcement Learning (RL) model in order for the system to learn automatically sequence of contents to be shown to the stu-dent, based only in interactions with other students, like human tutors do. An initial clustering of the students according to their learning characteristics is proposed in order the system adapts better to each student. Experiments show convergence to optimal teaching tactics for different clusters of simulated stu-dents, concluding that the convergence is faster when the system tactics have been previously initialised.
One important function of e-learning systems is to sequence learning material for students. E-learni...
Reinforcement learning (RL) is a popular paradigm for addressing sequential decision tasks in which ...
Three have been the main contributions of this thesis. First, a platform for the deployment of Intel...
Proceeding of: Algorithmic learning theory, 15th International Conference on Algorithmic Learning Th...
One of the most important issues in Adaptive and Intelligent Educational Systems (AIES) is to define...
One of the most important issues in Adaptive and Intelligent Educational Systems (AIES) is to define...
Abstract One of the most important issues in Adaptive and Intelligent Educational Systems (AIES) is ...
In this paper, we present an algorithm for reasoning about the sequencing of content for students in...
This paper studies the use of Reinforcement Learning (RL) policies for optimizing the sequencing of...
In an adaptive and intelligent educational system (AIES), the process of learning pedagogical polici...
For many forms of e-learning environments, the system's behavior can be viewed as a sequential decis...
Proceedings of: 2nd Intemational Conference on Multimedia and Infonnation & Communication Technologi...
The definition of effective pedagogical strategies for coaching and tutoring students according to t...
Curriculum reinforcement learning (CRL) allows solving complex tasks by generating a tailored sequen...
One important function of e-learning systems is to sequence learning material for students. E-learni...
Reinforcement learning (RL) is a popular paradigm for addressing sequential decision tasks in which ...
Three have been the main contributions of this thesis. First, a platform for the deployment of Intel...
Proceeding of: Algorithmic learning theory, 15th International Conference on Algorithmic Learning Th...
One of the most important issues in Adaptive and Intelligent Educational Systems (AIES) is to define...
One of the most important issues in Adaptive and Intelligent Educational Systems (AIES) is to define...
Abstract One of the most important issues in Adaptive and Intelligent Educational Systems (AIES) is ...
In this paper, we present an algorithm for reasoning about the sequencing of content for students in...
This paper studies the use of Reinforcement Learning (RL) policies for optimizing the sequencing of...
In an adaptive and intelligent educational system (AIES), the process of learning pedagogical polici...
For many forms of e-learning environments, the system's behavior can be viewed as a sequential decis...
Proceedings of: 2nd Intemational Conference on Multimedia and Infonnation & Communication Technologi...
The definition of effective pedagogical strategies for coaching and tutoring students according to t...
Curriculum reinforcement learning (CRL) allows solving complex tasks by generating a tailored sequen...
One important function of e-learning systems is to sequence learning material for students. E-learni...
Reinforcement learning (RL) is a popular paradigm for addressing sequential decision tasks in which ...
Three have been the main contributions of this thesis. First, a platform for the deployment of Intel...