Receiving formative feedback about open-ended responses can facilitate the progression of learning. However, educators cannot often provide immediate feedback and thus for students, learning may be slowed. In this paper, we will explore how an automatic grading model can be coupled with deep Reinforcement Learning (RL) to create a system of automatic formative feedback for students' open-ended responses. We use batch (offline) learning with a double Deep Q Network (DQN) to simulate a learning environment, such as an open-source, online tutoring system, where students are prompted to answer open-ended questions. An auto-grader is used to provide a rating of the student's response, and until the response is scored at the highest category, an ...
Dialogue policy learning based on reinforcement learning is difficult to be applied to real users to...
Student feedback analysis is time-consuming and laborious work if it is handled manually. This study...
We explore unconstrained natural language feedback as a learning signal for artificial agents. Human...
Deep Reinforcement Learning (DRL) has become a powerful strategy to solve complex decision making pr...
High-quality feedback is essential for learners. It reveals misconceptions, knowledge gaps and impro...
Automatic scoring and feedback tools have become critical components of online learning proliferatio...
Automatic scoring and feedback tools have become critical components of online learning proliferatio...
Robots are extending their presence in domestic environments every day, it being more common to see ...
Open-ended assignments -- such as lab reports and semester-long projects -- provide data science and...
A framework to allow (semi-)automated grading of answers to open-ended questions (“open answers”) is...
Assessing the academic capabilities of students should play a key role in both stimulating their lea...
The world has seen major developments in the field of e-learning and distance learning, especially d...
Grading the answers given to open ended questions (and questionnaires) is a rather heavy task for te...
Ever since the remarkable achievement of AlphaGo by Google in 2017, it has led to the growing intere...
Interactive imitation learning refers to learning methods where a human teacher interacts with an ag...
Dialogue policy learning based on reinforcement learning is difficult to be applied to real users to...
Student feedback analysis is time-consuming and laborious work if it is handled manually. This study...
We explore unconstrained natural language feedback as a learning signal for artificial agents. Human...
Deep Reinforcement Learning (DRL) has become a powerful strategy to solve complex decision making pr...
High-quality feedback is essential for learners. It reveals misconceptions, knowledge gaps and impro...
Automatic scoring and feedback tools have become critical components of online learning proliferatio...
Automatic scoring and feedback tools have become critical components of online learning proliferatio...
Robots are extending their presence in domestic environments every day, it being more common to see ...
Open-ended assignments -- such as lab reports and semester-long projects -- provide data science and...
A framework to allow (semi-)automated grading of answers to open-ended questions (“open answers”) is...
Assessing the academic capabilities of students should play a key role in both stimulating their lea...
The world has seen major developments in the field of e-learning and distance learning, especially d...
Grading the answers given to open ended questions (and questionnaires) is a rather heavy task for te...
Ever since the remarkable achievement of AlphaGo by Google in 2017, it has led to the growing intere...
Interactive imitation learning refers to learning methods where a human teacher interacts with an ag...
Dialogue policy learning based on reinforcement learning is difficult to be applied to real users to...
Student feedback analysis is time-consuming and laborious work if it is handled manually. This study...
We explore unconstrained natural language feedback as a learning signal for artificial agents. Human...