Game theoretical, statistical and behavioural aspects of peer evaluation
The ”free rider” problem has long been a problem among a team of students working on a project. The most common solution to the free rider problem is peer evaluation. Although there are many systems for peer evaluation, they are prone to grade inflation or inaccurate, as they do not assign the corre...
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sg-ntu-dr.10356-1485012023-02-28T23:18:22Z Game theoretical, statistical and behavioural aspects of peer evaluation Tan, Catherine Ser Ping Fedor Duzhin School of Physical and Mathematical Sciences FDuzhin@ntu.edu.sg Science::Mathematics::Statistics The ”free rider” problem has long been a problem among a team of students working on a project. The most common solution to the free rider problem is peer evaluation. Although there are many systems for peer evaluation, they are prone to grade inflation or inaccurate, as they do not assign the correct grade to each student, and as a result the system is unfair. Another common concern with the current methods of peer evaluation is that students often do not have the necessary skills to evaluate the work of their peers objectively. In this paper, we introduce a new mechanism based on game theory for peer evaluation that is accurate and that does not rely on self-evaluation, i.e., if all students are completely truthful in their evaluations, then the output of our mechanism is the objective truth. Moreover, our mechanism takes into account the instructor’s judgment based on the credibility of students’ written reviews. We also construct a machine learning algorithm to identify contributions, strengths, and suggestions for improvement from a data set of peer reviews from students from the MH3110 course. This algorithm could be of convenience to instructors whose course has a large number of students, so that they do not need to take time to read the individual the peer reviews. Bachelor of Science in Mathematical Sciences and Economics 2021-04-28T04:56:15Z 2021-04-28T04:56:15Z 2021 Final Year Project (FYP) Tan, C. S. P. (2021). Game theoretical, statistical and behavioural aspects of peer evaluation. Final Year Project (FYP), Nanyang Technological University, Singapore. https://hdl.handle.net/10356/148501 https://hdl.handle.net/10356/148501 en application/pdf Nanyang Technological University |
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Science::Mathematics::Statistics Tan, Catherine Ser Ping Game theoretical, statistical and behavioural aspects of peer evaluation |
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The ”free rider” problem has long been a problem among a team of students working on a project. The most common solution to the free rider problem is peer evaluation. Although there are many systems for peer evaluation, they are prone to grade inflation or inaccurate, as they do not assign the correct grade to each student, and as a result the system is unfair. Another common concern with the current methods of peer evaluation is that students often do not have the necessary skills to evaluate the work of their peers objectively.
In this paper, we introduce a new mechanism based on game theory for peer evaluation that is accurate and that does not rely on self-evaluation, i.e., if all students are completely truthful in their evaluations, then the output of our mechanism is the objective truth. Moreover, our mechanism takes into account the instructor’s judgment based on the credibility of students’ written reviews.
We also construct a machine learning algorithm to identify contributions, strengths, and suggestions for improvement from a data set of peer reviews from students from the MH3110 course. This algorithm could be of convenience to instructors whose course has a large number of students, so that they do not need to take time to read the individual the peer reviews. |
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Fedor Duzhin |
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Fedor Duzhin Tan, Catherine Ser Ping |
format |
Final Year Project |
author |
Tan, Catherine Ser Ping |
author_sort |
Tan, Catherine Ser Ping |
title |
Game theoretical, statistical and behavioural aspects of peer evaluation |
title_short |
Game theoretical, statistical and behavioural aspects of peer evaluation |
title_full |
Game theoretical, statistical and behavioural aspects of peer evaluation |
title_fullStr |
Game theoretical, statistical and behavioural aspects of peer evaluation |
title_full_unstemmed |
Game theoretical, statistical and behavioural aspects of peer evaluation |
title_sort |
game theoretical, statistical and behavioural aspects of peer evaluation |
publisher |
Nanyang Technological University |
publishDate |
2021 |
url |
https://hdl.handle.net/10356/148501 |
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1759857661478699008 |