Newline management
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@ -562,9 +562,11 @@ If this is the case, we individually address these students to point them again
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Tests and exams, on the other hand, are taken on-campus under human surveillance and allow no communication with fellow students or other persons (and more recently, also no generative AI).
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Students can work on their personal computers and get exactly two hours to solve two programming assignments during a test, and three hours and thirty minutes to solve three programming assignments during an exam.
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Tests and exams are "open book/open Internet", so any hard copy and digital resources can be consulted while solving test or exam assignments.
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Students are instructed that they can only be passive users of the Internet: all information available on the Internet at the start of a test or exam can be consulted, but no new information can be added.
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When taking over code fragments from the Internet, students have to add a proper citation as a comment in their submitted source code.
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After each test and exam, we again use MOSS/Dolos to detect and inspect highly similar code snippets among submitted solutions and to find convincing evidence they result from exchange of code or other forms of interpersonal communication (Figure\nbsp{}[[fig:usefweplagiarism]]).
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If we catalogue cases as plagiarism beyond reasonable doubt, the examination board is informed to take further action\nbsp{}[cite:@maertensDolosLanguageagnosticPlagiarism2022].
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@ -1719,7 +1721,6 @@ We discuss the results in terms of accuracy, potential for early detection, and
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#+NAME: fig:passfailsgdresults
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[[./images/passfailsgdresults.png]]
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#+CAPTION: Performance of logistic regression classifiers for pass/fail predictions in a longitudinal sequence of snapshots from courses A (all features and reduced set of features) and B, measured by balanced accuracy and F_1-score.
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#+CAPTION: Dots represent performance of a single prediction, with 12 predictions for each group of corresponding snapshots (columns).
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#+CAPTION: Solid line connects averages of the performances for each group of corresponding snapshots.
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@ -2154,7 +2155,6 @@ These automated assessment systems provide feedback on correctness, and can prov
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In many educational practices, automated assessment is therefore supplemented with manual feedback, especially when grading evaluations or exams.
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This requires a large time investment from teachers.
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Others have therefore tried to improve the process of giving feedback using AI.
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[cite/t:@vittoriniAIBasedSystemFormative2021] automated grading using natural language processing, and found that students who used this system during the semester were more likely to pass the course at the end of the semester.
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Others have used AI to enable students to conduct peer and self-evaluation\nbsp{}[cite:@leeSupportingStudentsGeneration2023].
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