Book Chapter10.1007/978-3-030-32475-9_5
Evaluating Student Learning Effect Based on Process Mining
Yu Wang,Tong Li,Congkai Geng,Yihan Wang +3 more
- 07 Nov 2019
- pp 59-72
6
TL;DR: This paper proposes an interactive studentlearning effect evaluation framework which focuses on in-process learning effect evaluation, and analyzes students modeling assignment based on their operation records by using techniques of frequent sequential pattern mining, user behavior analysis, and feature engineering.
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Abstract: As education is taking an increasingly significant role in society today, efficient and precise evaluation of student learning effect is calling for more attention. With recent advances of information technology, learning effect can now be evaluated via mining student’s learning process. This paper proposes an interactive student learning effect evaluation framework which focuses on in-process learning effect evaluation. In particular, our proposal analyzes students modeling assignment based on their operation records by using techniques of frequent sequential pattern mining, user behavior analysis, and feature engineering. In order to enable effective student learning evaluation and deliver practical value, we have developed a comprehensive online modeling platform to collect operation data of modelers and to support the corresponding analysis. We have carried out a case study, in which we applied our approach to a real dataset, consisting of student online modeling behavior data collected from 24 students majoring in computer science. The results of our analysis show that our approach can effectively and practically mine student modeling patterns and interpret their behaviors, contributing to assessment of their learning effect.
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Citations
Recognizing patterns of student’s modeling behaviour patterns via process mining
TL;DR: This paper proposes an interactive studentlearning effect evaluation framework which focuses on in-process learning effect evaluation, and analyzes students modeling assignment based on their operation records by using techniques of frequent sequential pattern mining, user behavior analysis, feature engineering, and process mining.
Reviewing Process Mining Applications and Techniques in Education
TL;DR: A systematic review of the recent and current status of research in the EPM domain is presented, focusing on application domains, techniques, tools and models, to highlight the use of EPM in comprehending and improving educational processes.
The Sequence Matters in Learning - A Systematic Literature Review
Manuel Valle Torre,Marcus Specht,Catharine Oertel +2 more
- 18 Mar 2024
TL;DR: Sequence analysis is widely used in Learning Analytics to describe and analyze learner behaviour. It involves various definitions, data aggregation methods, and analysis techniques. Sequences are used to study different educational settings and interventions.
2
The sequence matters: A systematic literature review of using sequence analysis in Learning Analytics
Manuel Valle Torre,Marcus Specht,Catharine Oertel +2 more
TL;DR: The results enable the authors to highlight different learning tasks where sequences are analysed, identify data mapping strategies for different types of sequence actions, differentiate techniques based on purpose and scope, and identify educational interventions based on the outcomes of sequence analysis.
A Learning Analytics Approach to Monitoring the Quality of Online One-to-One Tutoring
01 May 2022
TL;DR: In this article , a learning analytics approach was proposed to monitor the quality of one-to-one tutoring in a primary math tutoring session with 44 tutors from eight schools.
References
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Rakesh Agrawal,Ramakrishnan Srikant +1 more
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TL;DR: Three algorithms are presented to solve the problem of mining sequential patterns over databases of customer transactions, and empirically evaluating their performance using synthetic data shows that two of them have comparable performance.
Mining Sequential Patterns: Generalizations and Performance Improvements
Ramakrishnan Srikant,Ramakrishnan Srikant,Rakesh Agrawal +2 more
- 25 Mar 1996
TL;DR: This work adds time constraints that specify a minimum and/or maximum time period between adjacent elements in a pattern, and relax the restriction that the items in an element of a sequential pattern must come from the same transaction.
3.2K
•Book
Process Mining: Discovery, Conformance and Enhancement of Business Processes
Wil M. P. van der Aalst
- 01 Jan 2011
TL;DR: This book provides real-world techniques for monitoring and analyzing processes in real time and is a powerful new tool destined to play a key role in business process management.
2.5K
PrefixSpan,: mining sequential patterns efficiently by prefix-projected pattern growth
Jian Pei,Jiawei Han,Behzad Mortazavi-Asl,Helen Pinto,Qiming Chen,Umeshwar Dayal,Meichun Hsu +6 more
- 02 Apr 2001
TL;DR: This work proposes a novel sequential pattern mining method, called Prefixspan (i.e., Prefix-projected - Ettern_ mining), which explores prejxprojection in sequential pattern Mining, and shows that Pre fixspan outperforms both the Apriori-based GSP algorithm and another recently proposed method; Frees pan, in mining large sequence data bases.
Real life, real users, and real needs: a study and analysis of user queries on the web
TL;DR: A failure analysis was conducted, identifying trends among user mistakes, and a summary of findings and a discussion of the implications of these findings were concluded.