This paper introduces a method to predict and analyse students' mathematical performance by detecting distinguishable subgroups of children who share similar learning patterns. We employ pairwise clustering to analyse a comprehensive dataset of user interactions obtained from a computer-based training system. The available data consist of multiple learning trajectories measured from children with developmental dyscalculia, as well as from control children. Our online classification algorithm allows accurate assignment of children to clusters early in the training, enabling prediction of learning characteristics. The included results demonstrate the high predictive power of assignments of children to subgroups, and the significant improvemen...
Computer-based learning environments can produce a wealth of data on student learning interactions. ...
Student behaviour should correlate to the course performance. This paper explored different types of...
Student’s modelling, prediction, and grouping have remained open research issues in the multi-discip...
In this paper, we applied a number of clustering algorithms on pretest data collected from 264 high-...
This thesis addresses the identification of learning behaviors and the prediction of learning outcom...
The abilities of predicting human's behavior have increased dramatically in the new era of data mini...
Researchers have discovered many successful algorithms and methodologies for solving problems at the...
In educational research, a fundamental goal is identifying which skills students have mastered, whic...
In educational research, a fundamental goal is identifying which skills students have mastered, whic...
Understanding a student's problem-solving strategy can have a significant impact on effective math l...
A conceptual clustering algorithm can search through huge amounts of data looking for multi-dimensio...
In student modeling, the concept of “mastery learning ” i.e. that a student continues to learn a ski...
Arithmetic abilities are essential in modern society. However, many children suffer from difficultie...
The inclusion of technology in the academic processes has led to constant innovation and investment ...
ALEKS (Assessment and Learning in Knowledge Spaces) has recently shown promise for effectively train...
Computer-based learning environments can produce a wealth of data on student learning interactions. ...
Student behaviour should correlate to the course performance. This paper explored different types of...
Student’s modelling, prediction, and grouping have remained open research issues in the multi-discip...
In this paper, we applied a number of clustering algorithms on pretest data collected from 264 high-...
This thesis addresses the identification of learning behaviors and the prediction of learning outcom...
The abilities of predicting human's behavior have increased dramatically in the new era of data mini...
Researchers have discovered many successful algorithms and methodologies for solving problems at the...
In educational research, a fundamental goal is identifying which skills students have mastered, whic...
In educational research, a fundamental goal is identifying which skills students have mastered, whic...
Understanding a student's problem-solving strategy can have a significant impact on effective math l...
A conceptual clustering algorithm can search through huge amounts of data looking for multi-dimensio...
In student modeling, the concept of “mastery learning ” i.e. that a student continues to learn a ski...
Arithmetic abilities are essential in modern society. However, many children suffer from difficultie...
The inclusion of technology in the academic processes has led to constant innovation and investment ...
ALEKS (Assessment and Learning in Knowledge Spaces) has recently shown promise for effectively train...
Computer-based learning environments can produce a wealth of data on student learning interactions. ...
Student behaviour should correlate to the course performance. This paper explored different types of...
Student’s modelling, prediction, and grouping have remained open research issues in the multi-discip...