ALEKS (Assessment and Learning in Knowledge Spaces) has recently shown promise for effectively training mathematics at equivalent levels to human teachers. However, not much is known about how the system accomplished this. In this paper, we describe the use of three data mining techniques used to analyze student data from an afterschool program with ALEKS. Our first analysis used DMM modeling and k-clustering to identify important groups of behaviors within ALEKS users and to show the importance of context for elements. Our second analysis focused on identifying learner behaviors that predict student learning during the program. The final analysis presents a method for determine learner persistence within the afterschool program
With the proliferation of systems that are put for the student use, data related to activities under...
Abstract—Education is really important. Data mining is useful for forecasting a student's academic a...
Educational data mining and learning analytics promise better understanding of student behavior and ...
ALEKS (Assessment and Learning in Knowledge Spaces) has recently shown promise for effectively train...
The inclusion of technology in the academic processes has led to constant innovation and investment ...
Computer-based learning environments can produce a wealth of data on student learning interactions. ...
The exponential increase in universities’ electronic data creates the need to derive some useful inf...
The use of technology and data analysis within the classroom has been a resourceful tool in order to...
We examined the effectiveness of using the Assessment and LEarning in Knowledge Spaces (ALEKS) syste...
The effectiveness of using the Assessment and LEarning in Knowledge Spaces (ALEKS) system, an Intell...
Student persistence in online learning environments has typically been studied at the macro-level (e...
Students’ online persistence has typically been studied at the macro-level (e.g., completion of an o...
This thesis addresses the identification of learning behaviors and the prediction of learning outcom...
This work presents the evaluation of the process of using a virtual learning platform designed ad ho...
Large amounts of data are generated while students interact with computer based learning systems. Th...
With the proliferation of systems that are put for the student use, data related to activities under...
Abstract—Education is really important. Data mining is useful for forecasting a student's academic a...
Educational data mining and learning analytics promise better understanding of student behavior and ...
ALEKS (Assessment and Learning in Knowledge Spaces) has recently shown promise for effectively train...
The inclusion of technology in the academic processes has led to constant innovation and investment ...
Computer-based learning environments can produce a wealth of data on student learning interactions. ...
The exponential increase in universities’ electronic data creates the need to derive some useful inf...
The use of technology and data analysis within the classroom has been a resourceful tool in order to...
We examined the effectiveness of using the Assessment and LEarning in Knowledge Spaces (ALEKS) syste...
The effectiveness of using the Assessment and LEarning in Knowledge Spaces (ALEKS) system, an Intell...
Student persistence in online learning environments has typically been studied at the macro-level (e...
Students’ online persistence has typically been studied at the macro-level (e.g., completion of an o...
This thesis addresses the identification of learning behaviors and the prediction of learning outcom...
This work presents the evaluation of the process of using a virtual learning platform designed ad ho...
Large amounts of data are generated while students interact with computer based learning systems. Th...
With the proliferation of systems that are put for the student use, data related to activities under...
Abstract—Education is really important. Data mining is useful for forecasting a student's academic a...
Educational data mining and learning analytics promise better understanding of student behavior and ...