Automated techniques have proven useful for improving models of student learning even beyond the best human-generated models. There has been concern among the EDM community about whether small prediction improvements matter. We argue that they can be quite significant when they are interpretable and actionable, but the importance of generating meaningful, validated, and generalizable interpretations from machine-model discoveries has been under-emphasized in educational data mining. Here, we interpret a Learning Factors Analysis model discovery from a geometry dataset to suggest that students experienced difficulty applying the square root operation in circle-area backward problem steps. We then sought to validate and generalize this interp...
We encounter variables with little variation often in educational data mining (EDM) due to the demog...
Non-cognitive and behavioral phenomena, including gaming the system, off-task behavior, and affect, ...
Research has demonstrated that instruction that relies heavily on worked examples is more effective ...
Data from student learning provide learning curves that, ideally, demonstrate improvement in student...
Educational Data Mining researchers use various prediction metrics for model selection. Often the im...
As the use of educational technology becomes more ubiquitous, an enormous amount of learning process...
Student modeling plays a critical role in developing and improving instruction and instructional tec...
student classroom and homework time, methods to analyze the data stream coming from this software be...
Using data from student use of educational technologies to evaluate and improve cognitive models of ...
An important feature of many problem domains in machine learning is their geometry. For example, adj...
An important feature of many problem domains in machine learning is their geometry. For example, adj...
Recent research seeks to develop more comprehensive learner models for adaptive learning software. F...
Generalizability of models of student learning is a highly desirable feature. As new students intera...
Machine learning (ML) provides a powerful framework for the analysis of high-dimensional datasets by...
In machine learning, presumed a limited set of examples there is typically numerous explanation that...
We encounter variables with little variation often in educational data mining (EDM) due to the demog...
Non-cognitive and behavioral phenomena, including gaming the system, off-task behavior, and affect, ...
Research has demonstrated that instruction that relies heavily on worked examples is more effective ...
Data from student learning provide learning curves that, ideally, demonstrate improvement in student...
Educational Data Mining researchers use various prediction metrics for model selection. Often the im...
As the use of educational technology becomes more ubiquitous, an enormous amount of learning process...
Student modeling plays a critical role in developing and improving instruction and instructional tec...
student classroom and homework time, methods to analyze the data stream coming from this software be...
Using data from student use of educational technologies to evaluate and improve cognitive models of ...
An important feature of many problem domains in machine learning is their geometry. For example, adj...
An important feature of many problem domains in machine learning is their geometry. For example, adj...
Recent research seeks to develop more comprehensive learner models for adaptive learning software. F...
Generalizability of models of student learning is a highly desirable feature. As new students intera...
Machine learning (ML) provides a powerful framework for the analysis of high-dimensional datasets by...
In machine learning, presumed a limited set of examples there is typically numerous explanation that...
We encounter variables with little variation often in educational data mining (EDM) due to the demog...
Non-cognitive and behavioral phenomena, including gaming the system, off-task behavior, and affect, ...
Research has demonstrated that instruction that relies heavily on worked examples is more effective ...