Cognitive Science is interested in being able to develop methodologies for analyzing human learning and performance data. Intelligent tutoring systems need good cognitive models that can predict student performance. Cognitive models of human processing are also useful in tutoring because well-designed curriculums need to understand the common components of knowledge that students need to be able to employ (cite Koedinger paper and algebra stuff). A common concern is being able to predict when transfer should happen. We describe a methodology (first used by Koedinger, 2001) that uses empirical data and cognitively principled task analysis to evaluate the fit of cognitive models. This methodology seems particularly useful when you are trying ...
In the field of Artificial Intelligence in Education, many contributions have been made toward estim...
model, sequence clustering Recent interest in online education, such as Massively Open Online Course...
Traditionally, the assessment and learning science commu-nities rely on different paradigms to model...
Abstract. Student modeling is a fundamental concept applicable to a variety of intelligent tutoring ...
Analyzing human learning and performance accurately is one of the main goals of an Intelligent Tutor...
Intelligent Tutoring Systems have become critically important in future learning environments. Knowl...
Efforts to improve instructional task design often make reference to the mental structures, such as ...
An effective tutor—human or digital—must determine what a student does and does not know. Inferring ...
This work describes a unified approach to two problems pre-viously addressed separately in Intellige...
Intelligent tutoring systems (ITSs) teach skills using learning-by-doing principles and provide lear...
We analyze naturally occurring datasets from student use of educational technologies to explore a lo...
Predicting student performance is an important part of the student modeling task in Intelligent Tuto...
As a student modeling technique, knowledge tracing is widely used by various intelligent tutoring sy...
Modeling students’ knowledge is a fundamental part of intelligent tutoring systems. One of the most ...
One function of a student model in tutoring systems is to select future tasks that will best meet st...
In the field of Artificial Intelligence in Education, many contributions have been made toward estim...
model, sequence clustering Recent interest in online education, such as Massively Open Online Course...
Traditionally, the assessment and learning science commu-nities rely on different paradigms to model...
Abstract. Student modeling is a fundamental concept applicable to a variety of intelligent tutoring ...
Analyzing human learning and performance accurately is one of the main goals of an Intelligent Tutor...
Intelligent Tutoring Systems have become critically important in future learning environments. Knowl...
Efforts to improve instructional task design often make reference to the mental structures, such as ...
An effective tutor—human or digital—must determine what a student does and does not know. Inferring ...
This work describes a unified approach to two problems pre-viously addressed separately in Intellige...
Intelligent tutoring systems (ITSs) teach skills using learning-by-doing principles and provide lear...
We analyze naturally occurring datasets from student use of educational technologies to explore a lo...
Predicting student performance is an important part of the student modeling task in Intelligent Tuto...
As a student modeling technique, knowledge tracing is widely used by various intelligent tutoring sy...
Modeling students’ knowledge is a fundamental part of intelligent tutoring systems. One of the most ...
One function of a student model in tutoring systems is to select future tasks that will best meet st...
In the field of Artificial Intelligence in Education, many contributions have been made toward estim...
model, sequence clustering Recent interest in online education, such as Massively Open Online Course...
Traditionally, the assessment and learning science commu-nities rely on different paradigms to model...