In this paper, we proposed a new cognitive modeling approach: Instructional Factors Analysis Model (IFM). It belongs to a class of Knowledge-Component-based cognitive models. More specifically, IFM is targeted for modeling student’s performance when multiple types of instructional interventions are involved and some of them may not generate a direct observation of students ’ performance. We compared IFM to two other pre-existing cognitive models: Additive Factor Models (AFMs) and Performance Factor Models (PFMs). The three methods differ mainly on how a student’s previous experience on a Knowledge Component is counted into multiple categories. Among the three models, instructional interventions without immediate direct observations can be e...
This paper presents a heuristic model of student leaning as a means to understanding the scope of fa...
An effective tutor—human or digital—must determine what a student does and does not know. Inferring ...
Cognitive Science is interested in being able to develop methodologies for analyzing human learning ...
Abstract. A cognitive model is a set of production rules or skills encoded in intelligent tutors to ...
Variations of cognitive models drive many instructional decisions that intelligent tutoring systems ...
Abstract. Student modeling is a fundamental concept applicable to a variety of intelligent tutoring ...
Cognitive models are human performance models that represent human knowledge and internal informatio...
Knowledge tracing (KT)[1] has been used in various forms for adaptive computerized instruction for m...
Original version should be found at : http://www.springer.com/engineering/computational+intelligence...
After developing an intelligent tutoring system (ITS), or any other class of learning environments, ...
This chapter presents a heuristic model of student leaning as a means to understanding the scope of ...
Efforts to improve instructional task design often make reference to the mental structures, such as ...
In the field of educational data mining, there are competing methods for predicting student performa...
Transfer of learning to new or different contexts has always been a chief concern of education becau...
Although learning from multiple representations has been shown to be effective in a variety of domai...
This paper presents a heuristic model of student leaning as a means to understanding the scope of fa...
An effective tutor—human or digital—must determine what a student does and does not know. Inferring ...
Cognitive Science is interested in being able to develop methodologies for analyzing human learning ...
Abstract. A cognitive model is a set of production rules or skills encoded in intelligent tutors to ...
Variations of cognitive models drive many instructional decisions that intelligent tutoring systems ...
Abstract. Student modeling is a fundamental concept applicable to a variety of intelligent tutoring ...
Cognitive models are human performance models that represent human knowledge and internal informatio...
Knowledge tracing (KT)[1] has been used in various forms for adaptive computerized instruction for m...
Original version should be found at : http://www.springer.com/engineering/computational+intelligence...
After developing an intelligent tutoring system (ITS), or any other class of learning environments, ...
This chapter presents a heuristic model of student leaning as a means to understanding the scope of ...
Efforts to improve instructional task design often make reference to the mental structures, such as ...
In the field of educational data mining, there are competing methods for predicting student performa...
Transfer of learning to new or different contexts has always been a chief concern of education becau...
Although learning from multiple representations has been shown to be effective in a variety of domai...
This paper presents a heuristic model of student leaning as a means to understanding the scope of fa...
An effective tutor—human or digital—must determine what a student does and does not know. Inferring ...
Cognitive Science is interested in being able to develop methodologies for analyzing human learning ...