We propose a new model to assess the mastery level of a given skill efficiently. The model, called Bayesian Adaptive Mastery Assessment (BAMA), uses information on the accuracy and the response time of the answers given and infers the mastery at every step of the assessment. BAMA balances the length of the assessment and the certainty of the mastery inference by employing a Bayesian decision-theoretic framework adapted to each student. All these properties contribute to a novel approach in assessment models for intelligent learning systems. The purpose of this research is to explore the properties of BAMA and evaluate its performance concerning the number of questions administered and the accuracy of the final mastery estimates across diffe...
The purpose of this paper is to derive optimal rules for sequential decision-making in intelligent t...
Abstract Adaptive learning games should provide opportunities for the student to learn as well as mo...
Chapter 1: Cognitive diagnosis models (CDMs) are restricted latent class models designed to assess t...
We propose a new model to assess the mastery level of a given skill efficiently. The model, called B...
By implementing mastery learning, intelligent tutoring systems aim to present students with exactly ...
E-learning assessments are becoming a common educational medium to instruct fine-grained skills in m...
A theoretical framework for mastery testing based on item response theory and Bayesian decision th...
One of the important issues in a learning management system is the assessment of the learner’s knowl...
The purpose of this paper is to consider some applications of Bayesian decision theory to intelligen...
This paper presents some Bayesian theories of simultaneous optimization of decision rules for test-b...
The purpose of this paper is to formulate optimal sequential rules for mastery tests. The framework ...
The purpose of this paper is to derive optimal rules for sequential mastery tests. In a sequential m...
An approach to simultaneous optimization of assignments of subjects to treatments followed by an end...
This thesis proposes, demonstrates, and evaluates, the concept of the normative Intelligent Tutorin...
Mastery learning in intelligent tutoring systems produces a differential attrition of students over ...
The purpose of this paper is to derive optimal rules for sequential decision-making in intelligent t...
Abstract Adaptive learning games should provide opportunities for the student to learn as well as mo...
Chapter 1: Cognitive diagnosis models (CDMs) are restricted latent class models designed to assess t...
We propose a new model to assess the mastery level of a given skill efficiently. The model, called B...
By implementing mastery learning, intelligent tutoring systems aim to present students with exactly ...
E-learning assessments are becoming a common educational medium to instruct fine-grained skills in m...
A theoretical framework for mastery testing based on item response theory and Bayesian decision th...
One of the important issues in a learning management system is the assessment of the learner’s knowl...
The purpose of this paper is to consider some applications of Bayesian decision theory to intelligen...
This paper presents some Bayesian theories of simultaneous optimization of decision rules for test-b...
The purpose of this paper is to formulate optimal sequential rules for mastery tests. The framework ...
The purpose of this paper is to derive optimal rules for sequential mastery tests. In a sequential m...
An approach to simultaneous optimization of assignments of subjects to treatments followed by an end...
This thesis proposes, demonstrates, and evaluates, the concept of the normative Intelligent Tutorin...
Mastery learning in intelligent tutoring systems produces a differential attrition of students over ...
The purpose of this paper is to derive optimal rules for sequential decision-making in intelligent t...
Abstract Adaptive learning games should provide opportunities for the student to learn as well as mo...
Chapter 1: Cognitive diagnosis models (CDMs) are restricted latent class models designed to assess t...