The purpose of this paper is to consider some applications of Bayesian decision theory to intelligent tutoring systems. In particular, it will be indicated how the problem of adapting the appropriate amount of instruction to the changing nature of student's capabilities during the learning process can be situated within the general framework of Bayesian decision theory. Two basic elements of this approach will be used to improve instructional decision making in intelligent tutoring systems. First, it is argued that in many decision-making situations the linear loss model is a realistic representation of the losses actually incurred. Second, it is shown that the psychometric model relating observed test scores to the true level of functionin...
Abstract. This paper describes research to analyze students ’ initial skill level and to predict the...
This paper presents some Bayesian theories of simultaneous optimization of decision rules for test-b...
The purpose of this paper is to derive optimal rules for sequential decision-making in intelligent t...
This thesis proposes, demonstrates, and evaluates, the concept of the normative Intelligent Tutorin...
This paper considers applications of decision theory to the problem of instructional decision-making...
We propose and demonstrate a methodology for building tractable normative intelligent tutoring syste...
The purpose of this paper is to formulate decision rules for adapting the appropriate amount of inst...
Computer Science has suffered a quick development during the last century and the evolution of hardw...
The application of the Minnesota Adaptive Instructional System (MAIS) decision procedure by R. D. Te...
Web-based tutoring systems are increasinglypopular due to their appeal over traditional paperbasedte...
Acquiring a reliable student model is the principal task of an Intelligent Tutoring System (ITS). A...
Probability-based inference in complex networks of interdependent variables is an active topic in st...
Abstract: The paper describes an approach to the formulation of the decision-making tasks via specif...
The purpose of this paper is to formulate optimal sequential decision rules for adapting the appropr...
A novel decision-theoretic architecture for intelligent tutoring systems, DT Tutor (DT), was fleshed...
Abstract. This paper describes research to analyze students ’ initial skill level and to predict the...
This paper presents some Bayesian theories of simultaneous optimization of decision rules for test-b...
The purpose of this paper is to derive optimal rules for sequential decision-making in intelligent t...
This thesis proposes, demonstrates, and evaluates, the concept of the normative Intelligent Tutorin...
This paper considers applications of decision theory to the problem of instructional decision-making...
We propose and demonstrate a methodology for building tractable normative intelligent tutoring syste...
The purpose of this paper is to formulate decision rules for adapting the appropriate amount of inst...
Computer Science has suffered a quick development during the last century and the evolution of hardw...
The application of the Minnesota Adaptive Instructional System (MAIS) decision procedure by R. D. Te...
Web-based tutoring systems are increasinglypopular due to their appeal over traditional paperbasedte...
Acquiring a reliable student model is the principal task of an Intelligent Tutoring System (ITS). A...
Probability-based inference in complex networks of interdependent variables is an active topic in st...
Abstract: The paper describes an approach to the formulation of the decision-making tasks via specif...
The purpose of this paper is to formulate optimal sequential decision rules for adapting the appropr...
A novel decision-theoretic architecture for intelligent tutoring systems, DT Tutor (DT), was fleshed...
Abstract. This paper describes research to analyze students ’ initial skill level and to predict the...
This paper presents some Bayesian theories of simultaneous optimization of decision rules for test-b...
The purpose of this paper is to derive optimal rules for sequential decision-making in intelligent t...