The purpose of this paper is to formulate decision rules for adapting the appropriate amount of instruction to learning needs in intelligent tutoring systems. The framework for the approach is derived from minimax decision theory (minimum information approach), i.e. optimal rules are obtained by minimizing the maximum expected loss associated with each possible decision rule. The binomial model was assumed for the conditional probability of a correct response given the true level of functioning, whereas threshold loss was adopted for the loss function involved. A simple decision rule is given for which only the minimum true level of functioning required for being a ‘true master’ and the value of the loss ratio have to be specified in advanc...
This paper derives optimal rules for sequential mastery tests. In a sequential mastery test, the dec...
A key part of effective teaching is adaptively selecting pedagogical activities to maximize long ter...
Class learning is a teaching and learning activity involving both teachers and students. Students in...
The purpose of this paper is to formulate optimal sequential decision rules for adapting the appropr...
The purpose of this paper is to consider some applications of Bayesian decision theory to intelligen...
The application of the Minnesota Adaptive Instructional System (MAIS) decision procedure by R. D. Te...
This paper considers applications of decision theory to the problem of instructional decision-making...
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...
The purpose of this paper is to derive optimal rules for variable-length mastery tests in case three...
A novel decision-theoretic architecture for intelligent tutoring systems, DT Tutor (DT), was fleshed...
A novel decision-theoretic architecture for intelligent tutoring systems, DT Tutor (DT), was fleshed...
A novel decision-theoretic architecture for intelligent tutoring systems, DT Tutor (DT), was fleshed...
The purpose of this paper is to simultaneously optimize decision rules for combinations of elementar...
We propose and demonstrate a methodology for building tractable normative intelligent tutoring syste...
This paper derives optimal rules for sequential mastery tests. In a sequential mastery test, the dec...
A key part of effective teaching is adaptively selecting pedagogical activities to maximize long ter...
Class learning is a teaching and learning activity involving both teachers and students. Students in...
The purpose of this paper is to formulate optimal sequential decision rules for adapting the appropr...
The purpose of this paper is to consider some applications of Bayesian decision theory to intelligen...
The application of the Minnesota Adaptive Instructional System (MAIS) decision procedure by R. D. Te...
This paper considers applications of decision theory to the problem of instructional decision-making...
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...
The purpose of this paper is to derive optimal rules for variable-length mastery tests in case three...
A novel decision-theoretic architecture for intelligent tutoring systems, DT Tutor (DT), was fleshed...
A novel decision-theoretic architecture for intelligent tutoring systems, DT Tutor (DT), was fleshed...
A novel decision-theoretic architecture for intelligent tutoring systems, DT Tutor (DT), was fleshed...
The purpose of this paper is to simultaneously optimize decision rules for combinations of elementar...
We propose and demonstrate a methodology for building tractable normative intelligent tutoring syste...
This paper derives optimal rules for sequential mastery tests. In a sequential mastery test, the dec...
A key part of effective teaching is adaptively selecting pedagogical activities to maximize long ter...
Class learning is a teaching and learning activity involving both teachers and students. Students in...