The purpose of this paper is to formulate optimal sequential rules for mastery tests. The framework for the approach is derived from Bayesian sequential decision theory. Both a threshold and linear loss structure are considered. The binomial probability distribution is adopted as the psychometric model involved. Conditions sufficient for sequentially setting optimal cutting scores are presented. Optimal sequential rules will be derived for the case of a subjective beta distribution representing prior true level of functioning. An empirical example of sequential mastery esting for concept-learning in medicine concludes the paper
The use of Bayesian decision theory to solve problems in test-based decision making is discussed. Fo...
The use of Bayesian decision theory to solve problems in test-based decision making is discussed. Fo...
The purpose of this paper is to simultaneously optimize decision rules for combinations of elementar...
The purpose of this paper is to derive optimal rules for sequential mastery tests. In a sequential m...
The purpose of this paper is to derive optimal rules for sequential mastery tests. In a sequential m...
This paper derives optimal rules for sequential mastery tests. In a sequential mastery test, the dec...
The purpose of this paper is to derive optimal rules for sequential decision-making in intelligent t...
The purpose of this paper is to derive optimal rules for variable-length mastery tests in case three...
A theoretical framework for mastery testing based on item response theory and Bayesian decision th...
An approach to simultaneous optimization of assignments of subjects to treatments followed by an end...
This paper presents some Bayesian theories of simultaneous optimization of decision rules for test-b...
A model for simultaneous optimization of combinations of test-based decisions in psychology and educ...
An approach to simultaneous optimization of assignments of subjects to treatments followed by an end...
The purpose of this paper is to formulate optimal sequential decision rules for adapting the appropr...
El propósito de este artículo consiste en obtener reglas óptimas en los tests secuenciales de clasif...
The use of Bayesian decision theory to solve problems in test-based decision making is discussed. Fo...
The use of Bayesian decision theory to solve problems in test-based decision making is discussed. Fo...
The purpose of this paper is to simultaneously optimize decision rules for combinations of elementar...
The purpose of this paper is to derive optimal rules for sequential mastery tests. In a sequential m...
The purpose of this paper is to derive optimal rules for sequential mastery tests. In a sequential m...
This paper derives optimal rules for sequential mastery tests. In a sequential mastery test, the dec...
The purpose of this paper is to derive optimal rules for sequential decision-making in intelligent t...
The purpose of this paper is to derive optimal rules for variable-length mastery tests in case three...
A theoretical framework for mastery testing based on item response theory and Bayesian decision th...
An approach to simultaneous optimization of assignments of subjects to treatments followed by an end...
This paper presents some Bayesian theories of simultaneous optimization of decision rules for test-b...
A model for simultaneous optimization of combinations of test-based decisions in psychology and educ...
An approach to simultaneous optimization of assignments of subjects to treatments followed by an end...
The purpose of this paper is to formulate optimal sequential decision rules for adapting the appropr...
El propósito de este artículo consiste en obtener reglas óptimas en los tests secuenciales de clasif...
The use of Bayesian decision theory to solve problems in test-based decision making is discussed. Fo...
The use of Bayesian decision theory to solve problems in test-based decision making is discussed. Fo...
The purpose of this paper is to simultaneously optimize decision rules for combinations of elementar...