The adaptive experimentation methodology has been adopted in visual psychophysical modeling in the pursuit of efficiency in experimental time and cost. The standard scheme only optimizes one design in each experimental stage, although simultaneous optimization of multiple designs per stage can be beneficial, but difficult to implement because of a surge in computation. In this study, we incorporated the adaptive experimentation methodology under a Bayesian framework with differential evolution (DE), an algorithm specialized in multi-dimensional optimization problems to explore the multiple-designs-per-stage approach. By taking advantage of parallel computing, DE is computationally fast. The results showed that the multiple-designs-per-stage...
Abstract—Differential evolution (DE) is an efficient and powerful population-based stochastic search...
Differential Evolution is an evolutionary algorithm designed for global optimization. Its main asset...
The efficient measurement of the threshold and slope of the psychometric function (PF) is an importa...
AbstractWe introduce a new Bayesian adaptive method for acquisition of both threshold and slope of t...
A psychometric function can be described by its shape and four parameters: position or threshold, sl...
Abstract. Experimentation is fundamental to the advancement of science, whether one is interested in...
A new Bayesian adaptive psychometric method based on the theory of optimal experiments is introduced...
This paper investigates the theoretical bound to reduce the parameter uncertainty in Bayesian adapti...
Contributions within Discipline: The findings have improved the efficiency of adaptive measurement i...
AbstractRecent developments in the efficient estimation of threshold are here extended to the proble...
Differential evolution (DE) is a simple yet powerful evolutionary algorithm (EA). It has demonstrat...
Experimentation is at the core of research in the behavioral and neural sciences, yet observations c...
Experimentation is at the core of research in cognitive science, yet observations can be expensive a...
Differential evolution (DE) presents a class of evolutionary and meta-heuristic techniques that have...
Comparing models allows us to test different hypotheses regarding the computational basis of percept...
Abstract—Differential evolution (DE) is an efficient and powerful population-based stochastic search...
Differential Evolution is an evolutionary algorithm designed for global optimization. Its main asset...
The efficient measurement of the threshold and slope of the psychometric function (PF) is an importa...
AbstractWe introduce a new Bayesian adaptive method for acquisition of both threshold and slope of t...
A psychometric function can be described by its shape and four parameters: position or threshold, sl...
Abstract. Experimentation is fundamental to the advancement of science, whether one is interested in...
A new Bayesian adaptive psychometric method based on the theory of optimal experiments is introduced...
This paper investigates the theoretical bound to reduce the parameter uncertainty in Bayesian adapti...
Contributions within Discipline: The findings have improved the efficiency of adaptive measurement i...
AbstractRecent developments in the efficient estimation of threshold are here extended to the proble...
Differential evolution (DE) is a simple yet powerful evolutionary algorithm (EA). It has demonstrat...
Experimentation is at the core of research in the behavioral and neural sciences, yet observations c...
Experimentation is at the core of research in cognitive science, yet observations can be expensive a...
Differential evolution (DE) presents a class of evolutionary and meta-heuristic techniques that have...
Comparing models allows us to test different hypotheses regarding the computational basis of percept...
Abstract—Differential evolution (DE) is an efficient and powerful population-based stochastic search...
Differential Evolution is an evolutionary algorithm designed for global optimization. Its main asset...
The efficient measurement of the threshold and slope of the psychometric function (PF) is an importa...