Based on mental model theory, we expect individuals to construct a mental representation of the system they interact with which tends to be a strong reduction of reality and is tailored to the specific situation and task at hand. Such reductions may be particularly significant in complex decision situations involved in local spatial choice behavior. In this article, we develop a method to model and measure mental representations of decision problems involving individual spatio-temporal choice behavior in different situations. The so-called CNET method consists of an interview protocol to elicit the structures at the individual level as a causal network. We test the proposed method in a case study involving 180 respondents and an experimenta...
textabstractWe introduce an extension of the discrete choice model to take into account individuals’...
This questionnaire concerns the measurement of individual-level mental representations of complex de...
This paper develops a model, based on Bayesian beliefs networks, for representing mental maps and co...
Based on mental model theory, we expect individuals to construct a mental representation of the syst...
Based on mental model theory, we expect individuals to construct a mental representation of the syst...
Growing emphasis is currently given in decision modeling on process data to capture behavioral mecha...
This paper introduces the online Causal Network Elicitation Technique (CNET), as a technique for mea...
Growing emphasis is currently given in decision modeling on process data to capture behavioral mecha...
This paper introduces the online Causal Network Elicitation Technique (CNET), as a technique for mea...
\u3cp\u3eWe introduce an extension of the discrete choice model to take into account individuals' me...
textabstractThis paper introduces the online Causal Network Elicitation Technique (CNET), as a techn...
We introduce an extension of the discrete choice model to take into account individuals' mental repr...
We introduce an extension of the discrete choice model to take into account individuals’ mental repr...
A better exploration of human decision making is a necessary condition to understand individual acti...
textabstractWe introduce an extension of the discrete choice model to take into account individuals’...
This questionnaire concerns the measurement of individual-level mental representations of complex de...
This paper develops a model, based on Bayesian beliefs networks, for representing mental maps and co...
Based on mental model theory, we expect individuals to construct a mental representation of the syst...
Based on mental model theory, we expect individuals to construct a mental representation of the syst...
Growing emphasis is currently given in decision modeling on process data to capture behavioral mecha...
This paper introduces the online Causal Network Elicitation Technique (CNET), as a technique for mea...
Growing emphasis is currently given in decision modeling on process data to capture behavioral mecha...
This paper introduces the online Causal Network Elicitation Technique (CNET), as a technique for mea...
\u3cp\u3eWe introduce an extension of the discrete choice model to take into account individuals' me...
textabstractThis paper introduces the online Causal Network Elicitation Technique (CNET), as a techn...
We introduce an extension of the discrete choice model to take into account individuals' mental repr...
We introduce an extension of the discrete choice model to take into account individuals’ mental repr...
A better exploration of human decision making is a necessary condition to understand individual acti...
textabstractWe introduce an extension of the discrete choice model to take into account individuals’...
This questionnaire concerns the measurement of individual-level mental representations of complex de...
This paper develops a model, based on Bayesian beliefs networks, for representing mental maps and co...