This paper presents a learning theory pertinent to dynamic decision making (DDM) called instancebased learning theory (IBLT). IBLT proposes five learning mechanisms in the context of a decision-making process: instance-based knowledge, recognition-based retrieval, adaptive strategies, necessity-based choice, and feedback updates. IBLT suggests in DDM people learn with the accumulation and refinement of instances, containing the decision-making situation, action, and utility of decisions. As decision makers interact with a dynamic task, they recognize a situation according to its similarity to past instances, adapt their judgment strategies from heuristic-based to instance-based, and refine the accumulated knowledge according to feedback on ...
Cognitive architectures (e.g., ACT-R) have not traditionally been used to understand intuitive decis...
We describe an instance-based model of decision-making for repeated binary choice. The model provide...
The apparent difficulty that humans experience when asked to manage dynamic complexity might be rela...
This paper presents a learning theory pertinent to dynamic decision making (DDM) called instance-bas...
A common practice in cognitive modeling is to develop new models specific to each particular task. W...
<p>A common practice in cognitive modeling is to develop new models specific to each particular task...
Although cognitive models of human behavior enjoy a rich history in cognitive psychology, they lack ...
Most demonstrations of how people make decisions in risky situations rely on decisions from descript...
This paper focuses on the creation and presentation of a user-friendly experience for developing com...
The IBL theory (IBLT) was developed to demonstrate the cognitive processes and mechanisms involved i...
In decisions from experience, there are 2 experimental paradigms: sampling and repeated-choice. In t...
<p>Instance-based learning theory (IBLT) has explained human decision-making in several decision tas...
Sterman (1989) proposed that decision makers misperceive the feedback provided by dynamically comple...
Sterman (1989) proposed that decision makers misperceive the feedback provided by dynamically comple...
AbstractCognitive architectures (e.g., ACT-R) have not traditionally been used to understand intuiti...
Cognitive architectures (e.g., ACT-R) have not traditionally been used to understand intuitive decis...
We describe an instance-based model of decision-making for repeated binary choice. The model provide...
The apparent difficulty that humans experience when asked to manage dynamic complexity might be rela...
This paper presents a learning theory pertinent to dynamic decision making (DDM) called instance-bas...
A common practice in cognitive modeling is to develop new models specific to each particular task. W...
<p>A common practice in cognitive modeling is to develop new models specific to each particular task...
Although cognitive models of human behavior enjoy a rich history in cognitive psychology, they lack ...
Most demonstrations of how people make decisions in risky situations rely on decisions from descript...
This paper focuses on the creation and presentation of a user-friendly experience for developing com...
The IBL theory (IBLT) was developed to demonstrate the cognitive processes and mechanisms involved i...
In decisions from experience, there are 2 experimental paradigms: sampling and repeated-choice. In t...
<p>Instance-based learning theory (IBLT) has explained human decision-making in several decision tas...
Sterman (1989) proposed that decision makers misperceive the feedback provided by dynamically comple...
Sterman (1989) proposed that decision makers misperceive the feedback provided by dynamically comple...
AbstractCognitive architectures (e.g., ACT-R) have not traditionally been used to understand intuiti...
Cognitive architectures (e.g., ACT-R) have not traditionally been used to understand intuitive decis...
We describe an instance-based model of decision-making for repeated binary choice. The model provide...
The apparent difficulty that humans experience when asked to manage dynamic complexity might be rela...