We describe an instance-based model of decision-making for repeated binary choice. The model provides an accurate account of existing data of aggregate choice probabilities and individual differences, as well as newly collected data on learning and choice interdependency. In particular, the model provides a general emergent account of the risk aversion effect that does not require any metacognitive assumptions. Advantages of the model include its simplicity, its compatibility with previous models of choice and dynamic control, and the strong constraints it inherits from the underlying cognitive architecture
A model of decision making is introduced that provides a unified approach for predicting choices und...
Learning to choose adaptively when faced with uncertain consequences is a central challenge for deci...
The 2N-ary choice tree model accounts for response times and choice probabilities in multi-alternati...
We describe an instance-based model of decision-making for repeated binary choice. The model provide...
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...
Most demonstrations of how people make decisions in risky situations rely on decisions from descript...
In decisions from experience, there are 2 experimental paradigms: sampling and repeated-choice. In t...
This paper presents a learning theory pertinent to dynamic decision making (DDM) called instancebase...
This paper presents a learning theory pertinent to dynamic decision making (DDM) called instance-bas...
Although the principle of bounded rationality seems more realistic for formulating formal models of ...
Decision models are essential theoretical tools in the study of choice behavior, but there is little...
Mathematical and computational decision models are powerful tools for studying choice behavior, and ...
Research on risky and intertemporal decision-making often focuses on descriptive models of choice. T...
Despite all the differences offered in theories of utility formation and decisions from experience/ ...
A model of decision making is introduced that provides a unified approach for predicting choices und...
Learning to choose adaptively when faced with uncertain consequences is a central challenge for deci...
The 2N-ary choice tree model accounts for response times and choice probabilities in multi-alternati...
We describe an instance-based model of decision-making for repeated binary choice. The model provide...
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...
Most demonstrations of how people make decisions in risky situations rely on decisions from descript...
In decisions from experience, there are 2 experimental paradigms: sampling and repeated-choice. In t...
This paper presents a learning theory pertinent to dynamic decision making (DDM) called instancebase...
This paper presents a learning theory pertinent to dynamic decision making (DDM) called instance-bas...
Although the principle of bounded rationality seems more realistic for formulating formal models of ...
Decision models are essential theoretical tools in the study of choice behavior, but there is little...
Mathematical and computational decision models are powerful tools for studying choice behavior, and ...
Research on risky and intertemporal decision-making often focuses on descriptive models of choice. T...
Despite all the differences offered in theories of utility formation and decisions from experience/ ...
A model of decision making is introduced that provides a unified approach for predicting choices und...
Learning to choose adaptively when faced with uncertain consequences is a central challenge for deci...
The 2N-ary choice tree model accounts for response times and choice probabilities in multi-alternati...