A new evaluation method is proposed for comparing learning models used for predicting decisions based on experience. The method is based on the generalization of models' predictions at the individual level. First, it evaluates the ability to make a priori predictions for decisions in new tasks using parameters from different tasks performed by an individual decision-maker. Second, it evaluates the consistency of parameters estimated in different tasks performed by the same person. We use this method to examine two rules for updating past experience with payoff feedback: The Delta rule, where only the chosen option is updated; and a Decay-Reinforcement rule, where additionally, non-chosen options are discounted. The results reveal that altho...
A. Decomposing model behavior into two metrics. We examined model behavior along two specific aspect...
Do we learn from our own experience or from observing others? Ralph-C Bayer ∗ and Hang Wu† Learning ...
The thesis discuses reliability estimation of individual predictions in the supervised learning fram...
It is a hallmark of a good model to make accurate a priori predictions to new conditions (Busemeyer ...
It is a hallmark of a good model to make accurate a priori predictions to new conditions (Busemeyer ...
We analyze behavior in two basic classes of decision tasks: description-based and experience-based. ...
Computational models of learning and the theories they represent are often validated by calibrating ...
Two types of learning points (summary label and rule code) were crossed with either one modeled situ...
W.K. Estes often championed an approach to model development whereby an existing model was augmented...
Session: Student Modeling & PersonalizationInternational audienceWe describe a method to evaluate ho...
Various algorithms are capable of learning a set of classification rules from a number of observatio...
Decision-making is assumed to be supported by model-free and model-based systems: the model-free sys...
Generalisation in learning means that learning with one particular stimulus influences responding to...
During knowledge acquisition multiple alternative potential rules all appear equally credible. This ...
Experimental data is used to test a variety of learning models using a model that extends several of...
A. Decomposing model behavior into two metrics. We examined model behavior along two specific aspect...
Do we learn from our own experience or from observing others? Ralph-C Bayer ∗ and Hang Wu† Learning ...
The thesis discuses reliability estimation of individual predictions in the supervised learning fram...
It is a hallmark of a good model to make accurate a priori predictions to new conditions (Busemeyer ...
It is a hallmark of a good model to make accurate a priori predictions to new conditions (Busemeyer ...
We analyze behavior in two basic classes of decision tasks: description-based and experience-based. ...
Computational models of learning and the theories they represent are often validated by calibrating ...
Two types of learning points (summary label and rule code) were crossed with either one modeled situ...
W.K. Estes often championed an approach to model development whereby an existing model was augmented...
Session: Student Modeling & PersonalizationInternational audienceWe describe a method to evaluate ho...
Various algorithms are capable of learning a set of classification rules from a number of observatio...
Decision-making is assumed to be supported by model-free and model-based systems: the model-free sys...
Generalisation in learning means that learning with one particular stimulus influences responding to...
During knowledge acquisition multiple alternative potential rules all appear equally credible. This ...
Experimental data is used to test a variety of learning models using a model that extends several of...
A. Decomposing model behavior into two metrics. We examined model behavior along two specific aspect...
Do we learn from our own experience or from observing others? Ralph-C Bayer ∗ and Hang Wu† Learning ...
The thesis discuses reliability estimation of individual predictions in the supervised learning fram...