Computational models of learning and the theories they represent are often validated by calibrating them to human data on decision outcomes. However, only a few models explain the process by which these decision outcomes are reached. We argue that models of learning should be able to reflect the process through which the decision outcomes are reached, and validating a model on the process is likely to help simultaneously explain both the process as well as the decision outcome. To demonstrate the proposed validation, we use a large dataset from the Technion Prediction Tournament and an existing Instance-based Learning Model. We present two ways of calibrating the Model’s parameters to human data: on an outcome measure and on a process measu...
Session: Student Modeling & PersonalizationInternational audienceWe describe a method to evaluate ho...
<p>One form of inertia is the tendency to repeat the last decision irrespective of the obtained outc...
We have developed a process model that learns in multiple ways while finding faults in a simple cont...
Computational models of learning and the theories they represent are often validated by calibrating ...
Many models in Cognitive Science require data to calibrate parameters. Some modelers calibrate their...
Decision-making is assumed to be supported by model-free and model-based systems: the model-free sys...
Learning probabilistic classification and prediction models that generate accurate probabilities is ...
<div><p>Many accounts of decision making and reinforcement learning posit the existence of two disti...
Decision-making is assumed to be supported by model-free and model-based systems: the model-free sys...
Model-based reinforcement learning (MBRL) has often been touted for its potential to improve on the ...
A new evaluation method is proposed for comparing learning models used for predicting decisions base...
Reinforcement learning (RL) is a concept that has been invaluable to fields including machine learni...
How to compute initially unknown reward values makes up one of the key problems in reinforcement lea...
Modelling a domain, a process, or data is a common way of understanding it. The purpose of modelling...
Much research has been conducted in the area of machine learning algorithms; however, the question o...
Session: Student Modeling & PersonalizationInternational audienceWe describe a method to evaluate ho...
<p>One form of inertia is the tendency to repeat the last decision irrespective of the obtained outc...
We have developed a process model that learns in multiple ways while finding faults in a simple cont...
Computational models of learning and the theories they represent are often validated by calibrating ...
Many models in Cognitive Science require data to calibrate parameters. Some modelers calibrate their...
Decision-making is assumed to be supported by model-free and model-based systems: the model-free sys...
Learning probabilistic classification and prediction models that generate accurate probabilities is ...
<div><p>Many accounts of decision making and reinforcement learning posit the existence of two disti...
Decision-making is assumed to be supported by model-free and model-based systems: the model-free sys...
Model-based reinforcement learning (MBRL) has often been touted for its potential to improve on the ...
A new evaluation method is proposed for comparing learning models used for predicting decisions base...
Reinforcement learning (RL) is a concept that has been invaluable to fields including machine learni...
How to compute initially unknown reward values makes up one of the key problems in reinforcement lea...
Modelling a domain, a process, or data is a common way of understanding it. The purpose of modelling...
Much research has been conducted in the area of machine learning algorithms; however, the question o...
Session: Student Modeling & PersonalizationInternational audienceWe describe a method to evaluate ho...
<p>One form of inertia is the tendency to repeat the last decision irrespective of the obtained outc...
We have developed a process model that learns in multiple ways while finding faults in a simple cont...