We report a way to build a series of GOMS-like cognitive user models representing a range of performance at different stages of learning. We use a spreadsheet task across multiple sessions as an example task; it takes about 20-30 min. to perform. The models were created in ACT-R using a compiler. The novice model has 29 rules and 1,152 declarative memory task elements (chunks)-it learns to create procedural knowledge to perform the task. The expert model has 617 rules and 614 task chunks (that it does not use) and 538 command string chunks-it gets slightly faster through limited declarative learning of the command strings and some further production compilation; there are a range of intermediate models. These models were tested against aggr...
Cognitive models allow predicting some aspects of utility and usability of human machine interfaces ...
At first blush, user modeling appears to be a prime candidate for straightforward application of sta...
Predicting human performance (temporally and strategically) in various scenarios has significant imp...
In this paper, we describe a high-level behavior representation language (Herbal) and report new wor...
A priori prediction of skilled human performance has the potential to be of great practical value bu...
Intelligent Tutoring Systems (ITS) are typically designed to offer one-on-one tutoring on a subject ...
The purpose of this thesis is to provide user interface designers with a methodology for predicting ...
We present a user error model that simulates a user's errors using an eyes and hands extension to co...
In human-in-the-loop machine learning, the user provides information beyond that in the training dat...
The aim of this study is to build an intelligent authoring environment for Cognitive Tutors in which...
An important strategy in cognitive training of working memory is to fine-tune task difficulty based ...
SimStudent is a machine-learning agent that learns cognitive skills by demonstration. SimStudent was...
Kieras and Polson (1985) proposed an approach for making quantitative predictions on ease of learnin...
The purpose of this research effort was to develop a practical computer-assisted aid for creating de...
In this paper, we use a computational cognitive model to make a priori predictions for an upcoming h...
Cognitive models allow predicting some aspects of utility and usability of human machine interfaces ...
At first blush, user modeling appears to be a prime candidate for straightforward application of sta...
Predicting human performance (temporally and strategically) in various scenarios has significant imp...
In this paper, we describe a high-level behavior representation language (Herbal) and report new wor...
A priori prediction of skilled human performance has the potential to be of great practical value bu...
Intelligent Tutoring Systems (ITS) are typically designed to offer one-on-one tutoring on a subject ...
The purpose of this thesis is to provide user interface designers with a methodology for predicting ...
We present a user error model that simulates a user's errors using an eyes and hands extension to co...
In human-in-the-loop machine learning, the user provides information beyond that in the training dat...
The aim of this study is to build an intelligent authoring environment for Cognitive Tutors in which...
An important strategy in cognitive training of working memory is to fine-tune task difficulty based ...
SimStudent is a machine-learning agent that learns cognitive skills by demonstration. SimStudent was...
Kieras and Polson (1985) proposed an approach for making quantitative predictions on ease of learnin...
The purpose of this research effort was to develop a practical computer-assisted aid for creating de...
In this paper, we use a computational cognitive model to make a priori predictions for an upcoming h...
Cognitive models allow predicting some aspects of utility and usability of human machine interfaces ...
At first blush, user modeling appears to be a prime candidate for straightforward application of sta...
Predicting human performance (temporally and strategically) in various scenarios has significant imp...