International audienceWe compared computational models and human performance on learning to solve a high-level, planning-intensive problem. Humans and models were subjected to three learning regimes: reinforcement, imitation, and instruction. We modeled learning by reinforcement (rewards) using SARSA, a softmax selection criterion and a neural network function approximator; learning by imitation using supervised learning in a neural network; and learning by instructions using a knowledge-based neural network. We had previously found that human participants who were told if their answers were correct or not (a reinforcement group) were less accurate than participants who watched demonstrations of successful solutions of the task (an imitatio...
Neural Network models have received increased attention in the recent years. Aimed at achieving huma...
Sequential decisions and predictions are common problems in natural language processing, robotics, a...
Artificial agents expected to operate alongside humans in daily life will be expected to handle nove...
International audienceWe compared computational models and human performance on learning to solve a ...
The information processing theory of problem solving has emphasized search and heuristics and compar...
Intellectual expertise is knowledge and ability that a person has that allows them to solve extremel...
The difficulties of learning in multilayered networks of computational units has limited the use of ...
Abstract: "Learning as a function of task complexity was examined in human learning and two connecti...
The aim of this thesis is to create precise computational models of how humans create and use hierar...
We report the results of an experiment in which human subjects were trained to perform a percep-tual...
A common problem in Reinforcement Learning (RL) is that the reward function is hard to express. This...
Computer simulation experiments were performed to examine the effectiveness of OR- and comparative-r...
Humans display a remarkable ability to learn from previous experience. Far from being passively rece...
How do people learn new abstract concepts? The approach taken in this work is to develop a theoretic...
This paper presents an approach to problem solving through imitation. It introduces the Statistical ...
Neural Network models have received increased attention in the recent years. Aimed at achieving huma...
Sequential decisions and predictions are common problems in natural language processing, robotics, a...
Artificial agents expected to operate alongside humans in daily life will be expected to handle nove...
International audienceWe compared computational models and human performance on learning to solve a ...
The information processing theory of problem solving has emphasized search and heuristics and compar...
Intellectual expertise is knowledge and ability that a person has that allows them to solve extremel...
The difficulties of learning in multilayered networks of computational units has limited the use of ...
Abstract: "Learning as a function of task complexity was examined in human learning and two connecti...
The aim of this thesis is to create precise computational models of how humans create and use hierar...
We report the results of an experiment in which human subjects were trained to perform a percep-tual...
A common problem in Reinforcement Learning (RL) is that the reward function is hard to express. This...
Computer simulation experiments were performed to examine the effectiveness of OR- and comparative-r...
Humans display a remarkable ability to learn from previous experience. Far from being passively rece...
How do people learn new abstract concepts? The approach taken in this work is to develop a theoretic...
This paper presents an approach to problem solving through imitation. It introduces the Statistical ...
Neural Network models have received increased attention in the recent years. Aimed at achieving huma...
Sequential decisions and predictions are common problems in natural language processing, robotics, a...
Artificial agents expected to operate alongside humans in daily life will be expected to handle nove...