human strategic behavior
Deep Learning for Predicting Human Strategic Behavior
Predicting the behavior of human participants in strategic settings is an important problem in many domains. Most existing work either assumes that participants are perfectly rational, or attempts to directly model each participant's cognitive processes based on insights from cognitive psychology and experimental economics. In this work, we present an alternative, a deep learning approach that automatically performs cognitive modeling without relying on such expert knowledge. We introduce a novel architecture that allows a single network to generalize across different input and output dimensions by using matrix units rather than scalar units, and show that its performance significantly outperforms that of the previous state of the art, which relies on expert-constructed features.
Deep Learning for Predicting Human Strategic Behavior
Predicting the behavior of human participants in strategic settings is an important problem in many domains. Most existing work either assumes that participants are perfectly rational, or attempts to directly model each participant's cognitive processes based on insights from cognitive psychology and experimental economics. In this work, we present an alternative, a deep learning approach that automatically performs cognitive modeling without relying on such expert knowledge. We introduce a novel architecture that allows a single network to generalize across different input and output dimensions by using matrix units rather than scalar units, and show that its performance significantly outperforms that of the previous state of the art, which relies on expert-constructed features.
Reviews: Deep Learning for Predicting Human Strategic Behavior
The problem is well-motivated and important. The proposed architecture is novel and appropriate for these type of problems and could lead to better prediction of strategic interaction. It is clearly beating the state of the art; though it is not entirely clear how/why. The paper is written well (except for some ambiguities that could be addressed in the response and camera-ready), which helps its potential impact. There are a number of seemingly arbitrary choices made throughout the paper.
Deep Learning for Predicting Human Strategic Behavior
Hartford, Jason S., Wright, James R., Leyton-Brown, Kevin
Predicting the behavior of human participants in strategic settings is an important problem in many domains. Most existing work either assumes that participants are perfectly rational, or attempts to directly model each participant's cognitive processes based on insights from cognitive psychology and experimental economics. In this work, we present an alternative, a deep learning approach that automatically performs cognitive modeling without relying on such expert knowledge. We introduce a novel architecture that allows a single network to generalize across different input and output dimensions by using matrix units rather than scalar units, and show that its performance significantly outperforms that of the previous state of the art, which relies on expert-constructed features. Papers published at the Neural Information Processing Systems Conference.