TL;DR
This paper introduces two attention-based neural network models to better capture the heterogeneity and complexity of human decision-making in dynamic tasks, outperforming traditional models like IBL.
Contribution
The work develops novel neural network models that incorporate attention mechanisms to model individual differences in human decisions, advancing beyond fixed-form functions.
Findings
Neural network models outperform IBL in representing human decisions
Models achieve similar interpretability to IBL
Experimental results on two human decision datasets
Abstract
Modeling human cognitive processes in dynamic decision-making tasks has been an endeavor in AI for a long time because such models can help make AI systems more intuitive, personalized, mitigate any human biases, and enhance training in simulation. Some initial work has attempted to utilize neural networks (and large language models) but often assumes one common model for all humans and aims to emulate human behavior in aggregate. However, the behavior of each human is distinct, heterogeneous, and relies on specific past experiences in certain tasks. For instance, consider two individuals responding to a phishing email: one who has previously encountered and identified similar threats may recognize it quickly, while another without such experience might fall for the scam. In this work, we build on Instance Based Learning (IBL) that posits that human decisions are based on similar…
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