Modelling decision-making biases

Front Comput Neurosci. 2023 Oct 20:17:1222924. doi: 10.3389/fncom.2023.1222924. eCollection 2023.

Abstract

Biases are a fundamental aspect of everyday life decision-making. A variety of modelling approaches have been suggested to capture decision-making biases. Statistical models are a means to describe the data, but the results are usually interpreted according to a verbal theory. This can lead to an ambiguous interpretation of the data. Mathematical cognitive models of decision-making outline the structure of the decision process with formal assumptions, providing advantages in terms of prediction, simulation, and interpretability compared to statistical models. We compare studies that used both signal detection theory and evidence accumulation models as models of decision-making biases, concluding that the latter provides a more comprehensive account of the decision-making phenomena by including response time behavior. We conclude by reviewing recent studies investigating attention and expectation biases with evidence accumulation models. Previous findings, reporting an exclusive influence of attention on the speed of evidence accumulation and prior probability on starting point, are challenged by novel results suggesting an additional effect of attention on non-decision time and prior probability on drift rate.

Keywords: DDM; EAM; SDT; attention; cognitive modelling; decision-making bias; prior probability.

Publication types

  • Review

Grants and funding

This work was supported by the Deep Brain ERC Cog grant [grant number 8674750]. Funding sources had no role in the design, writing or interpretation of this review.