Abstract

Most psychological experiments measure human cognitive function through the response time and accuracy of the response to a set of stimuli. Since response time and accuracy complement each other, it is often difficult to interpret cognitive performance based on only one dependent measurement and raises a speed-accuracy tradeoff (SAT) problem. In overcoming this problem, SAT experimental paradigms and models that integrate response time and accuracy have been proposed to understand information processing in human cognitive function. However, due to a lengthy SAT experiment for reliable model estimation, SAT experiments' practical limitations have been pointed out. Thus, these limitations call for an efficient technique to shorten the number of trials required to estimate the SAT function reliably. Instead of using a block's stimulus-onset asynchrony (SOA) accuracy with long block-based task trials, we introduced a Bayesian SAT function estimation using trial-by-trial response time and correctness, which makes SAT tasks flexible and easily extendable to multiple trials. We then proposed a Bayesian adaptive method to select optimal SOA by maximizing information gain to estimate model parameters. Simulation results showed that the proposed Bayesian adaptive estimation was highly efficient and robust for accuracy and precision of estimating SAT function by enabling "multiple-step ahead search."

Highlights

  • Most psychological experiments measure human cognitive function through the response time and accuracy of the response to a set of stimuli

  • We suggest two methods for adaptively estimating the speed-accuracy tradeoff (SAT) function with smaller samples

  • We firstly introduce a Bayesian inference for estimating SAT function using trial-by-trial response time (RT) and binarized correctness

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Summary

Introduction

Most psychological experiments measure human cognitive function through the response time and accuracy of the response to a set of stimuli. Since response time and accuracy complement each other, it is often difficult to interpret cognitive performance based on only one dependent measurement and raises a speed-accuracy tradeoff (SAT) problem. In overcoming this problem, SAT experimental paradigms and models that integrate response time and accuracy have been proposed to understand information processing in human cognitive function. To study additional details about human information accumulation, researchers have developed the SAT experiment, a class of experimental manipulations by spreading or limiting RT over a wide range of time, and measurement accuracy as a function of RT. (MCS), where a fixed set of SOA is predetermined by the experimenter and repeatedly presented in random order of SOA blocks

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