Department of Psychology, Durham University, Durham, UK.
School of Psychology, Liverpool John Moores University, Liverpool, UK.
Behav Res Methods. 2022 Feb;54(1):508-521. doi: 10.3758/s13428-021-01633-2. Epub 2021 Jul 13.
Observers in perceptual tasks are often reported to combine multiple sensory cues in a weighted average that improves precision-in some studies, approaching statistically optimal (Bayesian) weighting, but in others departing from optimality, or not benefitting from combined cues at all. To correctly conclude which combination rules observers use, it is crucial to have accurate measures of their sensory precision and cue weighting. Here, we present a new approach for accurately recovering these parameters in perceptual tasks with continuous responses. Continuous responses have many advantages, but are susceptible to a central tendency bias, where responses are biased towards the central stimulus value. We show that such biases lead to inaccuracies in estimating both precision gains and cue weightings, two key measures used to assess sensory cue combination. We introduce a method that estimates sensory precision by regressing continuous responses on targets and dividing the variance of the residuals by the squared slope of the regression line, "correcting-out" the error introduced by the central bias and increasing statistical power. We also suggest a complementary analysis that recovers the sensory cue weights. Using both simulations and empirical data, we show that the proposed methods can accurately estimate sensory precision and cue weightings in the presence of central tendency biases. We conclude that central tendency biases should be (and can easily be) accounted for to consistently capture Bayesian cue combination in continuous response data.
在感知任务中,观察者通常被报告为将多个感觉线索加权平均,以提高精度——在一些研究中,接近统计最优(贝叶斯)加权,但在其他研究中,偏离最优,或者根本没有从组合线索中受益。为了正确得出观察者使用的组合规则,准确衡量他们的感觉精度和线索权重至关重要。在这里,我们提出了一种新的方法,可以在具有连续反应的感知任务中准确地恢复这些参数。连续反应有很多优点,但容易受到中心趋势偏差的影响,即反应偏向于中心刺激值。我们表明,这种偏差会导致对精度增益和线索权重的估计不准确,这是评估感觉线索组合的两个关键指标。我们引入了一种通过将连续反应回归到目标上来估计感觉精度的方法,并将残差的方差除以回归线的平方斜率,从而“消除”中心偏差引入的误差并提高统计功效。我们还提出了一种补充分析方法,以恢复感觉线索权重。使用模拟数据和经验数据,我们表明,所提出的方法可以在存在中心趋势偏差的情况下准确地估计感觉精度和线索权重。我们的结论是,应该(并且可以很容易地)考虑中心趋势偏差,以一致地捕获连续反应数据中的贝叶斯线索组合。