Department of Speech, Language, and Hearing Sciences, University of Arizona, 1131 East 2nd Street, Tucson, Arizona 85721, USA.
J Acoust Soc Am. 2012 Nov;132(5):3418-27. doi: 10.1121/1.4754523.
Psychophysical "reverse-correlation" methods allow researchers to gain insight into the perceptual representations and decision weighting strategies of individual subjects in perceptual tasks. Although these methods have gained momentum, until recently their development was limited to experiments involving only two response categories. Recently, two approaches for estimating decision weights in m-alternative experiments have been put forward. One approach extends the two-category correlation method to m > 2 alternatives; the second uses multinomial logistic regression (MLR). In this article, the relative merits of the two methods are discussed, and the issues of convergence and statistical efficiency of the methods are evaluated quantitatively using Monte Carlo simulations. The results indicate that, for a range of values of the number of trials, the estimated weighting patterns are closer to their asymptotic values for the correlation method than for the MLR method. Moreover, for the MLR method, weight estimates for different stimulus components can exhibit strong correlations, making the analysis and interpretation of measured weighting patterns less straightforward than for the correlation method. These and other advantages of the correlation method, which include computational simplicity and a close relationship to other well-established psychophysical reverse-correlation methods, make it an attractive tool to uncover decision strategies in m-alternative experiments.
心理物理学的“反向相关”方法可以帮助研究人员深入了解个体在感知任务中的感知表示和决策权重策略。尽管这些方法已经得到了广泛的应用,但直到最近,它们的发展仅限于涉及两个反应类别的实验。最近,已经提出了两种用于估计多项选择实验中决策权重的方法。一种方法将两类别相关方法扩展到 m > 2 个选择;第二种方法使用多项逻辑回归 (MLR)。本文讨论了这两种方法的优缺点,并通过蒙特卡罗模拟对方法的收敛性和统计效率进行了定量评估。结果表明,对于一系列试验次数的值,相关方法估计的权重模式比 MLR 方法更接近其渐近值。此外,对于 MLR 方法,不同刺激成分的权重估计可能存在强烈的相关性,使得分析和解释测量的权重模式不如相关方法直接。相关方法的这些优势,包括计算简单以及与其他成熟的心理物理学反向相关方法密切相关,使其成为揭示多项选择实验中决策策略的一种有吸引力的工具。