测量物体识别能力:可靠性、有效性和综合 z 分数法。

IF 4.6 2区 心理学 Q1 PSYCHOLOGY, EXPERIMENTAL Behavior Research Methods Pub Date : 2024-10-01 Epub Date: 2024-03-04 DOI:10.3758/s13428-024-02372-w
Conor J R Smithson, Jason K Chow, Ting-Yun Chang, Isabel Gauthier
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引用次数: 0

摘要

测量一般领域的物体识别能力(o)需要尽量减少特定领域的方差。一种方法是将 o 作为一个潜在变量来建模,以解释在一系列任务要求和刺激不同的测试中的表现;但是,时间和样本要求可能过高。另一种方法是通过平均各测试的 z 分数来获得 o 的综合测量值。利用 Sunday 等人的数据,《实验心理学杂志》(Journal of Experimental Psychology:General, 151, 676-694, (2022))中的数据,我们证明,仅从两个这样的物体识别测试中得到的总分,就能很好地近似(r = .79)使用更多测试集的模型计算出的因子得分。一些测试组合与因子得分的相关性高达 r = .87。随后,我们对这些测试进行了修改,以减少测试时间,并开发了一个 "奇异任务",几乎每次测试都使用一个独特的对象类别,以增加任务和刺激的多样性。为了验证我们的测试方法,163 名参与者在相隔一个月的时间里两次完成了物体识别测试。我们的短期综合 o 测量结果显示了良好的测试-再测可靠性(r = .77),首次证明了 o 随时间的推移是稳定的。智力、感知速度和早期视觉能力并不能完全解释 o 的稳定性。结构方程模型表明,我们的测试在同一潜变量上有显著的负载,并揭示了 o 作为一个潜变量具有高度的稳定性(r = .93)。聚合法是估计 o 的一种有效方法,使今后的研究更容易调查物体识别能力的个体差异。
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Measuring object recognition ability: Reliability, validity, and the aggregate z-score approach.

Measurement of domain-general object recognition ability (o) requires minimization of domain-specific variance. One approach is to model o as a latent variable explaining performance on a battery of tests which differ in task demands and stimuli; however, time and sample requirements may be prohibitive. Alternatively, an aggregate measure of o can be obtained by averaging z-scores across tests. Using data from Sunday et al., Journal of Experimental Psychology: General, 151, 676-694, (2022), we demonstrated that aggregate scores from just two such object recognition tests provide a good approximation (r = .79) of factor scores calculated from a model using a much larger set of tests. Some test combinations produced correlations of up to r = .87 with factor scores. We then revised these tests to reduce testing time, and developed an odd one out task, using a unique object category on nearly every trial, to increase task and stimuli diversity. To validate our measures, 163 participants completed the object recognition tests on two occasions, one month apart. Providing the first evidence that o is stable over time, our short aggregate o measure demonstrated good test-retest reliability (r = .77). The stability of o could not be completely accounted for by intelligence, perceptual speed, and early visual ability. Structural equation modeling suggested that our tests load significantly onto the same latent variable, and revealed that as a latent variable, o is highly stable (r = .93). Aggregation is an efficient method for estimating o, allowing investigation of individual differences in object recognition ability to be more accessible in future studies.

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来源期刊
CiteScore
10.30
自引率
9.30%
发文量
266
期刊介绍: Behavior Research Methods publishes articles concerned with the methods, techniques, and instrumentation of research in experimental psychology. The journal focuses particularly on the use of computer technology in psychological research. An annual special issue is devoted to this field.
期刊最新文献
Publisher Correction: Dimensionality and optimal combination of autonomic fear-conditioning measures in humans. Author Correction: Discovering trends of social interaction behavior over time: An introduction to relational event modeling. Author Correction: r2mlm: An R package calculating R-squared measures for multilevel models. Correction: Development and validation of the Emotional Climate Change Stories (ECCS) stimuli set. Geofencing in location-based behavioral research: Methodology, challenges, and implementation.
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