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Detecting when timeseries differ: Using the Bootstrapped Differences of Timeseries (BDOTS) to analyze Visual World Paradigm data (and more)

机译:检测时间何时不同:使用时间序列(机器人)的引导差异来分析视觉世界范式数据(和更多)

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摘要

In the last decades, major advances in the language sciences have been built on real-time measures of language and cognitive processing, measures like mouse-tracking, event related potentials and eye-tracking in the visual world paradigm. These measures yield densely sampled timeseries that can be highly revealing of the dynamics of cognitive processing. However, despite these methodological advances, existing statistical approaches for timeseries analyses have often lagged behind. Here, we present a new statistical approach, the Bootstrapped Differences of Timeseries (BDOTS), that can estimate the precise timewindow at which two timeseries differ. BDOTS makes minimal assumptions about the error distribution, uses a custom family-wise error correction, and can flexibly be adapted to a variety of applications. This manuscript presents the theoretical basis of this approach, describes implementational issues (in the associated R package), and illustrates this technique with an analysis of an existing dataset. Pitfalls and hazards are also discussed, along with suggestions for reporting in the literature.
机译:在过去的几十年中,语言科学的主要进步是在语言和认知处理的实时测量上建立了语言和认知处理的措施,如视觉世界范式的鼠标追踪,事件相关潜力和眼睛跟踪。这些措施产量浓密地采样的时间系,可以高度揭示认知处理的动态。然而,尽管这些方法的进步,但是,现有的时间统计方法分析通常落后。在这里,我们介绍了一种新的统计方法,统计方法(BDots)的自发差异,可以估计两个倍数不同的精确时间。 BDots对错误分布进行了最小的假设,使用自定义家庭明智的纠错,并且可以灵活适应各种应用。该稿件介绍了这种方法的理论基础,描述了实现问题(在相关的R包中),并说明了对现有数据集进行分析的这种技术。还讨论了陷阱和危害,以及在文献中报告的建议。

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