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首页> 外文期刊>Learning & behavior >Investigating the impact of observation errors on the statistical performance of network-based diffusion analysis.
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Investigating the impact of observation errors on the statistical performance of network-based diffusion analysis.

机译:调查观察误差对基于网络的扩散分析的统计性能的影响。

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摘要

Experiments in captivity have provided evidence for social learning, but it remains challenging to demonstrate social learning in the wild. Recently, we developed network-based diffusion analysis (NBDA; 2009) as a new approach to inferring social learning from observational data. NBDA fits alternative models of asocial and social learning to the diffusion of a behavior through time, where the potential for social learning is related to a social network. Here, we investigate the performance of NBDA in relation to variation in group size, network heterogeneity, observer sampling errors, and duration of trait diffusion. We find that observation errors, when severe enough, can lead to increased Type I error rates in detecting social learning. However, elevated Type I error rates can be prevented by coding the observed times of trait acquisition into larger time units. Collectively, our results provide further guidance to applying NBDA and demonstrate that the method is more robust to sampling error than initially expected. Supplemental materials for this article may be downloaded from http://lb.psychonomic-journals.org/content/supplemental.
机译:圈养实验为社会学习提供了证据,但是在野外证明社会学习仍然具有挑战性。最近,我们开发了基于网络的扩散分析(NBDA; 2009),作为从观测数据推断社会学习的新方法。 NBDA使社会和社交学习的替代模型适合于行为随时间的传播,其中社交学习的潜力与社交网络有关。在这里,我们调查了NBDA的性能与组大小,网络异质性,观察者采样错误和特征扩散持续时间的变化有关。我们发现,观察错误在足够严重的情况下会导致检测社会学习中的I型错误率增加。但是,可以通过将观察到的特征获取时间编码为较大的时间单位来防止I型错误率升高。总的来说,我们的结果为应用NBDA提供了进一步的指导,并证明该方法对抽样误差的耐受性比最初预期的要强。可以从http://lb.psychonomic-journals.org/content/supplemental下载本文的补充材料。

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