Botero Carlos A, Mudge Andrew E, Koltz Amanda M, Hochachka Wesley M, Vehrencamp Sandra L
Center for Ecological and Evolutionary Studies, University of Groningen, 9751 NN Haren, The Netherlands.
Ethology. 2008 Dec 1;114(12):1227-1238. doi: 10.1111/j.1439-0310.2008.01576.x.
Quantifying signal repertoire size is a critical first step towards understanding the evolution of signal complexity. However, counting signal types can be so complicated and time consuming when repertoire size is large, that this trait is often estimated rather than measured directly. We studied how three common methods for repertoire size quantification (i.e., simple enumeration, curve-fitting and capture-recapture analysis) are affected by sample size and presentation style using simulated repertoires of known sizes. As expected, estimation error decreased with increasing sample size and varied among presentation styles. More surprisingly, for all but one of the presentation styles studied, curve-fitting and capture-recapture analysis yielded errors of similar or greater magnitude than the errors researchers would make by simply assuming that the number of types in an incomplete sample is the true repertoire size. Our results also indicate that studies based on incomplete samples are likely to yield incorrect ranking of individuals and spurious correlations with other parameters regardless of the technique of choice. Finally, we argue that biological receivers face similar difficulties in quantifying repertoire size than human observers and we explore some of the biological implications of this hypothesis.
量化信号库大小是理解信号复杂性进化的关键第一步。然而,当信号库规模较大时,计算信号类型可能会非常复杂且耗时,以至于这个特征通常是被估计而非直接测量。我们使用已知大小的模拟信号库,研究了三种常用的信号库大小量化方法(即简单枚举、曲线拟合和捕获 - 重捕获分析)如何受到样本大小和呈现方式的影响。正如预期的那样,估计误差随着样本大小的增加而减小,并且在不同的呈现方式之间有所变化。更令人惊讶的是,在所研究的除一种呈现方式之外的所有方式中,曲线拟合和捕获 - 重捕获分析产生的误差与研究人员仅仅假设不完整样本中的类型数量就是真实信号库大小时所犯的误差相似或更大。我们的结果还表明,基于不完整样本的研究可能会产生个体排名错误以及与其他参数的虚假相关性,而无论选择何种技术。最后,我们认为生物接收者在量化信号库大小方面面临着与人类观察者类似的困难,并探讨了这一假设的一些生物学意义。