Wild Minds Lab, School of Psychology and Neuroscience, University of St Andrews, St Andrews, UK.
School of Biological and Behavioural Sciences, Queen Mary University of London, London, UK.
Behav Res Methods. 2024 Oct;56(7):6520-6537. doi: 10.3758/s13428-024-02368-6. Epub 2024 Mar 4.
Parsing signals from noise is a general problem for signallers and recipients, and for researchers studying communicative systems. Substantial efforts have been invested in comparing how other species encode information and meaning, and how signalling is structured. However, research depends on identifying and discriminating signals that represent meaningful units of analysis. Early approaches to defining signal repertoires applied top-down approaches, classifying cases into predefined signal types. Recently, more labour-intensive methods have taken a bottom-up approach describing detailed features of each signal and clustering cases based on patterns of similarity in multi-dimensional feature-space that were previously undetectable. Nevertheless, it remains essential to assess whether the resulting repertoires are composed of relevant units from the perspective of the species using them, and redefining repertoires when additional data become available. In this paper we provide a framework that takes data from the largest set of wild chimpanzee (Pan troglodytes) gestures currently available, splitting gesture types at a fine scale based on modifying features of gesture expression using latent class analysis (a model-based cluster detection algorithm for categorical variables), and then determining whether this splitting process reduces uncertainty about the goal or community of the gesture. Our method allows different features of interest to be incorporated into the splitting process, providing substantial future flexibility across, for example, species, populations, and levels of signal granularity. Doing so, we provide a powerful tool allowing researchers interested in gestural communication to establish repertoires of relevant units for subsequent analyses within and between systems of communication.
从噪声中提取信号是信号发送者和接收者以及研究通讯系统的研究人员面临的一个普遍问题。人们投入了大量精力来比较其他物种如何编码信息和意义,以及信号结构如何。然而,研究依赖于识别和区分代表有意义的分析单位的信号。早期定义信号库的方法采用自上而下的方法,将案例分类为预定义的信号类型。最近,更耗费精力的方法采取自下而上的方法,描述每个信号的详细特征,并根据多维特征空间中以前无法检测到的相似性模式对案例进行聚类。然而,从使用这些信号的物种的角度评估由此产生的信号库是否由相关单元组成,并在有更多数据可用时重新定义信号库仍然是至关重要的。在本文中,我们提供了一个框架,该框架采用了目前可获得的最大一组野生黑猩猩(Pan troglodytes)手势数据,使用潜在类别分析(一种用于分类变量的基于模型的聚类检测算法)在精细尺度上对手势类型进行划分,然后确定这种划分过程是否减少了对手势目标或社区的不确定性。我们的方法允许将不同感兴趣的特征纳入划分过程,为跨物种、群体和信号粒度级别等方面提供了巨大的灵活性。通过这样做,我们提供了一个强大的工具,使对手势通讯感兴趣的研究人员能够为随后在通讯系统内和系统间的分析建立相关单元的信号库。