Wanelik Klara M, Farine Damien R
Department of Evolution, Ecology and Behaviour, Institute of Infection, Veterinary and Ecological Sciences, University of Liverpool, Liverpool, UK.
Department of Biology, University of Oxford, Oxford, UK.
Behav Ecol Sociobiol. 2022;76(9):127. doi: 10.1007/s00265-022-03222-5. Epub 2022 Aug 26.
Studying the social behaviour of small or cryptic species often relies on constructing networks from sparse point-based observations of individuals (e.g. live trapping data). A common approach assumes that individuals that have been detected sequentially in the same trapping location will also be more likely to have come into indirect and/or direct contact. However, there is very little guidance on how much data are required for making robust networks from such data. In this study, we highlight that sequential trap sharing networks broadly capture shared space use (and, hence, the potential for contact) and that it may be more parsimonious to directly model shared space use. We first use empirical data to show that characteristics of how animals use space can help us to establish new ways to model the potential for individuals to come into contact. We then show that a method that explicitly models individuals' home ranges and subsequent overlap in space among individuals (spatial overlap networks) requires fewer data for inferring observed networks that are more strongly correlated with the true shared space use network (relative to sequential trap sharing networks). Furthermore, we show that shared space use networks based on estimating spatial overlap are also more powerful for detecting biological effects. Finally, we discuss when it is appropriate to make inferences about social interactions from shared space use. Our study confirms the potential for using sparse trapping data from cryptic species to address a range of important questions in ecology and evolution.
Characterising animal social networks requires repeated (co-)observations of individuals. Collecting sufficient data to characterise the connections among individuals represents a major challenge when studying cryptic organisms-such as small rodents. This study draws from existing spatial mark-recapture data to inspire an approach that constructs networks by estimating space use overlap (representing the potential for contact). We then use simulations to demonstrate that the method provides consistently higher correlations between inferred (or observed) networks and the true underlying network compared to current approaches and requires fewer observations to reach higher correlations. We further demonstrate that these improvements translate to greater network accuracy and to more power for statistical hypothesis testing.
The online version contains supplementary material available at 10.1007/s00265-022-03222-5.
研究小型或隐秘物种的社会行为通常依赖于根据对个体的稀疏点状观测(如活体诱捕数据)构建网络。一种常见的方法是假设在同一诱捕地点被依次检测到的个体也更有可能进行间接和/或直接接触。然而,对于从这些数据构建可靠网络需要多少数据,几乎没有相关指导。在本研究中,我们强调顺序诱捕共享网络广泛地捕捉了共享空间利用(以及因此的接触可能性),并且直接对共享空间利用进行建模可能更为简约。我们首先使用实证数据表明动物利用空间的特征可以帮助我们建立新的方法来模拟个体接触的可能性。然后我们表明,一种明确模拟个体活动范围以及个体间随后的空间重叠的方法(空间重叠网络),相对于顺序诱捕共享网络,在推断与真实共享空间利用网络相关性更强的观测网络时需要的数据更少。此外,我们表明基于估计空间重叠的共享空间利用网络在检测生物学效应方面也更强大。最后,我们讨论何时适合从共享空间利用推断社会互动。我们的研究证实了利用隐秘物种的稀疏诱捕数据来解决生态学和进化中一系列重要问题的潜力。
表征动物社会网络需要对个体进行重复的(共同)观测。在研究隐秘生物(如小型啮齿动物)时,收集足够的数据来表征个体之间的联系是一项重大挑战。本研究借鉴现有的空间标记重捕数据,启发了一种通过估计空间利用重叠(代表接触可能性)来构建网络的方法。然后我们使用模拟来证明,与当前方法相比,该方法在推断(或观测)网络与真实潜在网络之间提供了始终更高的相关性,并且需要更少的观测来达到更高的相关性。我们进一步证明,这些改进转化为更高的网络准确性和更强的统计假设检验能力。
在线版本包含可在10.1007/s00265-022-03222-5获取的补充材料。