Raudies Christina, Gygax Lorenz
Humboldt-Universität zu Berlin, Department of Life Sciences, Albrecht Daniel Thaer Institute of Agricultural and Horticultural Sciences, Animal Husbandry and Ethology, Unter den Linden 6, 10099 Berlin, Germany.
Anim Welf. 2024 Nov 11;33:e51. doi: 10.1017/awf.2024.48. eCollection 2024.
Behavioural complexity is likely to reflect how animals cope with their environment. A large behavioural repertoire and the ability to flexibly apply these behaviours provide an individual with a greater likelihood of adapting to its (captive) environment. Here, we developed a procedure to aggregate different behavioural measures into a condensed measure of behavioural complexity based on 14 features, which were previously proposed (e.g. number of behaviours, Shannon diversity index) as well as some new features of behavioural complexity (e.g. variances of within and between transition durations). To test the measure, artificial behavioural sequences with potentially varying complexity were created using an individual-based modelling approach. With a Principal Component Analysis, the features extracted from these sequences could be reduced to two components ('general complexity' and 'state variability') explaining 59.64 and 27.68% of the total variance, respectively. The effect of the aspects of the artificial behavioural sequences on 'general complexity' and 'transitions variability' were analysed using linear mixed-effects models. The number of behavioural categories and the proportion of short behavioural states had the largest effect on the components. Both components were increasing with a greater number of behavioural categories, whereas the proportion of short behavioural states the opposite effect on the components. We also tested the approach on real data-sets. The principle components were not identical to the ones from the simulation. Yet, we found consistencies and similarities in the loadings. The approach for an aggregated measure of behavioural complexity developed here could form the basis of an individual-based animal welfare indicator for intensively kept animals.
行为复杂性可能反映了动物应对环境的方式。丰富的行为库以及灵活应用这些行为的能力,使个体更有可能适应其(圈养)环境。在此,我们开发了一种程序,基于14个特征将不同的行为测量指标汇总为行为复杂性的综合测量指标,这些特征包括先前提出的(如行为数量、香农多样性指数)以及一些行为复杂性的新特征(如转换持续时间内和之间的方差)。为了测试该测量指标,我们使用基于个体的建模方法创建了具有潜在不同复杂性的人工行为序列。通过主成分分析,从这些序列中提取的特征可以简化为两个成分(“一般复杂性”和“状态变异性”),分别解释总方差的59.64%和27.68%。使用线性混合效应模型分析了人工行为序列各方面对“一般复杂性”和“转换变异性”的影响。行为类别数量和短行为状态的比例对这些成分的影响最大。两个成分都随着行为类别数量的增加而增加,而短行为状态的比例对这些成分有相反的影响。我们还在真实数据集上测试了该方法。主成分与模拟中的主成分并不相同。然而,我们在载荷中发现了一致性和相似性。这里开发的行为复杂性综合测量方法可以作为密集饲养动物基于个体的动物福利指标的基础。