通过社交网络分析预测奶牛的社交行为

H. Marina , W.F. Fikse , L. Rönnegård
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引用次数: 0

摘要

奶牛经常被饲养在空间有限的散栏中,这影响了个体之间的社会互动。乳牛的社会行为作为一种识别患病动物的宝贵工具正逐渐得到认可,但其应用却因分析密集饲养系统中社会互动的复杂性而受到阻碍。在这种情况下,精准畜牧技术为持续监测奶牛场中的二元空间关联提供了机会。本研究旨在评估利用社交网络分析预测奶牛社交行为的准确性。我们利用 149 头奶牛在研究期间连续 14 天的位置数据建立了每日社交网络。我们采用可分离的时间指数随机图模型来估算奶牛个体间社会接触形成和持续的可能性,并预测次日的社会网络。当模型中包含来自网络三角形的结构信息时,预测网络与观察网络之间的个体度中心性值(即每个个体建立的社会接触数量)之间的相关性从 0.22 到 0.49 不等。本研究提出了一种利用实时定位系统获得的空间关联信息预测集约化饲养系统中动物社会行为的新方法。研究结果表明,这种方法是实现识别奶牛预期社会行为干扰这一更大目标的关键一步。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Social network analysis to predict social behavior in dairy cattle
Dairy cattle are frequently housed in freestalls with limited space, affecting social interactions between individuals. Social behavior in dairy cattle is gaining recognition as a valuable tool for identifying sick animals, but its application is hampered by the complexities of analyzing social interactions in intensive housing systems. In this context, precision livestock technologies present the opportunity to continuously monitor dyadic spatial associations on dairy farms. The aim of this study is to evaluate the accuracy of predicting social behavior of dairy cows using social network analysis. Daily social networks were built using the position data from 149 cows over 14 consecutive days of the study period. We applied the separable temporal exponential random graph models to estimate the likelihood of formation and persistence of social contacts between dairy cows individually and to predict the social network on the subsequent day. The correlation between the individual degree centrality values, the number of established social contacts per individual, between the predicted and observed networks ranged from 0.22 to 0.49 when the structural information from network triangles was included in the model. This study presents a novel approach for predicting animal social behavior in intensive housing systems using spatial association information obtained from a real-time location system. The results indicate the potential of this approach as a crucial step toward the larger goal of identifying disruptions in dairy cows' expected social behavior.
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来源期刊
JDS communications
JDS communications Animal Science and Zoology
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