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首页> 外文期刊>Frontiers in Veterinary Science >Mind the Queue: A Case Study in Visualizing Heterogeneous Behavioral Patterns in Livestock Sensor Data Using Unsupervised Machine Learning Techniques
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Mind the Queue: A Case Study in Visualizing Heterogeneous Behavioral Patterns in Livestock Sensor Data Using Unsupervised Machine Learning Techniques

机译:思想队列:使用无监督机器学习技术可视化牲畜传感器数据中异构行为模式的案例研究

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Sensor technologies allow ethologists to continuously monitor the behaviors of large numbers of animals over extended periods of time. This creates new opportunities study livestock behavior in large-scale commercial settings, but also new methodological challenges. Densely sampled behavioral data from large heterogenous groups can contain a range of complex stochastic structures that may be difficult to visualize using conventional exploratory data analysis techniques. The goal of this research was to assess the efficacy of unsupervised machine learning tools in recovering complex behavioral patterns from such datasets to better inform subsequent statistical modeling. This methodological case study was carried out using records on milking order, or the sequence in which cows arrange themselves as they enter the milking parlor. Data was collected over a 6-month period from a closed group of 200 mixed-parity Holstein cattle on an organic dairy. Cows at the front and rear of the queue proved more consistent in their entry position than animals at the center of the herd, a systematic pattern of heterogeneity seen more clearly using entropy estimates, a scale-free alternative to variance that is robust to outliers. Dimension reduction techniques were then used to visualize relationships between cows. No evidence of social cohesion was recovered, but Diffusion Map embeddings proved more adept than PCA at revealing the underlying linear geometry of this data. Median parlor entry positions from the pre- and post-pasture subperiods were highly correlated (R2=0.91), suggesting a surprising degree of temporal stationarity. Data Mechanics visualizations, however, revealed heterogenous nonstationary among subgroups of animals in the center of the group and herd-level temporal outliers. A repeated measures model recovered inconsistent evidence of a relationships between entry position and cow attributes. Mutual conditional entropy tests, a permutation-based approach to assessing bivariate correlations robust to nonindependence, confirmed a significant but nonlinear association with peak milk yield, but revealed the age effect to be potentially confounded by health status. Finally, queueing records were related back to behaviors recorded via ear tag accelerometers using linear models and mutual conditional entropy tests. Both approaches recovered consistent evidence of differences in home pen behaviors across subsections of the queue.
机译:传感器技术允许道德学家在延长的时间内连续监测大量动物的行为。这会在大规模商业环境中创造新的机会研究牲畜行为,也是新的方法论挑战。来自大异源基团的密集采样行为数据可以包含一系列复杂的随机结构,其可能难以使用传统的探索数据分析技术来可视化。该研究的目标是评估无监督机器学习工具在从这些数据集中恢复复杂的行为模式以更好地通知随后的统计建模的功效。使用挤奶令上的记录或奶牛在进入挤奶厅时安排的顺序进行该方法学案例研究。在有机乳制品上的封闭组200个混合奇偶刺耳牛群中收集了7个月的数据。队列前后的奶牛在其进入位置的进入姿势中经过比群体中心的动物更加一致,利用熵估计,更清楚地看到的异质性的系统模式,这是对异常值强大的无规模的替代方案。然后使用尺寸减少技术来可视化奶牛之间的关系。没有恢复社会凝聚力的证据,但扩散地图嵌入式在揭示此数据的底层线性几何形状时,比PCA更加娴熟。来自前牧场和后牧场潜水期的中位数的入口位置具有高度相关性(R2 = 0.91),表明令人惊讶的时间安平度。然而,数据力学可视化揭示了本集团中心的动物亚组之间的异常非营养性,以及群体级时间异常值。重复措施模型恢复了入境位置与牛属性之间关系的不一致证据。相互条件熵试验,评估生物相关性的基于允许的方法鲁棒到非依赖性,证实了与牛奶产量的显着但非线性关联,但揭示了由于健康状况可能会混淆的年龄效应。最后,排队记录与使用线性模型和相互条件熵测试通过耳标加速度计记录的行为。两种方法都恢复了队列小节的家庭笔行为差异的一致证据。

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