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The use of an unsupervised learning approach for characterizing latent behaviors in accelerometer data

机译:使用无监督学习方法来表征加速度计数据中的潜在行为

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Abstract The recent increase in data accuracy from high resolution accelerometers offers substantial potential for improved understanding and prediction of animal movements. However, current approaches used for analysing these multivariable datasets typically require existing knowledge of the behaviors of the animals to inform the behavioral classification process. These methods are thus not well-suited for the many cases where limited knowledge of the different behaviors performed exist. Here, we introduce the use of an unsupervised learning algorithm. To illustrate the method's capability we analyse data collected using a combination of GPS and Accelerometers on two seabird species: razorbills ( Alca torda ) and common guillemots ( Uria aalge ). We applied the unsupervised learning algorithm Expectation Maximization to characterize latent behavioral states both above and below water at both individual and group level. The application of this flexible approach yielded significant new insights into the foraging strategies of the two study species, both above and below the surface of the water. In addition to general behavioral modes such as flying, floating, as well as descending and ascending phases within the water column, this approach allowed an exploration of previously unstudied and important behaviors such as searching and prey chasing/capture events. We propose that this unsupervised learning approach provides an ideal tool for the systematic analysis of such complex multivariable movement data that are increasingly being obtained with accelerometer tags across species. In particular, we recommend its application in cases where we have limited current knowledge of the behaviors performed and existing supervised learning approaches may have limited utility.
机译:摘要高分辨率加速度计最近提高了数据准确性,为改善对动物运动的理解和预测提供了巨大的潜力。然而,用于分析这些多变量数据集的当前方法通常需要动物的行为的现有知识以告知行为分类过程。因此,这些方法不适用于存在对所执行的不同行为的有限知识的许多情况。在这里,我们介绍了无监督学习算法的使用。为了说明该方法的功能,我们分析了结合使用GPS和加速度计收集的两种海鸟物种的数据:剃刀(Alca torda)和海雀(Uria aalge)。我们应用了无监督学习算法“期望最大化”来表征个体和群体水平上水上和水下的潜在行为状态。这种灵活方法的应用对两种研究物种在水面之上和之下的觅食策略产生了重要的新见解。除了一般行为模式(例如飞行,漂浮以及水柱内的下降阶段和上升阶段)之外,这种方法还允许探索以前未研究和重要的行为,例如搜索和猎物追捕/捕获事件。我们建议,这种无监督的学习方法为此类复杂的多变量运动数据的系统分析提供了理想的工具,这些数据越来越多地通过跨物种的加速度计标签获得。特别是,当我们对所执行的行为的当前知识有限并且现有的监督学习方法的效用可能有限时,我们建议使用该方法。

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