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Multiclass Semi-supervised Learning for Animal Behavior Recognition from Accelerometer Data

机译:基于加速度计数据的动物行为识别的多类半监督学习

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In this paper we present a new Multiclass semi-supervised learning algorithm that uses a base classifier in combination with a similarity function applied to all data to find a classifier that maximizes the margin and consistency over all data. A novel multiclass loss function is presented and used to derive the algorithm. We apply the algorithm to animal behavior recognition from accelerometer data. Animal-borne accelerometer data are collected from free-ranging animals and then labeled by a human expert. The resulting data are used to train a classifier. However, labeling is not easy from accelerometer data only and it is often not feasible to observe animals fitted with an accelerometer. All current approaches to this behavior recognition task use supervised or unsupervised learning. Since unlabeled data are easy to acquire and collect, a semi-supervised approach seems appropriate and reduces the human efforts for labeling. Experiments with accelerometer data collected from free-ranging gulls and benchmark UCI datasets show that the algorithm is effective and compares favorably with existing algorithms for multiclass semi-supervised learning.
机译:在本文中,我们提出了一种新的多类半监督学习算法,该算法将基本分类器与应用于所有数据的相似度函数结合使用,以找到使所有数据的余量和一致性最大化的分类器。提出了一种新颖的多类损失函数并将其用于推导该算法。我们将该算法应用于加速度计数据中的动物行为识别。从自由放养的动物中收集动物传播的加速度计数据,然后由人类专家进行标记。结果数据用于训练分类器。但是,仅通过加速度计数据进行标记并不容易,并且观察带有加速度计的动物通常是不可行的。当前用于此行为识别任务的所有方法都使用有监督或无监督的学习。由于未标记的数据易于获取和收集,因此半监督方法似乎是合适的,并且可以减少人工标记的工作量。从自由放飞的海鸥和基准UCI数据集收集的加速度计数据进行的实验表明,该算法是有效的,并且与用于多类半监督学习的现有算法相比具有优势。

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