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Efficient learning algorithm for sparse subsequence pattern-based classification and applications to comparative animal trajectory data analysis

机译:基于稀疏后续模式的分类和应用的高效学习算法对比较动物轨迹数据分析

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Recent advances in robotics and measurement technologies have enabled biologists to record the trajectories created by animal movements. In this paper, we convert time series of animal trajectories into sequences of finite symbols, and then propose a machine learning method for gaining biological insight from the trajectory data in the form of symbol sequences. The proposed method is used for training a classifier which differentiates between the trajectories of two groups of animals such as male and female. The classifier is represented in the form of a sparse linear combination of subsequence patterns, and we call the classifier an S3P-classifier. The trained S3P-classifier is easy to interpret because each coefficient represents the specificity of the subsequence patterns in either of the two classes of animal trajectories. However, fitting an S3P-classifier is computationally challenging because the number of subsequence patterns is extremely large. The main technical contribution in this paper is the development of a novel algorithm for overcoming this computational difficulty by combining a sequential mining technique with a recently developed convex optimization technique called safe screening. We demonstrate the effectiveness of the proposed method by applying it to three animal trajectory data analysis tasks.
机译:机器人和测量技术的最新进展使生物学家能够记录动物运动创造的轨迹。在本文中,我们将时间序列转换为有限符号的序列,然后提出一种机器学习方法,用于以符号序列的形式获得从轨迹数据的生物洞察。该方法用于训练分类器,这些分类器区区分两组动物的轨迹,例如男性和女性。分类器以稀疏线性组合的后续模式的形式表示,并且我们调用分类器S3P分类器。训练有素的S3P分类器易于解释,因为每个系数代表了两种类动物轨迹中的任一个中的子序列模式的特异性。然而,拟合S3P分类器是计算的具有挑战性,因为子序列模式的数量非常大。本文的主要技术贡献是通过将顺序采矿技术与最近开发的凸优化技术相结合,开发一种克服这种计算难度的新算法。我们通过将其应用于三个动物轨迹数据分析任务来证明所提出的方法的有效性。

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