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机译:期刊追踪文章摘要

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Sequence segmentation is a well-studied problem, where given a sequence of elements, an integer K, and some measure of homogeneity, the task is to split the sequence into K contiguous segments that are maximally homogeneous. A classic approach to find the optimal solution is by using a dynamic program. Unfortunately, the execution time of this program is quadratic with respect to the length of the input sequence. This makes the algorithm slow for a sequence of non-trivial length. In this paper we study segmentations whose measure of goodness is based on log-linear models, a rich family that contains many of the standard distributions. We present a theoretical result allowing us to prune many suboptimal segmentations. Using this result, we modify the standard dynamic program for ID log-linear models, and by doing so reduce the computational time. We demonstrate empirically, that this approach can significantly reduce the computational burden of finding the optimal segmentation.
机译:序列分割是一个经过充分研究的问题,其中给定一个元素序列,一个整数K和一些同质性度量,任务是将序列分成最大相似的K个连续片段。寻找最佳解决方案的经典方法是使用动态程序。不幸的是,该程序的执行时间相对于输入序列的长度是二次的。对于非平凡长度的序列,这会使算法变慢。在本文中,我们研究了基于对数线性模型(其包含许多标准分布的丰富族)的分段度量,其优度度量。我们提出了一个理论结果,使我们可以修剪许多次优的分割。使用此结果,我们修改了ID对数线性模型的标准动态程序,从而减少了计算时间。我们凭经验证明,这种方法可以大大减少寻找最佳分割的计算负担。

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