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Time Series Discretization via MDL-Based Histogram Density Estimation

机译:通过基于MDL的直方图密度估计进行时间序列离散化

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In knowledge discovery from real-valued time series, discretization is often a key preprocessing that extends the applicability of sophisticated tools for symbolic data mining or logic-based machine learning. For finding meaningful discrete values that can be directly translated into some intuitive symbols, this paper proposes a novel discretization method based on density estimation using a two-dimensional (measurement vs. time) histogram of variable-width bins. We extend Kontkanen and Myllymaki's histogram construction method into our two dimensional case, keeping the efficiency brought by dynamic programming. Experimental results with artificial and real datasets show the robustness and the usefulness of the proposed method.
机译:在从实值时间序列的知识发现中,离散化通常是关键的预处理,可以扩展用于符号数据挖掘或基于逻辑的机器学习的复杂工具的适用性。为了找到可以直接转换为一些直观符号的有意义的离散值,本文提出了一种新的离散化方法,该方法基于密度估计,使用可变宽度仓的二维(测量与时间)直方图。我们将Kontkanen和Myllymaki的直方图构造方法扩展到我们的二维情况下,同时保持动态编程带来的效率。人工和真实数据集的实验结果表明了该方法的鲁棒性和实用性。

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