Optimizing BDDs for Time-Series dataset manipulation

S. Stergiou, J. Jain
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引用次数: 2

Abstract

In this work we advocate the adoption of Binary Decision Diagrams (BDDs) for storing and manipulating Time-Series datasets. We first propose a generic BDD transformation which identifies and removes 50% of all BDD edges without any loss of information. Following, we optimize the core operation for adding samples to a dataset and characterize its complexity. We identify time-range queries as one of the core operations executed on time-series datasets, and describe explicit Boolean function constructions that aid in efficiently executing them directly on BDDs. We exhibit significant space and performance gains when applying our algorithms on synthetic and real-life biosensor time-series datasets collected from field trials.
优化bdd用于时间序列数据集操作
在这项工作中,我们提倡采用二进制决策图(bdd)来存储和操作时间序列数据集。我们首先提出了一种通用的BDD转换,它可以在不丢失任何信息的情况下识别和删除所有BDD边缘的50%。接下来,我们优化了向数据集添加样本的核心操作,并描述了其复杂性。我们将时间范围查询确定为在时间序列数据集上执行的核心操作之一,并描述了明确的布尔函数结构,以帮助在bdd上有效地直接执行它们。当将我们的算法应用于从现场试验中收集的合成和真实生物传感器时间序列数据集时,我们展示了显着的空间和性能增益。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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