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Structuring Time Series Data to Gain Insight into Agent Behaviour

机译:构建时间序列数据以深入了解座席行为

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Here we introduce a data staging algorithm designed to reconstruct multiple time series databases into a partitioned and regularised database. The Data Aggregation Partition Reduction Algorithm, or DAPRA for short, was designed to solve the practical issue of effective and meaningful visualisation of irregularly sampled time series data. This paper firstly discusses the rationale for DAPRA, walking through its design and introduces the theoretical foundation of any DAPRA application. Later we report empirical evidence that demonstrates the practical relevance of DAPRA by its application with large and complex time series datasets from two distinct domains (financial and travel).
机译:在这里,我们介绍了一种数据分段算法,该算法旨在将多个时间序列数据库重构为一个分区的正则化数据库。数据聚合分区缩减算法(简称DAPRA)旨在解决对不规则采样的时间序列数据进行有效且有意义的可视化的实际问题。本文首先讨论了DAPRA的原理,并逐步介绍了DAPRA的设计,并介绍了DAPRA应用程序的理论基础。稍后,我们将报告经验证据,通过将DAPRA与来自两个不同领域(财务和旅行)的大型和复杂时间序列数据集一起应用来证明DAPRA的实际意义。

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