收敛时间聚合的贪心方法

J. Gordevičius, J. Gamper, Michael H. Böhlen
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引用次数: 3

摘要

时间聚合是时间数据库中一个重要的运算符,人们对其进行了各种各样的研究。在即时时间聚合(ITA)中,从时刻t的元组中计算时刻t的聚合值。ITA考虑输入数据的分布,以最小的时间粒度工作,但结果大小取决于输入时间戳,可以得到输入关系的两倍大。在跨时间聚合(STA)中,用户指定计算聚合的时间戳,从而控制结果大小。本文引入了一种新的时间聚合算子,称为贪婪简约时间聚合算子(PTAg),它结合了ITA和STA的特征。操作符通过贪婪地合并具有相似聚合值的相邻元组来扩展和近似ITA,直到结果元组的数量足够小,这可以由应用程序控制。因此,PTAg考虑数据的分布,并允许控制结果大小。我们对真实世界数据的经验评估显示出良好的结果:结果大小的显著减少只会引入小误差。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Greedy Approach Towards Parsimonious Temporal Aggregation
Temporal aggregation is a crucial operator in temporal databases and has been studied in various flavors. In instant temporal aggregation (ITA) the aggregate value at time instant t is computed from the tuples that hold at t. ITA considers the distribution of the input data and works at the smallest time granularity, but the result size depends on the input timestamps and can get twice as large as the input relation. In span temporal aggregation (STA) the user specifies the timestamps over which the aggregates are computed and thus controls the result size. In this paper we introduce a new temporal aggregation operator, called greedy parsimonious temporal aggregation (PTAg), which combines features from ITA and STA. The operator extends and approximates ITA by greedily merging adjacent tuples with similar aggregate values until the number of result tuples is sufficiently small, which can be controlled by the application. Thus, PTAg considers the distribution of the data and allows to control the result size. Our empirical evaluation on real world data shows good results: considerable reductions of the result size introduce small errors only.
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