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OLAP Data Cube Compression Techniques:A Ten-Year-Long History

机译:OLAP数据多维数据集压缩技术:十年历史

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OnLine Analytical Processing (OLAP) is relevant for a plethora of Intelligent Data Analysis and Mining Applications and Systems, as it offers powerful tools for exploring, querying and mining massive amounts of data on the basis of fortunate and well-consolidated multidimensional and a multi-resolution metaphors over data. Applicative settings for which OLAP plays a critical role are manyfold, and span from Business Intelligence to Complex Information Retrieval and Sensor and Stream Data Analysis. Recently, the Database and Data Warehousing research community has experienced an explosion of OLAP-related methodologies and techniques aimed at improving the capabilities and the opportunities of complex mining processes over heterogeneous-in-nature, inter-related and massive data repositories. Despite this, open problems still arise, among which the so-called curse of dimensionality problem plays a major role. This problem refers to well-understood limitations of state-of-the-art OLAP data processing techniques in elaborating, querying and mining multidimensional data when data cubes grow in size and dimension number. This evidence has originated a large spectrum of research efforts in the context of Approximate OLAP Query Answering techniques, whose main idea consists in compressing target data cubes in order to originate compressed data structures able of retrieving approximate answers to OLAP queries at a tolerable query error. This research proposes an excerpt of a ten-year-loug history of OLAP data cube compression techniques, by particularly focusing on three major results, namely △ - Syn, K_(lsa) and CS — Hist.
机译:联机分析处理(OLAP)与众多智能数据分析和挖掘应用程序和系统相关,因为它提供了强大的工具,可以基于幸运的,经过很好整合的多维和多层次数据来探索,查询和挖掘大量数据。解决数据的隐喻。 OLAP扮演关键角色的应用设置有很多,范围从商业智能到复杂信息检索以及传感器和流数据分析。最近,数据库和数据仓库研究社区经历了与OLAP相关的方法和技术的爆炸式增长,旨在提高异构,互相关和海量数据存储库上复杂挖掘过程的功能和机会。尽管如此,仍然出现公开的问题,其中所谓的维数问题的诅咒起着主要作用。此问题是指当数据多维数据集的大小和维数增加时,在阐述,查询和挖掘多维数据时,现有的OLAP数据处理技术已广为人知的局限性。该证据已经在近似OLAP查询应答技术的背景下进行了广泛的研究工作,其主要思想在于压缩目标数据立方体,以便生成能够以可容忍的查询错误检索OLAP查询的近似答案的压缩数据结构。这项研究通过特别关注△-Syn,K_(lsa)和CS_Hist这三个主要结果,提出了OLAP数据立方体压缩技术十年历史的摘录。

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