数据概要分析

Ziawasch Abedjan, Lukasz Golab, Felix Naumann
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引用次数: 104

摘要

对于任何应用程序,在使用数据集之前的一个关键要求是了解手头的数据集及其元数据。元数据发现的过程称为数据分析。分析活动的范围从特别的方法,比如对数据的随机子集进行观察或制定聚合查询,到使用专用分析工具对数据集的结构信息和统计进行系统推断。在本教程中,我们将强调数据分析作为任何与数据相关的用例的一部分的重要性,并通过分类数据分析任务和回顾最新的数据分析系统和技术来讨论数据分析领域。特别地,我们讨论了数据分析中的难题,例如依赖项发现算法和动态数据和流的分析算法。最后,我们对数据分析领域的未来研究方向进行了总结。本教程基于我们对分析关系数据[1]的调查。
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Data profiling
One of the crucial requirements before consuming datasets for any application is to understand the dataset at hand and its metadata. The process of metadata discovery is known as data profiling. Profiling activities range from ad-hoc approaches, such as eye-balling random subsets of the data or formulating aggregation queries, to systematic inference of structural information and statistics of a dataset using dedicated profiling tools. In this tutorial, we highlight the importance of data profiling as part of any data-related use-case, and discuss the area of data profiling by classifying data profiling tasks and reviewing the state-of-the-art data profiling systems and techniques. In particular, we discuss hard problems in data profiling, such as algorithms for dependency discovery and profiling algorithms for dynamic data and streams. We conclude with directions for future research in the area of data profiling. This tutorial is based on our survey on profiling relational data [1].
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Data profiling SEED: A system for entity exploration and debugging in large-scale knowledge graphs TemProRA: Top-k temporal-probabilistic results analysis Durable graph pattern queries on historical graphs SCouT: Scalable coupled matrix-tensor factorization - algorithm and discoveries
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