Holistic Cube Analysis: A Query Framework for Data Insights
Many data insight questions can be viewed as searching in a large space of tables and finding important ones, where the notion of importance is defined in some adhoc user defined manner. This paper presents Holistic Cube Analysis (HoCA), a framework that augments the capabilities of relational queri...
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Zusammenfassung: | Many data insight questions can be viewed as searching in a large space of
tables and finding important ones, where the notion of importance is defined in
some adhoc user defined manner. This paper presents Holistic Cube Analysis
(HoCA), a framework that augments the capabilities of relational queries for
such problems. HoCA first augments the relational data model and introduces a
new data type AbstractCube, defined as a function which maps a region-features
pair to a relational table (a region is a tuple which specifies values of a set
of dimensions). AbstractCube provides a logical form of data, and HoCA
operators are cube-to-cube transformations. We describe two basic but
fundamental HoCA operators, cube crawling and cube join (with many possible
extensions). Cube crawling explores a region space, and outputs a cube that
maps regions to signal vectors. Cube join, in turn, is critical for
composition, allowing one to join information from different cubes for deeper
analysis. Cube crawling introduces two novel programming features,
(programmable) Region Analysis Models (RAMs) and Multi-Model Crawling.
Crucially, RAM has a notion of population features, which allows one to go
beyond only analyzing local features at a region, and program region-population
analysis that compares region and population features, capturing a large class
of importance notions. HoCA has a rich algorithmic space, such as optimizing
crawling and join performance, and physical design of cubes. We have
implemented and deployed HoCA at Google. Our early HoCA offering has attracted
more than 30 teams building applications with it, across a diverse spectrum of
fields including system monitoring, experimentation analysis, and business
intelligence. For many applications, HoCA empowers novel and powerful analyses,
such as instances of recurrent crawling, which are challenging to achieve
otherwise. |
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DOI: | 10.48550/arxiv.2302.00120 |