Specification-based data reduction in dimensional data warehouses

作者:

Highlights:

摘要

Many data warehouses contain massive amounts of data, accumulated over long periods of time. In some cases, it is necessary or desirable to either delete “old” data or to maintain the data at an aggregate level. This may be due to privacy concerns, in which case the data are aggregated to levels that ensure anonymity. Another reason is the desire to maintain a balance between the uses of data that change as the data age and the size of the data, thus avoiding overly large data warehouses. This paper presents effective techniques for data reduction that enable the gradual aggregation of detailed data as the data ages. With these techniques, data may be aggregated to higher levels as they age, enabling the maintenance of more compact, consolidated data and the compliance with privacy requirements. Special care is taken to avoid semantic problems in the aggregation process. The paper also describes the querying of the resulting data warehouses and an implementation strategy based on current database technology.

论文关键词:Data reduction,Data warehousing,Multidimensional data,Data models,Physical deletion

论文评审过程:Received 14 September 2006, Revised 28 January 2007, Accepted 14 June 2007, Available online 20 June 2007.

论文官网地址:https://doi.org/10.1016/j.is.2007.06.001