Answering linear optimization queries with an approximate stream index

作者:Gang Luo, Kun-Lung Wu, Philip S. Yu

摘要

We propose a SAO index to approximately answer arbitrary linear optimization queries in a sliding window of a data stream. It uses limited memory to maintain the most “important” tuples. At any time, for any linear optimization query, we can retrieve the approximate top-K tuples in the sliding window almost instantly. The larger the amount of available memory, the better the quality of the answers is. More importantly, for a given amount of memory, the quality of the answers can be further improved by dynamically allocating a larger portion of the memory to the outer layers of the SAO index.

论文关键词:Indexing method, Query processing, Relational database, Stream processing, Linear optimization query

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论文官网地址:https://doi.org/10.1007/s10115-008-0157-z