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Materialized View Selection Using Simulated Annealing

机译:使用模拟退火的物理化视图选择

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A data warehouse is designed for the purpose of answering decision making queries. These queries are usually long and exploratory in nature and have high response time, when processed against a continuously expanding data warehouse leading to delay in decision making. One way to reduce this response time is by using materialized views, which store pre-computed summarized information for answering decision queries. All views cannot be materialized due to their exponential space overhead. Further, selecting optimal subset of views is an NP-Complete problem. Alternatively, several view selection algorithms exist in literature, out of which most are empirical or based on heuristics like greedy, evolutionary etc. It has been observed that most of these view selection approaches find it infeasible to select good quality views for materialization for higher dimensional data sets. In this paper, a randomized view selection algorithm based on simulated annealing, for selecting Top-K views from amongst all possible sets of views in a multidimensional lattice, is presented. It is shown that the simulated annealing based view selection algorithm, in comparison to the better known greedy view selection algorithm, is able to select better quality views for higher dimensional data sets.
机译:数据仓库专为应答决策查询而设计。这些查询通常在自然界中长而探索,并且当对不断扩展的数据仓库处理导致决策时的延迟处理时,响应时间很高。减少此响应时间的一种方法是使用物化视图,该视图存储预先计算的总结信息以应答决策查询。由于其指数空间开销,所有视图都不能实现。此外,选择最佳视图子集是NP完整问题。或者,在文献中存在几种视图选择算法,其中大多数是经验的或基于贪婪,进化等的启发式。已经观察到这些观点的大多数选择方法对于为更高维度选择良好的质量视图,发现它是不可行的数据集。本文介绍了一种基于模拟退火的随机视图选择算法,用于从多维格子中的所有可能的一组视图中选择顶-k视图。结果表明,与更好的已知的贪婪视图选择算法相比,基于模拟的退火的视图选择算法能够为更高维度数据集选择更好的质量视图。

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