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Multiobjective Differential Evolution Algorithm Using Binary Encoded Data in Selecting Views for Materializing in Data Warehouse

机译:使用二进制编码数据的多目标差分演进算法在数据仓库中选择视图中的选择

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In this paper, we define the view selection process for materializing in data warehouse as a multiobjective optimization problem. We have implemented multiobjective Differential Evolution (DE) algorithm for binary encoded data to solve this problem. In our approach, to control population in intermediate generations of the differential evolution process by maintaining diversity in solution space with necessary elitism, the solutions of intermediate generations are first ranked according to their pareto dominance levels and then the diversity among solution vectors in solution space is measured. The algorithm is found to be suitable in selecting significant representitive solutions from a large number of nondominating solutions of the view selection problem.
机译:在本文中,我们定义了在数据仓库中实现的视图选择过程作为多目标优化问题。我们已经为二进制编码数据实现了多目标差分演进(DE)算法来解决这个问题。在我们的方法中,通过在溶液空间中维持具有必要的精英的溶液空间的多样性来控制差分演化过程中的中间代,首先根据其帕累托优势水平排名,然后溶液空间中的解决方案载体之间的多样性排名。测量。发现该算法适用于从观看选择问题的大量非常规解的选择显着的代表性解决方案。

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