Dynamic Skyline Computation with LSD Trees

D. Köppl
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Abstract

Given a set of high-dimensional feature vectors S⊂Rn, the skyline or Pareto problem is to report the subset of vectors in S that are not dominated by any vector of S. Vectors closer to the origin are preferred: we say a vector x is dominated by another distinct vector y if x is equally or further away from the origin than y with respect to all its dimensions. The dynamic skyline problem allows us to shift the origin, which changes the answer set. This problem is crucial for dynamic recommender systems where users can shift the parameters and thus shift the origin. For each origin shift, a recomputation of the answer set from scratch is time intensive. To tackle this problem, we propose a parallel algorithm for dynamic skyline computation that uses multiple local split decision (LSD) trees concurrently. The geometric nature of the LSD trees allows us to reuse previous results. Experiments show that our proposed algorithm works well if the dimension is small in relation to the number of tuples to process.
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动态天际线计算与LSD树
给定一组高维特征向量S∧Rn,天际线问题或帕累托问题是要报告S中不被S的任何向量支配的向量子集。更靠近原点的向量是首选的:如果向量x在所有维度上与原点相等或距离原点更远,我们说向量x被另一个不同的向量y支配。动态天际线问题允许我们移动原点,从而改变答案集。这个问题对于动态推荐系统至关重要,因为用户可以移动参数,从而移动原点。对于每次原点移位,从头开始重新计算答案集是非常耗时的。为了解决这个问题,我们提出了一种同时使用多个局部分裂决策树(LSD)的动态天际线计算并行算法。LSD树的几何特性允许我们重用以前的结果。实验表明,当元组的维数相对较少时,我们提出的算法效果良好。
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