地平线的近似距离测量

Nirman Kumar, Benjamin Raichel, Stavros Sintos, G. V. Buskirk
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引用次数: 1

摘要

在多参数决策中,数据通常被建模为点的集合,其维数是参数的个数,天际线或帕累托点代表各种优化问题的可能最优解。这些点的结构和计算已经得到了很好的研究,特别是在数据库界。由于高维的天际线可能相当大,人们经常寻求一个简洁的概括。特别地,对于给定的整数参数k,需要k个点的子集,它在某种度量下最接近天际线。人们提出了各种各样的措施,但它们大多将天际线视为一个离散的对象。通过将天际线视为一个连续的几何船体,我们提出了一种新的测量方法,通过船体到整个船体的豪斯多夫距离来评估子集的质量。我们认为,在许多方面,我们的测量方法更自然地捕捉到了接近天际线的含义。对于我们新的几何天际线近似度量,我们提供了大量的结果。具体来说,我们提供了(1)二维的近线性时间精确算法,(2)三维及更高维度的apx硬度结果,(3)问题相关变体的近似算法,以及(4)一个实用且高效的启发式算法,该算法使用我们对问题的几何见解,以及各种实验结果来显示我们方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Approximating Distance Measures for the Skyline
In multi-parameter decision making, data is usually modeled as a set of points whose dimension is the number of parameters, and the skyline or Pareto points represent the possible optimal solutions for various optimization problems. The structure and computation of such points have been well studied, particularly in the database community. As the skyline can be quite large in high dimensions, one often seeks a compact summary. In particular, for a given integer parameter k, a subset of k points is desired which best approximates the skyline under some measure. Various measures have been proposed, but they mostly treat the skyline as a discrete object. By viewing the skyline as a continuous geometric hull, we propose a new measure that evaluates the quality of a subset by the Hausdorff distance of its hull to the full hull. We argue that in many ways our measure more naturally captures what it means to approximate the skyline. For our new geometric skyline approximation measure, we provide a plethora of results. Specifically, we provide (1) a near linear time exact algorithm in two dimensions, (2) APX-hardness results for dimensions three and higher, (3) approximation algorithms for related variants of our problem, and (4) a practical and efficient heuristic which uses our geometric insights into the problem, as well as various experimental results to show the efficacy of our approach.
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