经济升级无竞争力产品

Hua Lu, Christian S. Jensen
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引用次数: 16

摘要

多维点集的天际线由不受其他点支配的点组成。在产品特征由多维点表示的场景中,天际线点可能被视为代表竞争产品。产品供应商可能希望将没有竞争力的产品升级为具有竞争力的产品,但希望考虑到升级成本。我们研究了top-k产品升级问题。给定一个竞争产品集合P,一个候选产品集合T,以及一个适用于T的升级成本函数f,问题是返回T中的k个产品,这些产品可以以最低的成本升级到不被P中的任何产品占主导地位。这个问题并不简单,因为不仅数据集规模大,而且升级产品的可能性也很多。我们确定并提供不同的解决方案来升级一个没有竞争力的产品,并将这些解决方案组合成一个单一的解决方案。我们还提出了一个基于空间连接的解决方案,假设P和T由r树索引。给定同一r树节点上的一组产品,我们推导出它们升级成本的三个下界。连接方法使用这些边界来修剪具有非竞争性升级成本的候选升级。综合数据和实际数据的实证研究表明,该连接方法具有高效和可扩展性。
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Upgrading Uncompetitive Products Economically
The skyline of a multidimensional point set consists of the points that are not dominated by other points. In a scenario where product features are represented by multidimensional points, the skyline points may be viewed as representing competitive products. A product provider may wish to upgrade uncompetitive products to become competitive, but wants to take into account the upgrading cost. We study the top-k product upgrading problem. Given a set P of competitor products, a set T of products that are candidates for upgrade, and an upgrading cost function f that applies to T, the problem is to return the k products in T that can be upgraded to not be dominated by any products in P at the lowest cost. This problem is non-trivial due to not only the large data set sizes, but also to the many possibilities for upgrading a product. We identify and provide solutions for the different options for upgrading an uncompetitive product, and combine the solutions into a single solution. We also propose a spatial join-based solution that assumes P and T are indexed by an R-tree. Given a set of products in the same R-tree node, we derive three lower bounds on their upgrading costs. These bounds are employed by the join approach to prune upgrade candidates with uncompetitive upgrade costs. Empirical studies with synthetic and real data show that the join approach is efficient and scalable.
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