Geo-social networks offer opportunities for the marketing and promotion of geo-located services. In this setting, we explore a new problem, called Maximizing the Influence of Bichromatic Reverse k Nearest Neighbors (MaxInfBRkNN). The objective is to find a set of points of interest (POIs), which are geo-textually and socially attractive to social influencers who are expected to largely promote the POIs through online influence propagation. In other words, the problem aims to detect an optimal set of POIs with the largest word-of-mouth (WOM) marketing potential. This functionality is useful in various real-life applications, including social advertising, location-based viral marketing, and personalized POI recommendation. However, solving MaxInfBRkNN with theoretical guarantees is challenging, because of the prohibitive overheads on BRkNN retrieval in geo-social networks, and the NP and #P-hardness in finding the optimal POI set. To achieve practical solutions, we present a framework with carefully designed indexes, efficient batch BRkNN processing algorithms, and alternative POI selection policies that support both approximate and heuristic solutions. Extensive experiments on real and synthetic datasets demonstrate the good performance of our proposed methods.
翻译:地理—社会网络为地理定位服务的营销和推广提供了机遇。 在这种背景下,我们探索了一个新问题,名为“最大程度利用Bichromatic Reverse K nearest邻居的影响 ” (MaxinfBRKNN) 。目的是寻找一系列感兴趣的点(POI),这些点在地理文字上和社会上对社会影响者具有吸引力,预计社会影响者通过在线影响传播将在很大程度上促进POI。换句话说,问题的目的是发现一套最佳的有最大嘴单词(WOM)营销潜力的POI。这一功能在各种真实应用中非常有用,包括社会广告、基于地点的病毒营销和个性化的POI建议。然而,用理论保证解决Max InfBRNNN是具有挑战性的,因为BRKNN的检索在地理社会网络、NP和#P-硬性地寻找最佳PII数据集方面负担过重。为了实现实际解决办法,我们提出了一个框架,精心设计的指数、BRKNNNN的批处理算法以及替代的POI选择政策,支持我们提出的合成数据的实际和合成方法。