4.5 Article

Maximizing the influence of bichromatic reverse k nearest neighbors in geo-social networks

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SPRINGER
DOI: 10.1007/s11280-022-01096-1

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Geo-social networks; Bichromatic reverse k nearest neighbors; Social influencers; POI recommendation; Algorithms

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Geo-social networks provide opportunities for marketing and promotion of geo-located services. By maximizing the influence of bichromatic reverse kNearest Neighbors, an optimal set of points of interest (POIs) can be identified that are both geo-textually and socially relevant to social influencers. This functionality is useful in various real-life applications, including social advertising, viral marketing, and personalized POI recommendation.
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 kNearest Neighbors (MaxInfBRkNN). The objective is to find a set of points of interest (POIs), which are geo-textually and socially relevant to social influencers who are expected to largely promote the POIs online. 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 of 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.

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