通过病毒式营销实现收益最大化:社交网络主机的观点

Arijit Khan, Benjamin Zehnder, Donald Kossmann
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引用次数: 34

摘要

我们研究了一个向多个竞争对手销售病毒式营销活动的社交网络主机的收入最大化问题。每个客户营销人员告知社交网络主机她在网络中的目标用户,以及如果她的目标用户购买了她的产品,她愿意向主机支付多少钱。反过来,社交网络的主人为她的每个客户活动人士分配了一组种子用户。竞选者为有限数量的用户设置种子,竞选者为这些用户提供免费样品,折扣价格等,期望这些种子用户会购买她的产品,并且也能够影响网络中的许多目标用户购买她的产品。由于不同的产品采用成本,普通用户不太可能购买多个竞争产品。因此,从主持人的角度来看,将种子用户分配给客户竞选人是很重要的,这样的种子分配保证了主持人考虑到所有客户竞选人的最大总收益。我们通过以下两种成熟的影响级联模型来阐述我们的问题:独立级联模型和线性阈值模型。而我们使用这两种模型的问题都是np困难的,既不是单调的,也不是亚模的;我们开发了具有理论性能保证的近似算法。然而,由于我们的近似算法通常会导致更高的运行时间,我们还设计了有效的启发式方法,在经验上表现得与我们的近似算法一样好。我们详细的实验评估证明,所提出的技术在现实世界的数据集上是有效的和可扩展的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Revenue maximization by viral marketing: A social network host's perspective
We study the novel problem of revenue maximization of a social network host that sells viral marketing campaigns to multiple competing campaigners. Each client campaigner informs the social network host about her target users in the network, as well as how much money she is willing to pay to the host if one of her target users buys her product. The social network host, in turn, assigns a set of seed users to each of her client campaigners. The seed set for a campaigner is a limited number of users to whom the campaigner provides free samples, discounted price etc. with the expectation that these seed users will buy her product, and would also be able to influence many of her target users in the network towards buying her product. Because of various product-adoption costs, it is very unlikely that an average user will purchase more than one of the competing products. Therefore, from the host's perspective, it is important to assign seed users to client campaigners in such a way that the seed assignment guarantees the maximum aggregated revenue for the host considering all her client campaigners. We formulate our problem by following two well-established influence cascading models: the independent cascade model and the linear threshold model. While our problem using both these models is NP-hard, and neither monotonic, nor sub-modular; we develop approximated algorithms with theoretical performance guarantees. However, as our approximated algorithms often incur higher running times, we also design efficient heuristic methods that empirically perform as good as our approximated algorithms. Our detailed experimental evaluation attests that the proposed techniques are effective and scalable over real-world datasets.
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