In recent years, recommendation systems have been widely applied in many domains. These systems are impotent in affecting users to choose the behavior that the system expects. Meanwhile, providing incentives has been proven to be a more proactive way to affect users' behaviors. Due to the budget limitation, the number of users who can be incentivized is restricted. In this light, we intend to utilize social influence existing among users to enhance the effect of incentivization. Through incentivizing influential users directly, their followers in the social network are possibly incentivized indirectly. However, in many real-world scenarios, the topological structure of the network is usually unknown, which makes identifying influential users difficult. To tackle the aforementioned challenges, in this paper, we propose a novel algorithm for exploring influential users in unknown networks, which can estimate the influential relationships among users based on their historical behaviors and without knowing the topology of the network. Meanwhile, we design an adaptive incentive allocation approach that determines incentive values based on users' preferences and their influence ability. We evaluate the performance of the proposed approaches by conducting experiments on both synthetic and real-world datasets. The experimental results demonstrate the effectiveness of the proposed approaches.
翻译:近些年来,建议系统被广泛应用于许多领域。这些系统在影响用户选择系统预期的行为方面无能,影响用户选择系统预期的行为。同时,提供激励已被证明是影响用户行为的更积极的方式。由于预算限制,可以激励的用户数量受到限制。鉴于此,我们打算利用用户中现有的社会影响来增强激励效应的效果。通过直接激励有影响力的用户,社会网络中的追随者可能间接受到激励。然而,在许多现实世界的情景中,网络的地形结构通常不为人知,因此难以识别有影响力的用户。为了应对上述挑战,我们在本文中提出了探索未知网络中有影响力的用户的新算法,根据用户的历史行为和网络的地形来估计其有影响力的关系。与此同时,我们设计了适应性激励分配办法,根据用户的偏好和影响力来确定激励价值。我们通过在合成和现实世界数据集上进行实验来评估拟议方法的绩效。实验结果展示了拟议方法的有效性。