Given a social network, where each user is associated with a selection cost, the problem of \textsc{Budgeted Influence Maximization} (\emph{BIM Problem} in short) asks to choose a subset of them (known as seed users) within an allocated budget whose initial activation leads to the maximum number of influenced nodes. Existing Studies on this problem do not consider the tag-specific influence probability. However, in reality, influence probability between two users always depends upon the context (e.g., sports, politics, etc.). To address this issue, in this paper we introduce the \textsc{Tag\mbox{-}Based Budgeted Influence Maximization problem} (\emph{TBIM Problem} in short), where along with the other inputs, a tag set (each of them is also associated with a selection cost) is given, each edge of the network has the tag specific influence probability, and here the goal is to select influential users as well as influential tags within the allocated budget to maximize the influence. Considering the fact that real-world campaigns targeted in nature, we also study the \textsc{Earned Benefit Maximization} Problem in tag specific influence probability setting, which formally we call the \textsc{Tag\mbox{-}Based Earned Benefit Maximization problem} (\emph{TEBM Problem} in short). For this problem along with the inputs of the TBIM Problem, we are given a subset of the nodes as target users, and each one of them is associated with a benefit value that can be earned by influencing them. Considering the fact that different tag has different popularity across the communities of the same network, we propose three methodologies that work based on \emph{effective marginal influence gain computation}. The proposed methodologies have been analyzed for their time and space requirements.


翻译:鉴于社会网络, 每个用户都与选择成本相关联, textsc{ textc{ dropped impactalization} (\ emph{BIMFround}) 问题简而言之, 要求在分配预算内选择其中的一个子集( 被称为种子用户 ), 最初激活导致受影响节点的最大数量。 这一问题的现有研究没有考虑特定标签的影响概率。 但是, 事实上, 两个用户之间的影响概率总是取决于背景( 例如, 体育、 政治等 ) 。 为了解决这个问题, 我们在本文件中引入了\ textsc c{ Tag\ box{ box{ base{ block{ block{ blacked impactalization sublishall} ( emphemphemphright) commissions, 在其它投入的同时, 也给出了一组标签( effirmority), 并且我们也可以在IMFILFILILD} 上, 我们也正式研究了这些工具的系统。

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