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Maximizing the Spread of Positive Influence in Online Social Networks

机译:最大化在线社交网络中积极影响力的传播

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Online social networks (OSNs) provide a new platform for product promotion and advertisement. Influence maximization problem arisen in viral marketing has received a lot of attentions recently. Most of the existing diffusion models rely on one fundamental assumption that an influenced user necessarily adopts the product and encourages his/her friends to further adopt it. However, an influenced user may be just aware of the product. Due to personal preference, neutral or negative opinion can be generated so that product adoption is uncertain. Maximizing the total number of influenced users is not the uppermost concern, instead, letting more activated users hold positive opinions is of first importance. Motivated by above phenomenon, we proposed a model, called Opinion-based Cascading (OC) model. We formulate an opinion maximization problem on the new model to take individual opinion into consideration as well as capture the change of opinions at the same time. We show that under the OC model, opinion maximization is NP-hard and the objective function is no longer submodular. We further prove that there does not exist any approximation algorithm with finite ratio unless P=NP. We have designed an efficient algorithm to compute the total positive influence based on this new model. Comprehensive experiments on real social networks are conducted, and results show that previous methods overestimate the overall positive influence, while our model is able to distinguish between negative opinions and positive opinions, and estimate the overall influence more accurately.
机译:在线社交网络(OSN)为产品促销和广告提供了一个新平台。病毒式营销中出现的影响力最大化问题最近受到了广泛关注。现有的大多数传播模型都基于一个基本假设,即受影响的用户一定会采用该产品并鼓励其朋友进一步采用该产品。但是,受影响的用户可能只知道该产品。由于个人喜好,可能会产生中立或负面意见,因此不确定产品的采用。最大化受影响用户的总数并不是最重要的问题,相反,让更多的活跃用户持有正面意见是最重要的。基于以上现象,我们提出了一种基于意见的级联(OC)模型。我们在新模型上制定了一个意见最大化问题,以考虑个人意见并同时捕获意见的变化。我们表明,在OC模型下,观点最大化是NP-hard的,目标函数不再是亚模的。我们进一步证明,除非P = NP,否则不存在任何具有有限比率的近似算法。我们基于此新模型设计了一种有效的算法来计算总的积极影响。在真实的社交网络上进行了综合实验,结果表明,先前的方法高估了总体正面影响,而我们的模型能够区分负面观点和正面观点,并更准确地估算整体影响。

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