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引用次数: 0

摘要

社交网络通过同伴对采用的影响,在创新扩散中发挥了重要作用。因此,包括广泛的网络中心性度量在内的网络位置被用来描述个体采用创新的亲和力及其传播扩散的能力。然而,社交网络在易感性和影响力以及网络中心性方面都是分类的。这使得确定影响者变得困难,特别是因为易感性和中心性并不总是齐头并进。在这里,我们提出了Top Candidate算法,一种专家推荐方法,根据他们感知到的专业知识对个人进行排名,这与网络中创新者和早期采用者的分类混合产生了很好的共鸣。利用来自两个在线社交网络的采用数据,这两个网络在采用方面是分类的,但代表了网络中心性的不同分类水平,我们证明了Top Candidate排名在捕获创新者和早期采用者方面比其他广泛使用的指数更有效。与其他方法突出的节点相比,顶级候选节点采用得更早,在创新者、早期采用者和早期大众中具有更高的影响力。这些结果表明,Top Candidate方法可以识别出社交网络上影响力最大化活动的良好种子。
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Finding Early Adopters of Innovation in Social Network
Social networks play a fundamental role in the diffusion of innovation through peers’ influence on adoption. Thus, network position including a wide range of network centrality measures has been used to describe individuals’ affinity to adopt an innovation and their ability to propagate diffusion. Yet, social networks are assortative in terms of susceptibility and influence and in terms of network centralities as well. This makes the identification of influencers difficult especially since susceptibility and centrality do not always go hand in hand. Here, we propose the Top Candidate algorithm, an expert recommendation method, to rank individuals based on their perceived expertise, which resonates well with the assortative mixing of innovators and early adopters in networks. Leveraging adoption data from two online social networks that are assortative in terms of adoption but represent different levels of assortativity of network centralities, we demonstrate that the Top Candidate ranking is more efficient in capturing innovators and early adopters than other widely used indices. Top Candidate nodes adopt earlier and have higher reach among innovators, early adopters and early majority than nodes highlighted by other methods. These results suggest that the Top Candidate method can identify good seeds for influence maximization campaigns on social networks.
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