Journal Article10.1145/2994501.2994503
Influence maximization through adaptive seeding
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TL;DR: This monograph surveys the adaptive seeding methodology for influence maximization, a two-stage stochastic optimization framework, designed to leverage the friendship paradox to seed high influential nodes, which encompasses a rich set of algorithmic challenges at the intersection of stochastically optimization and submodular optimization.
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Abstract: In this monograph we survey the adaptive seeding methodology for influence maximization. Influence maximization is the challenge of spreading information effectively through influential users in a social network. In many applications, one is restricted to select influencers from a set of users who engaged with the topic being promoted, and due to the structure of social networks, these users often rank low in terms of their influence potential. An alternative approach one can consider is an adaptive method which selects users in a manner which targets their influential neighbors. The advantage of such an approach is that it leverages the friendship paradox in social networks: while users are often not influential themselves, they know someone who is.Adaptive seeding is a two-stage stochastic optimization framework, designed to leverage the friendship paradox to seed high influential nodes. This framework encompasses a rich set of algorithmic challenges at the intersection of stochastic optimization and submodular optimization. We discuss this method here, along with algorithmic approaches, the friendship paradox in random graph models, and experiments on adaptive seeding.
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Citations
The effects of the visual presentation of an Influencer's Extroversion on perceived credibility and purchase intentions—moderated by personality matching with the audience
TL;DR: In this paper, the authors proposed the visual presentation of an influencer's extroversion as an antecedent to source credibility and purchase intentions and personality matching in terms of extrovert between an Influencer and their audience as a moderator of such relationships.
74
•Proceedings Article
Adaptive Influence Maximization with Myopic Feedback
Binghui Peng,Wei Chen +1 more
- 01 Dec 2019
TL;DR: In this paper, the adaptive influence maximization problem with myopic feedback under the independent cascade model was studied, and the adaptive gap between the optimal adaptive influence spread and the optimal non-adaptive influence spread was shown to be at most 4 and at least e/(e-1).
Modeling Influence with Semantics in Social Networks: A Survey
TL;DR: A systematic review across online social influence metrics, properties, and applications and the role of semantic can jointly provide useful insights towards the qualitative assessment of viral user-generated content, as well as for modeling the dynamic properties of influential content and its flow dynamics.
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•Posted Content
On Adaptivity Gaps of Influence Maximization under the Independent Cascade Model with Full Adoption Feedback
Wei Chen,Binghui Peng +1 more
TL;DR: The adaptivity gap of the influence maximization problem under independent cascade model when full-adoption feedback is available is studied to derive upper bounds on several families of well-studied influence graphs, including in-arborescence, out-arborescences and bipartite graphs.
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On Adaptive Influence Maximization under General Feedback Models
Guangmo Tong,Ruiqi Wang +1 more
TL;DR: In this paper, the authors provide a systematic study on the adaptive influence maximization problem, focusing on the algorithmic analysis of the general feedback models, and introduce the concept of regret ratio to characterize the key trade-off in designing adaptive seeding strategies, based on which they present the approximation analysis for the well-known greedy policy.
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Maximizing the spread of influence through a social network
David Kempe,Jon Kleinberg,Éva Tardos +2 more
- 24 Aug 2003
TL;DR: An analysis framework based on submodular functions shows that a natural greedy strategy obtains a solution that is provably within 63% of optimal for several classes of models, and suggests a general approach for reasoning about the performance guarantees of algorithms for these types of influence problems in social networks.
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