Affiliation:
1. School of Data Science, Fudan University, China
2. Department of Computer Science, Kent State University, United States
Abstract
In many real-world applications such as social network analysis and online advertising/marketing, one of the most important and popular problems is called
influence maximization
(IM), which finds a set of
k
seed users that maximize the expected number of influenced user nodes. In practice, however, maximizing the number of influenced nodes may be far from satisfactory for real applications such as opinion promotion and collective buying. In this paper, we explore the importance of
stability
and
triangles
in social networks, and formulate a novel problem in the influence spread scenario, named
triangular stability maximization
, over social networks, and generalize it to a
general triangle influence maximization
problem, which is proved to be NP-hard. We develop an efficient
reverse influence sampling
(RIS) based framework for the triangle IM with theoretical guarantees. To enable unbiased estimators, it demands probabilistic sampling of triangles, that is, sampling triangles according to their probabilities. We propose an
edge-based triple sampling
approach, which is exactly equivalent to probabilistic sampling and avoids costly triangle enumeration and materialization. We also design several pruning and reduction techniques, as well as a cost-model-guided heuristic algorithm. Extensive experiments and a case study over real-world graphs confirm the effectiveness of our proposed algorithms and the superiority of
triangular stability maximization
and triangle influence maximization.
Publisher
Association for Computing Machinery (ACM)
Subject
General Earth and Planetary Sciences,Water Science and Technology,Geography, Planning and Development
Cited by
2 articles.
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