Title
Influence Maximization under The Non-progressive Linear Threshold Model.
Abstract
In the problem of influence maximization in information networks, the objective is to choose a set of initially active nodes subject to some budget constraints such that the expected number of active nodes over time is maximized. The linear threshold model has been introduced to study the opinion cascading behavior, for instance, the spread of products and innovations. In this paper, we we extends the classic linear threshold model [18] to capture the non-progressive be- havior. The information maximization problem under our model is proved to be NP-Hard, even for the case when the underlying network has no directed cycles. The first result of this paper is negative. In general, the objective function of the extended linear threshold model is no longer submodular, and hence the hill climbing approach that is commonly used in the existing studies is not applicable. Next, as the main result of this paper, we prove that if the underlying information network is directed acyclic, the objective function is submodular (and monotone). Therefore, in directed acyclic networks with a speci?ed budget we can achieve 1/2 -approximation on maximizing the number of active nodes over a certain period of time by a deterministic algorithm, and achieve the (1 - 1/e )-approximation by a randomized algorithm.
Year
DOI
Venue
2015
10.1007/978-3-030-59901-0_4
CoRR
Field
DocType
Volume
Randomized algorithm,Hill climbing,Mathematical optimization,Computer science,Submodular set function,Expected value,Artificial intelligence,Deterministic algorithm,Threshold model,Monotone polygon,Maximization,Machine learning
Journal
abs/1504.00427
Citations 
PageRank 
References 
0
0.34
4
Authors
3
Name
Order
Citations
PageRank
Hubert T.-H. Chan1112766.34
Li, N.232.48
Yong Zhang36810.51