A wide array of complex biological, social, and physical systems have recently been shown to be quantitatively described by Ising models, which lie at the intersection of statistical physics and machine learning. Here, we study the fundamental question of how to optimize the state of a networked Ising system given a budget of external influence. In the continuous setting where one can tune the influence applied to each node, we propose a series of approximate gradient ascent algorithms based on the Plefka expansion, which generalizes the naive mean field and TAP approximations. In the discrete setting where one chooses a small set of influential nodes, the problem is equivalent to the famous influence maximization problem in social networks...
Network structures are reconstructed from dynamical data by respectively naive mean field (nMF) and ...
We consider the problem of identifying the most influential nodes for a spreading process on a netwo...
We study the influence diffusion problem in online social networks. Formally, given a network repres...
The problem of optimally distributing a budget of influence among individuals in a social network, k...
Given a complex high-dimensional distribution over $\{\pm 1\}^n$, what is the best way to increase t...
Influence maximization is a problem to find small sets of highly influential individuals in a social...
Influence maximization is a problem to find small sets of highly influential individuals in a social...
In many real-world situations, different and often opposite opinions, innovations, or products are c...
Inferring modelling parameters of dynamical processes from observational data is an important invers...
The problem of influence maximization, i.e., mining top-k influential nodes from a social network su...
Abstract—Social influence and influence diffusion has been widely studied in online social networks....
We consider the structure learning problem of influence diffusion on social networks from the observ...
Due to copyright restrictions, the access to the full text of this article is only available via sub...
With the rapid development of online social networks, exploring influence maximization for product p...
How to optimize the spreading process on networks has been a hot issue in complex networks, marketin...
Network structures are reconstructed from dynamical data by respectively naive mean field (nMF) and ...
We consider the problem of identifying the most influential nodes for a spreading process on a netwo...
We study the influence diffusion problem in online social networks. Formally, given a network repres...
The problem of optimally distributing a budget of influence among individuals in a social network, k...
Given a complex high-dimensional distribution over $\{\pm 1\}^n$, what is the best way to increase t...
Influence maximization is a problem to find small sets of highly influential individuals in a social...
Influence maximization is a problem to find small sets of highly influential individuals in a social...
In many real-world situations, different and often opposite opinions, innovations, or products are c...
Inferring modelling parameters of dynamical processes from observational data is an important invers...
The problem of influence maximization, i.e., mining top-k influential nodes from a social network su...
Abstract—Social influence and influence diffusion has been widely studied in online social networks....
We consider the structure learning problem of influence diffusion on social networks from the observ...
Due to copyright restrictions, the access to the full text of this article is only available via sub...
With the rapid development of online social networks, exploring influence maximization for product p...
How to optimize the spreading process on networks has been a hot issue in complex networks, marketin...
Network structures are reconstructed from dynamical data by respectively naive mean field (nMF) and ...
We consider the problem of identifying the most influential nodes for a spreading process on a netwo...
We study the influence diffusion problem in online social networks. Formally, given a network repres...