We propose two novel learning frameworks using neural mean-field (NMF) dynamics for inference and estimation problems on heterogeneous diffusion networks in discrete-time and continuous-time setting, respectively. The frameworks leverages the Mori-Zwanzig formalism to obtain an exact evolution equation of the individual node infection probabilities, which renders a delay differential equation with memory integral approximated by learnable time convolution operators. Directly using information diffusion cascade data, our frameworks can simultaneously learn the structure of the diffusion network and the evolution of node infection probabilities. Connections between parameter learning and optimal control are also established, leading to a rigo...
In this dissertation, we introduce the concept of network-based statistical inference methods of two...
Influence maximization (IM) is the process of choosing a set of seeds from a social network so that ...
If a piece of information is released from a media site, can we predict whether it may spread to one...
We propose two novel learning frameworks using neural mean-field (NMF) dynamics for inference and es...
Can we learn the influence of a set of people in a social network from cascades of informa-tion diff...
<p>Can we learn the influence of a set of people in a social network from cascades of information di...
We consider the structure learning problem of influence diffusion on social networks from the observ...
International audienceWe address the problem of influence maximization when the social network is ac...
Abstract. Information diffusion over a social network is analyzed by model-ing the successive intera...
The diffusion of information and spreading influence are ubiquitous in social networks. How to model...
Diffusion processes in networks are increas-ingly used to model the spread of informa-tion and socia...
Information propagation on networks is a central theme in social, behavioral, and economic sciences,...
Influence maximization (IM) is the problem of finding for a given s ? 1 a set S of |S|=s nodes in a ...
International audienceThe problem of maximizing or minimizing the spreading in a social network has ...
Adaptive networks are well-suited to perform decentralized information processing and optimization t...
In this dissertation, we introduce the concept of network-based statistical inference methods of two...
Influence maximization (IM) is the process of choosing a set of seeds from a social network so that ...
If a piece of information is released from a media site, can we predict whether it may spread to one...
We propose two novel learning frameworks using neural mean-field (NMF) dynamics for inference and es...
Can we learn the influence of a set of people in a social network from cascades of informa-tion diff...
<p>Can we learn the influence of a set of people in a social network from cascades of information di...
We consider the structure learning problem of influence diffusion on social networks from the observ...
International audienceWe address the problem of influence maximization when the social network is ac...
Abstract. Information diffusion over a social network is analyzed by model-ing the successive intera...
The diffusion of information and spreading influence are ubiquitous in social networks. How to model...
Diffusion processes in networks are increas-ingly used to model the spread of informa-tion and socia...
Information propagation on networks is a central theme in social, behavioral, and economic sciences,...
Influence maximization (IM) is the problem of finding for a given s ? 1 a set S of |S|=s nodes in a ...
International audienceThe problem of maximizing or minimizing the spreading in a social network has ...
Adaptive networks are well-suited to perform decentralized information processing and optimization t...
In this dissertation, we introduce the concept of network-based statistical inference methods of two...
Influence maximization (IM) is the process of choosing a set of seeds from a social network so that ...
If a piece of information is released from a media site, can we predict whether it may spread to one...