According to standard econometric theory, Maximum Likelihood estimation (MLE) is the efficient estimation choice, however, it is not always a feasible one. In network diffusion models with unobserved signal propagation, MLE requires integrating out a large number of latent variables, which quickly becomes computationally infeasible even for moderate network sizes and time horizons. Limiting the model time horizon on the other hand entails loss of important information while approximation techniques entail a (small) error that. Searching for a viable alternative is thus potentially highly beneficial. This paper proposes two estimators specifically tailored to the network diffusion model of partially observed adoption and unobserved network d...
We create a program to simulate diffusion in random graphs. Specifically,we create a generalization ...
Diffusion processes in networks are increasingly used to model dynamic phenomena such as the spread ...
Diffusion processes in networks are increas-ingly used to model the spread of informa-tion and socia...
This thesis investigates parameter estimation in a widely applicable model of interaction in social ...
Network diffusion models are applicable to many socioeconomic interactions, yet network interaction ...
We estimate an agent-based interpretation of the well-known Bass innovation diffusion model. In orde...
Abstract. Information diffusion over a social network is analyzed by model-ing the successive intera...
A model for network panel data is discussed, based on the assumption that the observed data are disc...
We derive closed-form expansions for the asymptotic distribution of Hansen and Scheinkman [1995. Bac...
The transition density of a diffusion process does not admit an explicit expression in general, whic...
Abstract—Partially-observed data collected by sampling meth-ods is often being studied to obtain the...
A number of recent studies have used Network Based Diffusion Analysis (NBDA) to detect the role of s...
Social network analysis is concerned with the analysis of influence of an individual within a social...
The transition density of a diffusion process does not admit an explicit expression in general, whic...
Diffusion of information via networks has been extensively studied for decades. We study the general...
We create a program to simulate diffusion in random graphs. Specifically,we create a generalization ...
Diffusion processes in networks are increasingly used to model dynamic phenomena such as the spread ...
Diffusion processes in networks are increas-ingly used to model the spread of informa-tion and socia...
This thesis investigates parameter estimation in a widely applicable model of interaction in social ...
Network diffusion models are applicable to many socioeconomic interactions, yet network interaction ...
We estimate an agent-based interpretation of the well-known Bass innovation diffusion model. In orde...
Abstract. Information diffusion over a social network is analyzed by model-ing the successive intera...
A model for network panel data is discussed, based on the assumption that the observed data are disc...
We derive closed-form expansions for the asymptotic distribution of Hansen and Scheinkman [1995. Bac...
The transition density of a diffusion process does not admit an explicit expression in general, whic...
Abstract—Partially-observed data collected by sampling meth-ods is often being studied to obtain the...
A number of recent studies have used Network Based Diffusion Analysis (NBDA) to detect the role of s...
Social network analysis is concerned with the analysis of influence of an individual within a social...
The transition density of a diffusion process does not admit an explicit expression in general, whic...
Diffusion of information via networks has been extensively studied for decades. We study the general...
We create a program to simulate diffusion in random graphs. Specifically,we create a generalization ...
Diffusion processes in networks are increasingly used to model dynamic phenomena such as the spread ...
Diffusion processes in networks are increas-ingly used to model the spread of informa-tion and socia...