Selected article for: "accurate identification and log likelihood"

Author: Lippiello, Eugenio; Bountzis, Polytzois
Title: An objective criterion for cluster detection in stochastic epidemic models
  • Cord-id: esdswdnj
  • Document date: 2021_3_24
  • ID: esdswdnj
    Snippet: The correct identification of clusters is crucial for an accurate monitoring of the spread of a disease and also in many other natural, social and physical phenomena which exhibit an epidemic structure. Nevertheless, even when an accurate mathematical model is available, no simple tool exists which allows one to identify how many independent clusters are present and to link elements to the appropriate clusters. Here we develop an automatic method for the detection of the internal structure of th
    Document: The correct identification of clusters is crucial for an accurate monitoring of the spread of a disease and also in many other natural, social and physical phenomena which exhibit an epidemic structure. Nevertheless, even when an accurate mathematical model is available, no simple tool exists which allows one to identify how many independent clusters are present and to link elements to the appropriate clusters. Here we develop an automatic method for the detection of the internal structure of the clusters and their number, independently of the model that describes the dynamics of the phenomenon. It is substantially based on the difference of the log-likelihood $\delta {\cal LL}$, that is evaluated when all elements are connected and when they are grouped into clusters. As a function of the number of connected elements $\delta {\cal LL}$ presents a change of slope and a singularity which can be both used in cluster identification. Our method is validated for an epidemic model with a minimal temporal structure and for the Epidemic Type Aftershock Sequence model describing the spatio-temporal clustering of earthquakes.

    Search related documents:
    Co phrase search for related documents
    • Try single phrases listed below for: 1