Menu
Research Publication

Detecting and quantifying networks of biological kinship via exponential family random graph models.

Rohrlach Adam B, AB Gnecchi-Ruscone, Guido Alberto GA et al.

41762131 PubMed ID
10 Authors
2026-04-04 Published
Scroll to explore
Chapter I

Publication Details

Comprehensive information about this research publication

Authors

RA
Rohrlach Adam B
AG
AB Gnecchi-Ruscone
GA
Guido Alberto GA
HZ
Hofmanová Zuzana
ZR
Z Rácz
ZZ
Zsófia Z
RM
Roughan Matthew
MH
M Haak
WW
Wolfgang W
TJ
Tuke Jonathan
Chapter II

Abstract

Summary of the research findings

Genetic relatedness between ancient humans can help to identify close and distant connections between groups and populations, uncovering signatures of demographic histories such as identifying mating networks or long-range migration. Critical to researchers are the characteristics that connected individuals, or groups of individuals, share, and how these characteristics interact and are correlated. Here we use Exponential Random Graph models as a method to explore demographic and contextual parameters that may help to explain the significant drivers of the topology of mating networks, as well as to quantify their effects. We show through simulations that model selection and coefficient estimators facilitate the exploration of such networks, and apply the method to individuals from a collection of Avar-associated cemeteries from the Carpathian Basin dating to the 6th to the 9th centuries CE.

Chapter III

Analysis

Comprehensive review of ancestry and genetic findings

Important Disclaimer: This review has been performed semi-automatically and is provided for informational purposes only. While we strive for accuracy, this analysis may contain errors, omissions, or misinterpretations of the original research. DNA Genics disclaims all liability for any inaccuracies, errors, or consequences arising from the use of this information. Users should independently verify all information and consult original research publications before making any decisions based on this content. This analysis is not intended as a substitute for professional scientific review or medical advice.

Summary

Key Findings

Ancestry Insights

Traits Analysis

Historical Context

Scientific Assessment