Latent network models to account for noisy, multiply reported social network data

Author:

De Bacco Caterina1,Contisciani Martina1,Cardoso-Silva Jonathan23,Safdari Hadiseh1,Lima Borges Gabriela4,Baptista Diego1,Sweet Tracy5,Young Jean-Gabriel6,Koster Jeremy78,Ross Cody T4,McElreath Richard4,Redhead Daniel4,Power Eleanor A29

Affiliation:

1. Cyber Valley, Max Planck Institute for Intelligent Systems , Tuebingen , Germany

2. Department of Methodology, London School of Economics and Political Science , London , UK

3. Data Science Institute, London School of Economics and Political Science , London , UK

4. Department of Human Behaviour, Ecology and Culture, Max Planck Institute for Evolutionary Anthropology , Leipzig , Germany

5. Department of Human Development and Quantitative Methodology, University of Maryland , College Park, MD , USA

6. Department of Mathematics and Statistics and Vermont Complex Systems Center, University of Vermont , Burlington, VT , USA

7. Department of Anthropology, University of Cincinnati , Cincinnati, OH , USA

8. Division of Behavioral and Cognitive Sciences , National Science Foundation, Alexandria, VA , USA

9. Santa Fe Institute , Santa Fe, NM , USA

Abstract

Abstract Social network data are often constructed by incorporating reports from multiple individuals. However, it is not obvious how to reconcile discordant responses from individuals. There may be particular risks with multiply reported data if people’s responses reflect normative expectations—such as an expectation of balanced, reciprocal relationships. Here, we propose a probabilistic model that incorporates ties reported by multiple individuals to estimate the unobserved network structure. In addition to estimating a parameter for each reporter that is related to their tendency of over- or under-reporting relationships, the model explicitly incorporates a term for ‘mutuality’, the tendency to report ties in both directions involving the same alter. Our model’s algorithmic implementation is based on variational inference, which makes it efficient and scalable to large systems. We apply our model to data from a Nicaraguan community collected with a roster-based design and 75 Indian villages collected with a name-generator design. We observe strong evidence of ‘mutuality’ in both datasets, and find that this value varies by relationship type. Consequently, our model estimates networks with reciprocity values that are substantially different than those resulting from standard deterministic aggregation approaches, demonstrating the need to consider such issues when gathering, constructing, and analysing survey-based network data.

Publisher

Oxford University Press (OUP)

Subject

Statistics, Probability and Uncertainty,Economics and Econometrics,Social Sciences (miscellaneous),Statistics and Probability

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