Literature DB >> 34316102

Causal inference, social networks and chain graphs.

Elizabeth L Ogburn1, Ilya Shpitser1, Youjin Lee2.   

Abstract

Traditionally, statistical inference and causal inference on human subjects rely on the assumption that individuals are independently affected by treatments or exposures. However, recently there has been increasing interest in settings, such as social networks, where individuals may interact with one another such that treatments may spill over from the treated individual to their social contacts and outcomes may be contagious. Existing models proposed for causal inference using observational data from networks of interacting individuals have two major shortcomings. First, they often require a level of granularity in the data that is infeasible in practice to collect in most settings and, second, the models are high dimensional and often too big to fit to the available data. We illustrate and justify a parsimonious parameterization for network data with interference and contagion. Our parameterization corresponds to a particular family of graphical models known as chain graphs. We argue that, in some settings, chain graph models approximate the marginal distribution of a snapshot of a longitudinal data-generating process on interacting units. We illustrate the use of chain graphs for causal inference about collective decision making in social networks by using data from US Supreme Court decisions between 1994 and 2004 and in simulations.

Entities:  

Keywords:  Causal inference; Chain graphs; Collective behaviour; Graphical models; Social networks

Year:  2020        PMID: 34316102      PMCID: PMC8313030          DOI: 10.1111/rssa.12594

Source DB:  PubMed          Journal:  J R Stat Soc Ser A Stat Soc        ISSN: 0964-1998            Impact factor:   2.483


  2 in total

1.  Does deforestation drive visceral leishmaniasis transmission? A causal analysis.

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Journal:  Proc Biol Sci       Date:  2021-08-25       Impact factor: 5.530

2.  General Identification of Dynamic Treatment Regimes Under Interference.

Authors:  Eli S Sherman; David Arbour; Ilya Shpitser
Journal:  Proc Mach Learn Res       Date:  2020-08
  2 in total

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