[HTML][HTML] Average treatment effects in the presence of unknown interference
We investigate large-sample properties of treatment effect estimators under unknown
interference in randomized experiments. The inferential target is a generalization of the …
interference in randomized experiments. The inferential target is a generalization of the …
Design and analysis of switchback experiments
Switchback experiments, where a firm sequentially exposes an experimental unit to random
treatments, are among the most prevalent designs used in the technology sector, with …
treatments, are among the most prevalent designs used in the technology sector, with …
Estimating the total treatment effect in randomized experiments with unknown network structure
Randomized experiments are widely used to estimate the causal effects of a proposed
treatment in many areas of science, from medicine and healthcare to the physical and …
treatment in many areas of science, from medicine and healthcare to the physical and …
Causal inference for social network data
We describe semiparametric estimation and inference for causal effects using observational
data from a single social network. Our asymptotic results are the first to allow for …
data from a single social network. Our asymptotic results are the first to allow for …
Detecting network effects: Randomizing over randomized experiments
Randomized experiments, or A/B tests, are the standard approach for evaluating the causal
effects of new product features, ie, treatments. The validity of these tests rests on the" stable …
effects of new product features, ie, treatments. The validity of these tests rests on the" stable …
Automatic detection of influential actors in disinformation networks
The weaponization of digital communications and social media to conduct disinformation
campaigns at immense scale, speed, and reach presents new challenges to identify and …
campaigns at immense scale, speed, and reach presents new challenges to identify and …
Staggered rollout designs enable causal inference under interference without network knowledge
Randomized experiments are widely used to estimate causal effects across many domains.
However, classical causal inference approaches rely on independence assumptions that …
However, classical causal inference approaches rely on independence assumptions that …
Causal inference with non-IID data using linear graphical models
Traditional causal inference techniques assume data are independent and identically
distributed (IID) and thus ignores interactions among units. However, a unit's treatment may …
distributed (IID) and thus ignores interactions among units. However, a unit's treatment may …
Randomized graph cluster randomization
The global average treatment effect (GATE) is a primary quantity of interest in the study of
causal inference under network interference. With a correctly specified exposure model of …
causal inference under network interference. With a correctly specified exposure model of …
[BUCH][B] Probabilistic foundations of statistical network analysis
H Crane - 2018 - taylorfrancis.com
Probabilistic Foundations of Statistical Network Analysis presents a fresh and insightful
perspective on the fundamental tenets and major challenges of modern network analysis. Its …
perspective on the fundamental tenets and major challenges of modern network analysis. Its …