Estimating Online Influence Needs Causal Modeling! Counterfactual Analysis of Social Media Engagement
Journal:
arXiv
Published Date:
May 25, 2025
Abstract
Understanding true influence in social media requires distinguishing
correlation from causation--particularly when analyzing misinformation spread.
While existing approaches focus on exposure metrics and network structures,
they often fail to capture the causal mechanisms by which external temporal
signals trigger engagement. We introduce a novel joint treatment-outcome
framework that leverages existing sequential models to simultaneously adapt to
both policy timing and engagement effects. Our approach adapts causal inference
techniques from healthcare to estimate Average Treatment Effects (ATE) within
the sequential nature of social media interactions, tackling challenges from
external confounding signals. Through our experiments on real-world
misinformation and disinformation datasets, we show that our models outperform
existing benchmarks by 15--22% in predicting engagement across diverse
counterfactual scenarios, including exposure adjustment, timing shifts, and
varied intervention durations. Case studies on 492 social media users show our
causal effect measure aligns strongly with the gold standard in influence
estimation, the expert-based empirical influence.