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Main Authors: Mangalik, Siddharth, Deshpande, Ojas, Ganesan, Adithya V., Clouston, Sean A. P., Schwartz, H. Andrew
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2508.21722
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author Mangalik, Siddharth
Deshpande, Ojas
Ganesan, Adithya V.
Clouston, Sean A. P.
Schwartz, H. Andrew
author_facet Mangalik, Siddharth
Deshpande, Ojas
Ganesan, Adithya V.
Clouston, Sean A. P.
Schwartz, H. Andrew
contents Estimating community-specific mental health effects of local events is vital for public health policy. While forecasting mental health scores alone offers limited insights into the impact of events on community well-being, quasi-experimental designs like the Longitudinal Regression Discontinuity Design (LRDD) from econometrics help researchers derive more effects that are more likely to be causal from observational data. LRDDs aim to extrapolate the size of changes in an outcome (e.g. a discontinuity in running scores for anxiety) due to a time-specific event. Here, we propose adapting LRDDs beyond traditional forecasting into a statistical learning framework whereby future discontinuities (i.e. time-specific shifts) and changes in slope (i.e. linear trajectories) are estimated given a location's history of the score, dynamic covariates (other running assessments), and exogenous variables (static representations). Applying our framework to predict discontinuities in the anxiety of US counties from COVID-19 events, we found the task was difficult but more achievable as the sophistication of models was increased, with the best results coming from integrating exogenous and dynamic covariates. Our approach shows strong improvement ($r=+.46$ for discontinuity and $r = +.65$ for slope) over traditional static community representations. Discontinuity forecasting raises new possibilities for estimating the idiosyncratic effects of potential future or hypothetical events on specific communities.
format Preprint
id arxiv_https___arxiv_org_abs_2508_21722
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Inferring Effects of Major Events through Discontinuity Forecasting of Population Anxiety
Mangalik, Siddharth
Deshpande, Ojas
Ganesan, Adithya V.
Clouston, Sean A. P.
Schwartz, H. Andrew
Machine Learning
Estimating community-specific mental health effects of local events is vital for public health policy. While forecasting mental health scores alone offers limited insights into the impact of events on community well-being, quasi-experimental designs like the Longitudinal Regression Discontinuity Design (LRDD) from econometrics help researchers derive more effects that are more likely to be causal from observational data. LRDDs aim to extrapolate the size of changes in an outcome (e.g. a discontinuity in running scores for anxiety) due to a time-specific event. Here, we propose adapting LRDDs beyond traditional forecasting into a statistical learning framework whereby future discontinuities (i.e. time-specific shifts) and changes in slope (i.e. linear trajectories) are estimated given a location's history of the score, dynamic covariates (other running assessments), and exogenous variables (static representations). Applying our framework to predict discontinuities in the anxiety of US counties from COVID-19 events, we found the task was difficult but more achievable as the sophistication of models was increased, with the best results coming from integrating exogenous and dynamic covariates. Our approach shows strong improvement ($r=+.46$ for discontinuity and $r = +.65$ for slope) over traditional static community representations. Discontinuity forecasting raises new possibilities for estimating the idiosyncratic effects of potential future or hypothetical events on specific communities.
title Inferring Effects of Major Events through Discontinuity Forecasting of Population Anxiety
topic Machine Learning
url https://arxiv.org/abs/2508.21722