| Literature DB >> 35668864 |
Selin Köksal1, Luca Maria Pesando2, Valentina Rotondi3,4, Ebru Şanlıtürk5.
Abstract
Most social phenomena are inherently complex and hard to measure, often due to under-reporting, stigma, social desirability bias, and rapidly changing external circumstances. This is for instance the case of Intimate Partner Violence (IPV), a highly-prevalent social phenomenon which has drastically risen in the wake of the COVID-19 pandemic. This paper explores whether big data-an increasingly common tool to track, nowcast, and forecast social phenomena in close-to-real time-might help track and understand IPV dynamics. We leverage online data from Google Trends to explore whether online searches might help reach "hard-to-reach" populations such as victims of IPV using Italy as a case-study. We ask the following questions: Can digital traces help predict instances of IPV-both potential threat and actual violent cases-in Italy? Is their predictive power weaker or stronger in the aftermath of crises such as COVID-19? Our results suggest that online searches using selected keywords measuring different facets of IPV are a powerful tool to track potential threats of IPV before and during global-level crises such as the current COVID-19 pandemic, with stronger predictive power post outbreaks. Conversely, online searches help predict actual violence only in post-outbreak scenarios. Our findings, validated by a Facebook survey, also highlight the important role that socioeconomic status (SES) plays in shaping online search behavior, thus shedding new light on the role played by third-level digital divides in determining the predictive power of digital traces. More specifically, they suggest that forecasting might be more reliable among high-SES population strata. Supplementary Information: The online version contains supplementary material available at 10.1007/s10680-022-09619-2.Entities:
Keywords: COVID-19; Digital data; Facebook survey; Google Trends; Intimate partner violence; Italy
Year: 2022 PMID: 35668864 PMCID: PMC9150629 DOI: 10.1007/s10680-022-09619-2
Source DB: PubMed Journal: Eur J Popul ISSN: 0168-6577
Data sources, coverage, and empirical specifications
| Data source | Geographical unit | Time unit | Controls | Model |
|---|---|---|---|---|
| Italian Equal Opportunity Department, valid 1522 calls | Italy | Daily | Year fixed effects | OLS. SE robust to heteroskedasticity |
| ISTAT, valid 1522 calls | Regions within Italy | Yearly | Educational attainment, Unemployment rate, GDP, Year fixed effects | OLS. SE clustered at the regional level |
| AREU, number of calls | Lombardy Only | Daily | Year fixed effects | OLS. SE robust to heteroskedasticity |
ISTAT, The Italian National Institute of Statistics; AREU, Regional Agency for Emergency Urgency; FE, fixed effects; SE, standard errors. Robustness checks, including analyses on the pooled sample with a dummy for the post-lockdown period (or dummy for year = 2020 for data source two) and interaction terms are reported in the Online Appendix
Fig. 1Daily number of valid 1522 calls and daily number of 1522 Google hits (A) and total number of 1522 calls (B) by year (over the period 1st of March-30th of June)
Fig. 2Coefficient plot from regressions of daily 1522 valid calls on Google searches, by selected keywords (whole Italy), lagged predictors
Fig. 31522 helpline calls by regions (per 1000 people, 2013–2020)
Fig. 4Coefficient plot from regressions of yearly 1522 calls on Google searches, by selected keywords (regional-level)
Fig. 5Daily number of calls to AREU from men and women for all reasons combined (top panel) and from women for accident or violence-related purposes (bottom panel)
Fig. 6Coefficient plot from regressions of daily calls to AREU on Google searches, by selected keywords (Lombardy), 1-week lag
Fig. 7Coefficient plot from regressions of Google searches on a dummy for low-SES (high-school diploma or less). Facebook survey