기본 정보
연구 분야
프로젝트
논문
구성원
article|
인용수 1
·2023
Drivers of COVID-19 protest across localities in Israel: a machine-learning approach
Nina Schlager, Karsten Donnay, Hyunjung Kim, Ravi Bhavnani
IF 1.8Political Research Exchange
초록

Anti-government protests emerged globally in response to COVID-19 countermeasures. What are the key drivers of these pandemicrelated protests, and to what extent do they differ from the drivers of non-COVID protests? We examine these questions in the context of Israel, which faced a growing political crisis at the start of the pandemic, effectively blurring the distinction between different causes of protest. Our data features 1,922 protests across 189 Israeli localities for the period between March and July 2022. Using a machine learning approach, we find that all protests, regardless of whether they were directly related to the pandemic or not, were motivated by the same set of key indicatorsalbeit with the ranking of drivers for COVID-related protests inverted for non-COVID protests. Local infection rates and government responses were more pronounced for the former, whereas differences in residential and commercial property taxes, access to affordable housing, quality of education and demography were among the most important drivers for the latter. Our analysis underscores the role that local governments played in managing the pandemic, and demonstrates that variation in socioeconomic conditions had an important effect on the incidence of protests across Israel.

키워드
Coronavirus disease 2019 (COVID-19)Context (archaeology)PandemicPoliticsSocioeconomic statusGovernment (linguistics)Political scienceRanking (information retrieval)Demographic economicsEconomic growth
타입
article
IF / 인용수
1.8 / 1
게재 연도
2023

주식회사 디써클

대표 장재우,이윤구서울특별시 강남구 역삼로 169, 명우빌딩 2층 (TIPS타운 S2)대표 전화 0507-1312-6417이메일 info@rndcircle.io사업자등록번호 458-87-03380호스팅제공자 구글 클라우드 플랫폼(GCP)

© 2026 RnDcircle. All Rights Reserved.