叙述的
行为性话语
叙述性探究
背景(考古学)
再开发
社会学
公共行政
反对派(政治)
政治
政治学
美学
历史
法学
考古
语言学
哲学
作者
Victor Albert,Svetlana Lepeshkina,Alexander Savchenko,Maria Davidenko
标识
DOI:10.1080/19460171.2023.2199362
摘要
ABSTRACTABSTRACTThe Narrative Policy Framework (NPF) has become a popular, positivist approach to studying how narratives affect the policy process over the past 10 years. In this paper, we critically evaluate its applicability in an authoritarian context. We employ a mixed-method approach to, first, present some of the narrative elements employed by principal actors in the policy debate according to the NPF, derived through quantitative content analysis, and second, to critically contrast these findings by drawing on qualitative data. The policy we examine is Moscow's contentious Renovation program, which aims to demolish many of the city's Soviet-era five story 'Kruschovsky' apartment blocks and resettle residents in new apartments. The quantitative content analysis is derived from several online government sources and that of the principal opponent of the Renovation program, an online group called 'Moscovites Against Demolition'. The qualitative data are derived from a district in Southwest Moscow, where the first Kruschovsky apartments were developed and has locally seen vocal opposition to the Renovation program and other redevelopment projects. This study highlights the limitations of the NPF and argues that by examining the performative nature of policy narratives, we can gain greater insight into the political strategies and context that underwrite these narratives.KEYWORDS: Russiacivil societyhousing policypolicy narrativesnarrative policy frameworkrenovation program AcknowledgmentsThe publication was prepared within the framework of the Academic Fund Program at the National Research University Higher School of Economics (HSE) in 2020–2021 (grant no. 20-04-003) and by the Russian Academic Excellence Project "5-100." We would like to thank Caroline Schlaufer, Artem Uldanov, and other project participants for their comments and contributions. The paper was presented at the ECPR General Conference in 2020 and the Interpretative Policy Analysis Conference in 2021. We would like to thank the organisers and participants for their questions and suggestions, and particularly Jonathan Pierce for his close reading of an earlier draft.Disclosure statementNo potential conflict of interest was reported by the author(s).Additional informationFundingThe work was supported by the National Research University Higher School of Economics [grant no. 20-04- 003].
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