An Analysis of the Effect of Streaming on Civic Participation Through a Causal Hidden Markov Model

IF 2.8 2区 社会学 Q1 SOCIAL SCIENCES, INTERDISCIPLINARY
Francesco Bartolucci, Donata Favaro, Fulvia Pennoni, Dario Sciulli
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Abstract

We examine the effect of streaming based on ability levels on individuals’ civic participation throughout their adult life. The hypothesis we test is that ability grouping influences individuals’ general self-concept and, consequently, their civic participation choices across the life course. We employ data from the British National Child Development Study, which follows all UK citizens born during a certain week in 1958. Six binary variables observed at 33, 42, and 51 years of age are considered to measure civic participation. Our approach defines causal estimands with multiple treatments referring to the evolution of civic engagement over time in terms of potential versions of a sequence of latent variables assumed to follow a Markov chain with initial and transition probabilities depending on posttreatment time-varying covariates. The model also addresses partially or entirely missing data on one or more indicators at a given time occasion and missing posttreatment covariate values using dummy indicators. The model is estimated by maximizing a weighted log-likelihood function with weights corresponding to the inverse probability of the received treatment obtained from a multinomial logit model based on pretreatment covariates. Our results show that ability grouping affects the civic participation of high-ability individuals when they are 33 years old with respect to participation in general elections.

Abstract Image

通过因果隐马尔可夫模型分析流媒体对公民参与的影响
我们研究了基于能力水平的分流对个人成年后公民参与的影响。我们检验的假设是,能力分组会影响个人的总体自我概念,进而影响他们在整个人生过程中的公民参与选择。我们采用的数据来自英国国家儿童发展研究,该研究跟踪调查了 1958 年某一周出生的所有英国公民。在 33 岁、42 岁和 51 岁时观察到的六个二元变量被用来衡量公民参与度。我们的方法定义了具有多重处理的因果估计值,指的是公民参与随着时间的推移而发生的演变,即一连串潜在变量的潜在版本,假定这些潜在变量遵循马尔可夫链,其初始概率和过渡概率取决于处理后的时变协变量。该模型还使用虚拟指标来处理特定时间点上一个或多个指标的部分或全部缺失数据,以及治疗后协变量值的缺失。模型的估计方法是最大化加权对数似然函数,该函数的权重与基于治疗前协变量的多叉 logit 模型得到的接受治疗的反概率相对应。我们的结果表明,能力分组影响了高能力者在 33 岁时参与大选方面的公民参与。
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来源期刊
CiteScore
6.30
自引率
6.50%
发文量
174
期刊介绍: Since its foundation in 1974, Social Indicators Research has become the leading journal on problems related to the measurement of all aspects of the quality of life. The journal continues to publish results of research on all aspects of the quality of life and includes studies that reflect developments in the field. It devotes special attention to studies on such topics as sustainability of quality of life, sustainable development, and the relationship between quality of life and sustainability. The topics represented in the journal cover and involve a variety of segmentations, such as social groups, spatial and temporal coordinates, population composition, and life domains. The journal presents empirical, philosophical and methodological studies that cover the entire spectrum of society and are devoted to giving evidences through indicators. It considers indicators in their different typologies, and gives special attention to indicators that are able to meet the need of understanding social realities and phenomena that are increasingly more complex, interrelated, interacted and dynamical. In addition, it presents studies aimed at defining new approaches in constructing indicators.
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