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What we learn in school: Cognitive and non-cognitive skills in the educational production function.

机译:我们在学校学到的知识:教育生产功能中的认知和非认知技能。

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This dissertation revisits the traditional educational production function, offering alternative strategies to model how achievement and socio-emotional skills enter the relationship and how they are affected during the schooling period. The proposed analyses use a combination of estimation methodologies (longitudinal, multilevel and simultaneous equations models) to empirically assess the importance of the different inputs in the educational process. These estimates can be compared to those obtained using traditional estimation methods to complement our understanding of what educational outcomes are generated in school and which school inputs are most important in producing certain outcomes. The analyses try to provide a broader understanding –both conceptually and statistically- of how education is produced and unbiased estimates of the relative importance of the determinants of academic and behavioral performance.;Study design and methods. This dissertation is composed of three empirical questions about the conceptual and statistical structure of the educational production function, aimed at identifying what educational outcomes are generated and what determinants affect them. The empirical analyses use the Early Childhood Longitudinal Study, Kindergarten Class of 1998–99. 1. Estimation of cognitive achievement: an overview of the traditional educational production function; 2. Estimation of non-cognitive achievement: educational production function for non-cognitive skills; 3. A simultaneous equations model of the determinants of educational outcomes: achievement and behavioral skills.;Question 1 involves the estimation of the production of cognitive skills, and educational achievement in reading and mathematics; Question 2 involves the estimation of the production of non-cognitive skills in school, and particular behavioral skills such as internalizing and externalizing behavioral problems, and self-control (reported by the teacher). I use three different estimation methods for both questions: ordinary least squares; students’ fixed effects; and multilevel students’ fixed-effects.;In Question 3 I model the production of simultaneous outcomes, using a cross-sectional and a dynamic simultaneous equation model of the production of education. This framework is an attempt to account for simultaneity and interdependence between outcomes and several educational inputs, leading to a more realistic formulation of how different educational ingredients can be interrelated over time, and acknowledging that educational components can be both inputs and outputs of the process, at different points in time. The estimation methods are three-stage least squares for the cross-sectional estimates; and within-three stages least squares for the longitudinal model.;Findings. The findings obtained from the estimation of the three research questions indicate, in accordance with the existing literature, that the associations between teacher and schools characteristics and the production of cognitive skills and non-cognitive skills are small and mainly statistically insignificant.;First, the results using students’ fixed effects estimation suggest that the effects of teacher’s educational attainment on the cognitive skills index; and experience on the non-cognitive skills index. Some effects of class size are also detected for the production of both skills.;Secondly, the estimates using the multilevel students’ fixed effects estimation, which controls for the clustered structure of the ECLS-K dataset, indicate that some the effects of certain school level characteristics are statistically significant for the production of reading achievement. These variables are type of school (Catholic school versus public) or class size (medium size versus small). Similarly, the effects of certain teacher characteristics, such as higher educational attainment are statistically significant for the production of mathematics achievement. Regarding the non-cognitive skills, teachers with more experience lead to better non-cognitive skills, while students in private schools, versus students in public schools, have lower non-cognitive skills, as reported by their teachers.;Finally, the results using the cross-sectional simultaneous equations model confer a statistically significance importance to the associations between cognitive and non-cognitive skills in all the grade-levels. Compared to the teacher and school characteristics associations, the coefficients associated with the simultaneous relationships are educationally important.;Policy implications. The design of a comprehensive model of educational outcomes and the study of their associations with the different school inputs are expected to uncover interesting features of the educational production process. Consequently, and building on all the existing knowledge on the production of education, these analyses can help to shed some light on fundamental knowledge for educational research: to better understand the educational process. The empirical findings arising from the study can be useful for informing policymakers and school practitioners and guiding decision making, by offering complementary frameworks that more accurately represent the educational process. Finally, the results may be useful for designing and evaluating educational interventions that are efficient and effective in producing higher quality and quantity of educational outcomes, by incorporating the assessment of non-cognitive skills into the interventions’ expected outcomes. Indirectly, this could also stimulate the creation of newer theoretical frameworks, statistical methods and more comprehensive empirical sources for the study of education.
机译:本文回顾了传统的教育生产功能,提供了替代策略来模拟成就和社会情感技能如何进入关系以及在上学期间如何影响他们。拟议的分析使用估计方法(纵向,多层和联立方程模型)的组合,以经验方式评估教育过程中不同投入的重要性。可以将这些估计与使用传统估计方法获得的估计进行比较,以补充我们对学校产生哪些教育成果以及哪些学校投入对于产生某些成果最重要的理解。这些分析试图在概念上和统计学上提供对教育产生方式的更广泛理解,以及对学术和行为表现的决定因素相对重要性的无偏估计。研究设计和方法。本文由三个关于教育生产函数的概念和统计结构的实证问题组成,目的是确定产生了哪些教育成果以及哪些决定因素对其产生影响。实证分析使用1998–99幼儿园班的儿童早期纵向研究。 1.认知成就的估计:传统教育生产功能的概述; 2.非认知成就的估计:非认知技能的教育生产功能; 3.教育成果决定因素的联立方程模型:成就和行为技能。;问题1涉及认知技能的产生以及阅读和数学教育成就的估算;问题2涉及对学校非认知技能的产生的估计,以及特定的行为技能,例如将行为问题内在化和外在化以及自我控制(由老师报告)。对于这两个问题,我使用三种不同的估计方法:普通最小二乘法;学生的固定效果;以及问题3中的固定效果。在问题3中,我使用教育生产的横断面和动态联立方程模型对同时产生的结果进行建模。该框架试图说明成果与若干教育投入之间的同时性和相互依赖性,从而导致更现实地阐述不同教育成分如何随时间相互联系,并认识到教育内容既可以作为这一过程的投入也可以作为产出,在不同的时间点。估计方法是横截面估计的三阶段最小二乘法;和三个阶段内的最小二乘纵向模型。根据对这三个研究问题的估计得出的结果表明,根据现有文献,教师和学校特征与认知技能和非认知技能的产生之间的关联很小,并且在统计学上不重要。使用学生固定效果估计的结果表明,教师的教育程度对认知技能指数的影响;和非认知技能指数方面的经验。班级规模的影响也被发现,这两种技能的产生。其次,使用控制ECLS-K数据集的聚类结构的多级学生固定效果估算进行的估算表明,某些学校的某些效果水平特征对于阅读成绩的产生具有统计学意义。这些变量是学校类型(天主教学校与公立学校)或班级规模(中等规模与小班级)。同样,某些教师特征的影响,例如高等教育程度,对产生数学成就具有统计学意义。关于非认知技能,有更多经验的老师会导致更好的非认知技能,而根据教师的报告,私立学校的学生与公立学校的学生的非认知技能较低;最后,使用横截面联立方程模型对所有年级的认知技能和非认知技能之间的关联具有统计学意义。与教师和学校的特征协会相比,与同时关系的关联系数在教育上很重要。设计一个综合的教育成果模型并研究其与不同学校投入的关系,将揭示教育生产过程的有趣特征。因此,并以有关教育生产的所有现有知识为基础,这些分析可以帮助阐明教育研究的基础知识:更好地了解教育过程。通过提供补充性框架以更准确地代表教育过程,该研究得出的经验性发现对于通知政策制定者和学校从业人员并指导决策制定很有用。最后,通过将非认知技能的评估纳入干预的预期结果中,这些结果可能对于设计和评估有效且有效地产生更高质量和数量的教育结果的教育干预措施很有用。间接地,这也可能刺激为教育研究创造新的理论框架,统计方法和更全面的经验来源。

著录项

  • 作者

    Garcia Garcia, Maria Emma.;

  • 作者单位

    Columbia University.;

  • 授予单位 Columbia University.;
  • 学科 Education Policy.;Economics General.;Education Curriculum and Instruction.
  • 学位 Ph.D.
  • 年度 2013
  • 页码 391 p.
  • 总页数 391
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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