A Proposal of Spatial Measurement of Peer Effect through Socioeconomic Indices and Unsatisfied Basic Needs
Abstract
:1. Introduction
- (1)
- The level of economic, social and cultural status (ESCS) by schools; traditional in literature but not previously used in Latin America studies.
- (2)
- A district poverty index, calculated through unsatisfied basic needs in terms of hygiene, education, consumption or housing. This constitutes a novelty in the literature on the measurement of peer effects.
2. Literature Review
3. Empirical Study, Data and Descriptive Statistics
4. Model and Methodology: Elaboration of the Educational Production Function
5. Empirical Results
6. Discussion
7. Conclusions, Extensions and Recommendations in Terms of Educational Policy
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Appendix A
Variable | Definition | Source | Year |
---|---|---|---|
Student and family characteristics | |||
Gender | Gender of student. | PISA | 2012 |
Age | Age of student. | PISA | 2012 |
Country of birth | Native student or non-native student. | PISA | 2012 |
Books at home | Number of books available at home. | PISA | 2012 |
Parents’ occupation | Index based on the highest occupational status of parents, which corresponds to the highest ISEI score of either parent or to the only available parent’s ISEI score. Higher scores indicate higher levels of occupational status. | PISA | 2012 |
Parents’ education | Highest parental education expressed as years of schooling. | PISA | 2012 |
School characteristics | 2012 | ||
Number of students | Index of school size contains the total enrolment at school based on the enrolment data provided by the school principal. | PISA | 2012 |
Privately operated | School privately operated. | PISA | 2012 |
Share of government funding | Share of government funding | PISA | 2012 |
School’s community location | Refers to the community in which the school is located, such as a village, hamlet or rural area (fewer than 3000 people), a small town (3000 to about 15,000 people), a town (15,000 to about 100,000 people), a city (100,000 to about 1,000,000 people), close to the center of a city with over 1,000,000 people or elsewhere in a city with over 1,000,000 people. | PISA | 2012 |
Proportion of fully certified teachers. | Proportion of fully certified teachers. | PISA | 2012 |
Shortage of mathematics teachers | Variable built from the question “Shortage of mathematics teachers”. The question used a four-pint scale distinguish the answer categories: “Not at all”, “Very little”, “To some extent” and “A lot”. | PISA | 2012 |
Shortage of reading teachers | Variable built from the question “Shortage of reading teachers”. The question used a four-point scale distinguish the answer categories: “Not at all”, “Very little”, “To some extent” and “A lot”. | PISA | 2012 |
Shortage of science teachers | Variable built from the question “Shortage of sicence teachers”. The question used a four-point scale distinguish the answer categories: “Not at all”, “Very little”, “To some extent” and “A lot”. | PISA | 2012 |
School Autonomy | Index of school responsibility for resource allocation. Higher scores indicate higher levels of school autonomy. | PISA | 2012 |
Economic Social Cultural Status (ESCS) | Index of economic, social and cultural status consisting of three sub-components, the highest parental occupation, the highest parental education expressed as years of schooling and the index of home possessions. Higher scores indicate higher levels of economic social cultural status. | ||
District characteristics | |||
Poverty index (unsatisfied basic needs) | Percentage of households having at least one unsatisfied basic need (in shelter, hygiene, education or consumption). Higher scores indicate higher levels of poverty. | NGI and NISC | 2011 |
Variable | Mean | Sd | Min | Max |
---|---|---|---|---|
PISA scores (Average plausible values) | ||||
Mathematics | 405.974 | 62.794 | 195.21 | 694.742 |
Reading | 440.636 | 66.57 | 196.378 | 660.552 |
Science | 429.095 | 63.073 | 189.239 | 674.599 |
Student and family characteristics | ||||
Gender | ||||
Female | 0.540 | (Base Category) | ||
Male | 0.465 | 0.499 | 0 | 1 |
Age | 15.767 | 0.281 | 15.33 | 16.25 |
Country of birth | ||||
Costa Rica | 0.967 | (Base Category) | ||
Non-native student | 0.033 | 0.179 | 0 | 1 |
Books at home | ||||
0–10 books | 0.445 | (Base Category) | ||
11–25 books | 0.258 | 0.438 | 0 | 1 |
26–100 books | 0.205 | 0.404 | 0 | 1 |
101–200 books | 0.061 | 0.239 | 0 | 1 |
201–500 books | 0.020 | 0.141 | 0 | 1 |
More than 500 books | 0.011 | 0.103 | 0 | 1 |
Parents’ occupation | 42.655 | 23.53 | 11.01 | 88.96 |
Parents’ education | ||||
None | 0.038 | (Base Category) | ||
Primary | 0.181 | 0.385 | 0 | 1 |
Lower secondary | 0.011 | 0.104 | 0 | 1 |
Upper secondary I | 0.252 | 0.434 | 0 | 1 |
Upper secondary II | 0.116 | 0.321 | 0 | 1 |
University | 0.401 | 0.490 | 0 | 1 |
School characteristics | ||||
Number of students | 855.91 | 614.925 | 26 | 4813 |
School ownership | ||||
Publicly operated | 0.850 | (Base Category) | ||
Privately operated | 0.141 | 0.348 | 0 | 1 |
Share of government funding | 77.631 | 31.283 | 0 | 100 |
School’s community location | ||||
Village or rural area (<3000) | 0.233 | (Base Category) | ||
Town (3000–15,000) | 0.265 | 0.441 | 0 | 1 |
Large town (15,000–100,000) | 0.366 | 0.482 | 0 | 1 |
City (100,000–1,000,000) | 0.113 | 0.317 | 0 | 1 |
Large city (>1,000,000) | 0.022 | 0.147 | 0 | 1 |
Share of fully certified teachers at school | 0.804 | 0.221 | 0 | 1 |
Shortage of mathematics teachers | ||||
Not at all | 0.635 | (Base Category) | 0 | 1 |
Very little | 0.273 | 0.446 | 0 | 1 |
To some extent | 0.067 | 0.250 | 0 | 1 |
A lot | 0.006 | 0.079 | 0 | 1 |
Shortage of reading teachers | ||||
Not at all | 0.651 | (Base Category) | 0 | 1 |
Very little | 0.260 | 0.439 | 0 | 1 |
To some extent | 0.065 | 0.247 | 0 | 1 |
A lot | 0.024 | 0.154 | 0 | 1 |
Shortage of science teachers | ||||
Not at all | 0.647 | (Base Category) | 0 | 1 |
Very little | 0.217 | 0.412 | 0 | 1 |
To some extent | 0.125 | 0.331 | 0 | 1 |
A lot | 0.011 | 0.105 | 0 | 1 |
School Autonomy | −0.666 | 0.836 | −2.187 | 1.604 |
Economic Social Cultural Status level | ||||
District characteristics | −0.970 | 0.740 | −2.775 | 1.065 |
Poverty index (unsatisfied basic needs) | 0.251 | 0.124 | 0.080 | 0.753 |
References
- Ammermueller, Andreas, and Jörn-Steffen Pischke. 2009. Peer effects in European primary schools: Evidence from the progress in international reading literacy study. Journal of Labor Economics 27: 315–48. [Google Scholar] [CrossRef] [Green Version]
- Angrist, Joshua, Sarah Cohodes, Susan Dynarski, Parag Pathak, and Christopher Walters. 2016. Stand and deliver: Effects of Boston’s charter high schools on college preparation, entry, and choice. Journal of Labor Economics 34: 275–318. [Google Scholar] [CrossRef] [Green Version]
- Barcenilla, Sara, Gregorio Gimenez, and Carmen López-Pueyo. 2019. Differences in Total Factor Productivity Growth in the European Union: The role of Human Capital by Income Level. Prague Economic Papers 28: 70–85. [Google Scholar] [CrossRef] [Green Version]
- Billings, Stephen B., David J. Deming, and Jonah Rockoff. 2014. School segregation, educational attainment, and crime: Evidence from the end of busing in Charlotte-Mecklenburg. The Quarterly Journal of Economics 129: 435–76. [Google Scholar] [CrossRef]
- Breton, Theodore R., and Gustavo Canavire-Bacarreza. 2016. Low Test Scores in Latin America: Poor Schools, Poor Families, or Something Else? SSRN Electronic Journal. [Google Scholar] [CrossRef]
- Brown, Philip H., and Albert Park. 2002. Education and poverty in rural China. Economics of Education Review 21.6: 523–41. [Google Scholar] [CrossRef]
- Canales, Andrea, and Andrew Webb. 2018. Educational achievement of indigenous students in Chile: School composition and peer effects. Comparative Education Review 62: 231–73. [Google Scholar] [CrossRef]
- Carlson, Deven, and Joshua M. Cowen. 2015. Student neighborhoods, schools, and test score growth: Evidence from Milwaukee, Wisconsin. Sociology of Education 88: 38–55. [Google Scholar] [CrossRef] [Green Version]
- Carrell, Scott E., Mark Hoekstra, and Elira Kuka. 2018. The long-run effects of disruptive peers. American Economic Review 108: 3377–415. [Google Scholar] [CrossRef] [Green Version]
- Castro-Aristizabal, Geovanny, Gimenez Gregorio, and Pérez Ximénez-de-Embún Domingo. 2018. Estimación de los factores condicionantes de la adquisición de competencias académicas en América Latina en presencia de endogeneidad. Revista de la CEPAL, 35–59. [Google Scholar] [CrossRef] [Green Version]
- Castro-Aristizabal, Geovanny, Gregorio Gimenez, and Domingo Pérez Ximénez-de-Embún. 2017. Desigualdades educativas en América Latina, PISA 2012: Causas de las diferencias en desempeño escolar entre los colegios públicos y privados: Educational inequalities in Latin America [PISA 2012: Causes of differences in school performance between public and private schools]. Ministerio de Educación. [Google Scholar] [CrossRef] [Green Version]
- Cervini, Rubén, Nora Dari, and Silvia Quiroz. 2015. Género y rendimiento escolar en América Latina. Los datos del SERCE en matemática y lectura. Revista Iberoamericana de Educación 68: 99–116. [Google Scholar] [CrossRef]
- Coleman, James S. 1968. Equality of educational opportunity. Integrated Education 6: 19–28. [Google Scholar] [CrossRef]
- Del Valle, Roberto, and Andres Fernández. 2014. Diferencias Distritales en la Distribución y Calidad de Recursos en el Sistema Educativo Costarricense y su Impacto en Los Indicadores de Resultados. San José and Costa Rica: Report prepared for the V Informe del Estado de la Educación. [Google Scholar] [CrossRef]
- Deutsch, Joseph, Audrey Dumas, and Jacques Silber. 2013. Estimating an educational production function for five countries of Latin America on the basis of the PISA data. Economics of Education Review 36: 245–62. [Google Scholar] [CrossRef]
- Diette, Timothy M., and Ruth Uwaifo Oyelere. 2017. Gender and racial differences in peer effects of limited English students: A story of language or ethnicity? IZA Journal of Migration; Heidelberg 6: 1–18. [Google Scholar] [CrossRef] [Green Version]
- Fernández, Andrés, and Roberto Del Valle. 2013. Desigualdad educativa en Costa Rica: La brecha entre estudiantes de colegios públicos y privados. Análisis con los resultados de la evaluación internacional PISA. Revista Cepa. [Google Scholar] [CrossRef] [Green Version]
- Fernández-Gutiérrez, Marcos, Gregorio Gimenez, and Jorge Calero. 2020. Is the Use of ICT in Education Leading to Higher Student Outcomes? Analysis from the Spanish Autonomous Communities. Computers & Education 157: 103969. [Google Scholar] [CrossRef]
- Firpo, Sergio, Hugo Jales, and Cristine Pinto. 2015. Measuring peer effects in the Brazilian school system. Applied Economics 47: 3414–38. [Google Scholar] [CrossRef]
- Gimenez, Gregorio, and Beatriz Barrado. 2020. Exposure to crime and academic achievement: A case study for Costa Rica using PISA data. Studies in Educational Evaluation 65: 100867. [Google Scholar] [CrossRef]
- Gimenez, Gregorio, and Castro Aristizabal Geovanny. 2017. Por qué los estudiantes de colegios públicos y privados de Costa Rica obtienen distintos resultados académicos? Perfiles Latinoamericanos 25: 195–223. [Google Scholar] [CrossRef] [Green Version]
- Gimenez, Gregorio, Angel Martín-Oro, and Jaime Sanaú. 2018. The effect of districts’ social development on student performance. Studies in Educational Evaluation 58: 80–96. [Google Scholar] [CrossRef]
- Gimenez, Gregorio, Liubob Tkacheva, and Beatriz Barrado. 2020. Are homicide and drug trafficking linked to peer physical victimization in Costa Rican schools? Psychology of Violence 11: 188–98. [Google Scholar] [CrossRef]
- Gimenez, Gregorio. 2006. Investment in new technology: Modelling the decision process. Technovation 26: 345–350. [Google Scholar] [CrossRef]
- Hanushek, Eric A. 1989. The impact of differential expenditures on school performance. Educational Researcher 18: 45–62. [Google Scholar] [CrossRef]
- Hanushek, Eric A. 2013. Economic growth in developing countries: The role of human capital. Economics of Education Review 37: 204–12. [Google Scholar] [CrossRef]
- Hanushek, Eric A., John F. Kain, Jacob M. Markman, and Steven G. Rivkin. 2003. Does peer ability affect student achievement? Journal of Applied Econometrics 18: 527–44. [Google Scholar] [CrossRef] [Green Version]
- Hanushek, Eric A., Susanne Link, and Ludger Woessmann. 2013. Does school autonomy make sense everywhere? Panel estimates from PISA. Journal of Development Economics 104: 212–32. [Google Scholar] [CrossRef] [Green Version]
- Hoxby, Caroline M. 2000. The effects of class size on student achievement: New evidence from population variation. The Quarterly Journal of Economics 115: 1239–85. [Google Scholar] [CrossRef]
- Izaguirre, Alejandro, and Laura Di Capua. 2020. Exploring peer effects in education in Latin America and the Caribbean. Research in Economics 74: 73–86. [Google Scholar] [CrossRef]
- Knight, John, Li Shi, and Deng Quheng. 2010. Education and the poverty trap in rural China: Closing the trap. Oxford Development Studies 38: 1–24. [Google Scholar] [CrossRef]
- Lavy, Victor, and Analia Schlosser. 2011. Mechanisms and impacts of gender peer effects at school. American Economic Journal: Applied Economics 3: 1–33. [Google Scholar] [CrossRef] [Green Version]
- Lentini, Valeria. 2019. Perfil de los Docentes de Secundaria de la Región Central y Factores Que Influyen en Sus Preferencias Laborales: Resultados de la Encuesta. Colypro-PEN. Conare. Programa Estado de la Nación, Costa Rica. Available online: http://repositorio.conare.ac.cr/handle/20.500.12337/7754 (accessed on 5 September 2020).
- López-Pueyo, Carmen, Sara Barcenilla, and Gregorio Gimenez. 2018. The two faces of human capital and their effect on technological progress. Panoeconomicus 65: 163–81. [Google Scholar] [CrossRef] [Green Version]
- Macdonald, Kevin. 2014. PV: Stata module to perform estimation with plausible values. Statistical Software Components. Available online: http://econpapers.repec.org/software/bocbocode/ (accessed on 5 September 2020).
- Machin, Stephen, and James Vernoit. 2011. Changing School Autonomy: Academy Schools and Their Introduction to England’s Education. CEE DP 123. Centre for the Economics of Education (NJ1). Available online: https://files.eric.ed.gov/fulltext/ED529842.pdf.
- Mander, Adrian, and David Clayton. 2007. HOTDECK: Stata module to impute missing values using the hotdeck method. Statistical Software Components S366901, Boston College Department of Economics, revised March 16. March 16. [Google Scholar]
- Manski, Charles F. 1993. Identification of endogenous social effects: The reflection problem. The Review of Economic Studies 60: 531–42. [Google Scholar] [CrossRef] [Green Version]
- Marotta, Luana. 2017. Peer effects in early schooling: Evidence from Brazilian Primary Schools. International Journal of Educational Research, 110–23. [Google Scholar] [CrossRef]
- McEwan, Patrick J. 2003. Peer effects on student achievement: Evidence from Chile. Economics of Education Review 22: 131–41. [Google Scholar] [CrossRef] [Green Version]
- Murnane, Richard J. 1981. Interpreting the evidence on school effectiveness. Teachers College Record 83: 19–35. [Google Scholar]
- OECD. 2013a. PISA 2012 Assessment and Analytical Framework: Mathematics, Reading, Science, Problem Solving and Financial Literacy. Paris: OECD Publishing. [Google Scholar] [CrossRef] [Green Version]
- OECD. 2013b. PISA 2012 Results: Excellence through Equity. Giving Every Student the Chance to Succeed (Volume II), PISA. Paris: OECD Publishing. [Google Scholar] [CrossRef] [Green Version]
- OECD. 2014a. PISA 2012 Results: What Students Know and Can Do–Student Performance in Mathematics, Reading and Science (Volume I, Revised Edition), PISA. Paris: OECD. [Google Scholar] [CrossRef]
- OECD. 2014b. Technical Report. Rubin. Paris: OECD. [Google Scholar]
- Paloyo, Alfredo R. 2020. Peer effects in education: Recent empirical evidence. In The Economics of Education. Cambridge: Academic Press, pp. 291–305. [Google Scholar] [CrossRef]
- Pop-Eleches, Cristian, and Miguel Urquiola. 2013. Going to a better school: Effects and behavioral responses. American Economic Review 103: 1289–324. [Google Scholar] [CrossRef] [Green Version]
- Raitano, Michele, and Francesco Vona. 2013. Peer heterogeneity, school tracking and students’ performances: evidence from PISA 2006. Applied Economics 45: 4516–32. [Google Scholar] [CrossRef]
- Rangvid, Beatrice Schindler. 2003. Educational peer effects: Quantile regression evidence from Denmark with PISA 2000 data. European Society for Population Economics. [Google Scholar] [CrossRef]
- Rubin, Donald B., and Nathaniel Schenker. 1986. Multiple imputation for interval estimation from simple random samples with ignorable nonresponse. Journal of the American Statistical Association 81: 366–74. [Google Scholar] [CrossRef]
- Sacerdote, Bruce. 2011. Peer effects in education: How might they work, how big are they and how much do we know thus far? In Handbook of the Economics of Education. Amsterdam: Elsevier, vol. 3, pp. 249–77. [Google Scholar] [CrossRef]
- Sakellariou, Chris. 2017. Private or public school advantage? Evidence from 40 countries using PISA 2012-Mathematics. Applied Economics 49: 2875–92. [Google Scholar] [CrossRef]
- Schneeweis, Nicole, and Rudolf Winter-Ebmer. 2007. Peer effects in Austrian schools. Empirical Economics 32: 387–409. [Google Scholar] [CrossRef] [Green Version]
- Sirin, Selcuk R. 2005. Socioeconomic status and academic achievement: A meta-analytic review of research. Review of Educational Research 75: 417–53. [Google Scholar] [CrossRef] [Green Version]
- Somers, Marie-Andrée, Patrick J. McEwan, and J. Douglas Willms. 2004. How effective are private schools in Latin America? Comparative Education Review 48: 48–69. [Google Scholar] [CrossRef]
- Suarez-Enciso, Sonia, Rodolfo Elías, and Dalila Zarza. 2016. Factores asociados al rendimiento académico de estudiantes de Paraguay: Un análisis de los resultados del TERCE. REICE. Revista Electrónica Iberoamericana sobre Calidad, Eficacia y Cambio en Educación. [Google Scholar] [CrossRef]
- Summers, Anita A., and Barbara L. Wolfe. 1977. Do schools make a difference? The American Economic Review 67: 639–52. [Google Scholar] [CrossRef]
- Van der Sluis, Justin, Mirjam Van Praag, and Wim Vijverberg. 2008. Education and entrepreneurship selection and performance: A review of the empirical literature. Journal of Economic Surveys 22: 795–841. [Google Scholar] [CrossRef]
- Van Ewijk, Reyn, and Peter Sleegers. 2010. The effect of peer socioeconomic status on student achievement: A meta-analysis. Educational Research Review 5: 134–50. [Google Scholar] [CrossRef]
- Vigdor, Jacob, and Jens Ludwig. 2010. Neighborhoods and Peers in the Production of Schooling. Amsterdam: Elsevier, pp. 431–37. [Google Scholar] [CrossRef]
- Woltman, Heather, Andrea Feldstain, Christine MacKay, and Meredith Rocchi. 2012. An introduction to hierarchical linear modeling. Tutorials in Quantitative Methods for Psychology 8: 52–69. [Google Scholar] [CrossRef] [Green Version]
- Xuan, Xin, Ye Xue, Cai Zhang, Yuhan Luo, Wen Jiang, Mengdi Qi, and Yun Wang. 2019. Relationship among school socioeconomic status, teacher-student relationship, and middle school students’ academic achievement in China: Using the multilevel mediation model. PLoS ONE 14: e0213783. [Google Scholar] [CrossRef] [PubMed]
- Zimmer, Ron W., and Eugenia F. Toma. 2000. Peer effects in private and public schools across countries. Journal of Policy Analysis and Management: The Journal of the Association for Public Policy Analysis and Management 19: 75–92. [Google Scholar] [CrossRef]
Variable | Missing | Total | Share of Missing Data |
---|---|---|---|
Share of government funding | 492 | 4602 | 10.69% |
Share of fully certified teachers at school | 1495 | 4602 | 32.49% |
Shortage of mathematics s teachers | 36 | 4602 | 0.78% |
Shortage of reading teachers | 62 | 4602 | 1.35% |
Shortage of science teachers | 36 | 4602 | 0.78% |
Non-native student | 43 | 4602 | 0.93% |
Books at home | 197 | 4602 | 4.28% |
Parents’ education | 331 | 4602 | 7.19% |
Parents’ occupation | 416 | 4602 | 9.04% |
Total missing | 3108 | ||
Total observations used in baseline model regression | 69,030 | ||
Share of missing values imputed | 4.50% |
Multilevel (Students, Schools) | Multilevel (Students, Schools, Districts) | |||
---|---|---|---|---|
(1) | (2) | (3) | (4) | |
Control | ESCS by Schools | Control | Poverty Index by Districts | |
Student and family characteristics | ||||
Gender | ||||
Male | 25.242 *** | 25.253 *** | 25.264 *** | 25.265 *** |
(2.988) | (2.989) | (2.936) | (2.936) | |
Age | 9.633 * | 9.621 * | 9.666 * | 9.665 * |
(5.720) | (5.716) | (5.645) | (5.645) | |
Country of birth | ||||
Non-native student | −1.947 | −1.981 | −2.022 | −2.029 |
(10.375) | (10.370) | (10.322) | (10.322) | |
Books at home | ||||
11–25 books | 7.791 ** | 7.786 ** | 7.773 ** | 7.770 ** |
(3.615) | (3.615) | (3.648) | (3.648) | |
26–100 books | 12.776 *** | 12.721 *** | 12.812 *** | 12.810 *** |
(4.325) | (4.323) | (4.251) | (4.251) | |
101–200 books | 16.167 ** | 16.129 ** | 16.174 ** | 16.170 ** |
(7.030) | (7.036) | (7.080) | (7.081) | |
201–500 books | 13.867 | 13.754 | 13.869 | 13.864 |
(9.613) | (9.617) | (9.997) | (9.996) | |
More than 500 books | 4.711 | 4.692 | 4.769 | 4.769 |
(18.066) | (18.064) | (18.032) | (18.032) | |
Parents’ occupation | 0.244 *** | 0.242 *** | 0.245 *** | 0.244 *** |
(0.078) | (0.078) | (0.079) | (0.079) | |
Parents’ education | ||||
Primary | 11.431 | 11.416 | 11.407 * | 11.407 * |
(8.987) | (8.990) | (6.345) | (6.344) | |
Lower secondary | 18.926 | 18.830 | 18.952 | 18.935 |
(13.048) | (13.048) | (11.719) | (11.719) | |
Upper secondary I | 21.301 ** | 21.174 ** | 21.250 *** | 21.240 *** |
(8.479) | (8.477) | (6.588) | (6.588) | |
Upper secondary II | 3.084 | 3.017 | 3.077 | 3.071 |
(8.215) | (8.221) | (6.297) | (6.297) | |
University | 17.754 ** | 17.609 ** | 17.704 *** | 17.696 *** |
(8.442) | (8.442) | (5.752) | (5.752) | |
School characteristics | ||||
Number of students | 0.006 | 0.002 | 0.005 | 0.005 |
(0.006) | (0.005) | (0.005) | (0.005) | |
Privately operated | −31.338 | −74.217 *** | −1.589 | −2.766 |
(26.027) | (23.728) | (31.759) | (31.203) | |
Share of government funding | 0.004 | 0.009 | 0.004 | 0.004 |
(0.076) | (0.074) | (0.073) | (0.073) | |
School’s community location | ||||
Town (3000–15,000) | 7.419 | −18.464 ** | −0.874 | −2.006 |
(9.987) | (9.189) | (10.018) | (9.623) | |
Large town (15,000–100,000) | 20.224 * | −15.116 * | 7.754 | 4.530 |
(11.580) | (8.763) | (10.412) | (10.802) | |
City (100,000–1,000,000) | 5.012 | −25.217 * | −0.733 | −2.819 |
(16.060) | (13.291) | (11.243) | (11.188) | |
Large city (>1,000,000) | 24.098 | −9.916 | −13.280 | −15.947 |
(32.890) | (22.203) | (45.390) | (45.305) | |
Share of fully certified teachers at school | −9.956 | −9.991 | −9.952 | −10.011 |
(8.892) | (8.842) | (9.121) | (9.115) | |
Shortage of mathematics teachers | ||||
Very little | 1.303 | 3.428 | −0.863 | −1.046 |
(13.634) | (12.379) | (13.809) | (13.755) | |
To some extent | −5.725 | −8.350 | −0.496 | −0.626 |
(19.662) | (17.492) | (20.397) | (20.127) | |
A lot | −23.079 * | 11.851 | −19.540 | −10.911 |
(12.223) | (13.487) | (15.212) | (11.565) | |
School Autonomy | 34.979 *** | 22.477 *** | 24.273 ** | 24.155 ** |
(10.092) | (6.558) | (11.805) | (11.567) | |
District characteristics | ||||
ESCS by schools | 43.615 *** | |||
(8.077) | ||||
Poverty index by districts | −85.050 *** | |||
(31.614) | ||||
Constant | 225.577 ** | 296.726 *** | 225.298 ** | 250.219 *** |
(90.801) | (92.715) | (93.082) | (93.920) | |
N | 4602 | 4602 | 4602 | 4602 |
Multilevel (Students, Schools) | Multilevel (Students, Schools, Districts) | |||
---|---|---|---|---|
(1) | (2) | (3) | (4) | |
Control | ESCS by Schools | Control | Poverty Index by Districts | |
Student and family characteristics | ||||
Gender | ||||
Male | −24.520 *** | −24.528 *** | −24.493 *** | −24.494 *** |
(3.620) | (3.625) | (3.548) | (3.548) | |
Age | 0.666 | 0.677 | 0.730 | 0.730 |
(6.402) | (6.394) | (6.435) | (6.434) | |
Country of birth | ||||
Non-native student | −11.266 | −11.186 | −11.257 | −11.260 |
(11.449) | (11.409) | (11.391) | (11.390) | |
Books at home | ||||
11–25 books | 4.050 | 4.010 | 4.067 | 4.061 |
(4.691) | (4.690) | (4.883) | (4.884) | |
26–100 books | 5.561 | 5.497 | 5.549 | 5.548 |
(4.774) | (4.774) | (4.736) | (4.737) | |
101–200 books | 14.630 * | 14.548 * | 14.620 * | 14.616 * |
(8.274) | (8.274) | (8.449) | (8.450) | |
201–500 books | 11.895 | 11.659 | 11.873 | 11.861 |
(10.263) | (10.266) | (10.273) | (10.271) | |
More than 500 books | 9.045 | 9.129 | 8.892 | 8.917 |
(20.216) | (20.181) | (20.191) | (20.188) | |
Parents’ occupation | 0.222 ** | 0.220 ** | 0.223 ** | 0.223 ** |
(0.096) | (0.096) | (0.090) | (0.090) | |
Parents’ education | ||||
Primary | 11.491 | 11.530 | 11.401 | 11.404 |
(8.516) | (8.526) | (8.339) | (8.337) | |
Lower secondary | −2.225 | −2.721 | −2.287 | −2.312 |
(15.442) | (15.440) | (15.411) | (15.409) | |
Upper secondary I | 24.475 *** | 24.380 *** | 24.362 *** | 24.351 *** |
(6.443) | (6.441) | (6.760) | (6.759) | |
Upper secondary II | 4.221 | 4.123 | 4.175 | 4.165 |
(7.514) | (7.514) | (7.615) | (7.615) | |
University | 16.398 ** | 16.327 ** | 16.219 ** | 16.212 ** |
(7.640) | (7.636) | (7.637) | (7.635) | |
School characteristics | ||||
Number of students | 0.005 | 0.002 | 0.006 | 0.006 |
(0.008) | (0.006) | (0.007) | (0.007) | |
Privately operated | −18.456 | −60.740 *** | −0.180 | −1.351 |
(23.078) | (20.753) | (28.066) | (27.249) | |
Share of government funding | −0.048 | −0.040 | −0.031 | −0.031 |
(0.129) | (0.128) | (0.129) | (0.129) | |
School’s community location | ||||
Town (3000–15,000) | 16.412 | −8.781 | 18.670 | 16.732 |
(11.282) | (8.636) | (12.358) | (12.035) | |
Large town (15,000–100,000) | 21.791* | −12.936 | 16.121 | 11.633 |
(13.030) | (9.944) | (11.659) | (11.523) | |
City (100,000–1,000,000) | −0.379 | −30.487 ** | 5.111 | 2.050 |
(18.316) | (15.383) | (14.514) | (14.360) | |
Large city (>1,000,000) | 12.715 | −22.540 | −11.578 | −15.697 |
(35.975) | (25.332) | (52.068) | (51.529) | |
Share of fully certified teachers at school | −12.991 | −13.026 | −12.014 | −12.090 |
(9.377) | (9.332) | (9.599) | (9.590) | |
Shortage of mathematics teachers | ||||
Very little | 14.656 | 11.520 | 15.820 | 15.262 |
(12.549) | (12.462) | (12.642) | (12.559) | |
To some extent | −12.184 | −8.161 | −12.415 | −12.463 |
(23.996) | (23.792) | (25.539) | (25.333) | |
A lot | 14.542 | 12.953 | 22.668 | 23.137 |
(18.247) | (16.293) | (20.029) | (19.399) | |
School Autonomy | 31.796 *** | 20.693 *** | 21.651 * | 21.398 ** |
(8.639) | (7.201) | (11.089) | (10.809) | |
ESCS by schools | 41.176 *** | |||
(7.934) | ||||
District characteristics | ||||
Poverty index by districts | −112.189 *** | |||
(28.866) | ||||
Constant | 422.553 *** | 492.096 *** | 415.268 *** | 448.485 *** |
(107.801) | (108.919) | (107.446) | (107.647) | |
N | 4602 | 4602 | 4602 | 4602 |
Multilevel (Students, Schools) | Multilevel (Students, Schools, Districts) | |||
---|---|---|---|---|
(1) | (2) | (3) | (4) | |
Control | ESCS by Schools | Control | Poverty Index by Districts | |
Student and family characteristics | ||||
Gender | ||||
Male | 12.271 ** | 12.281 ** | 12.319 ** | 12.319 ** |
(5.240) | (5.239) | (5.164) | (5.164) | |
Age | 1.641 | 1.672 | 1.614 | 1.614 |
(6.915) | (6.899) | (6.826) | (6.826) | |
Country of birth | ||||
Non-native student | −6.651 | −6.631 | −6.707 | −6.724 |
(11.957) | (11.929) | (11.943) | (11.941) | |
Books at home | ||||
11–25 books | 9.909 * | 9.880 * | 9.941 * | 9.938 * |
(5.407) | (5.407) | (5.491) | (5.491) | |
26–100 books | 14.281 ** | 14.234 ** | 14.341 ** | 14.342 ** |
(7.260) | (7.262) | (7.252) | (7.251) | |
101–200 books | 15.546 ** | 15.490 ** | 15.566 ** | 15.570 ** |
(7.329) | (7.335) | (7.468) | (7.468) | |
201–500 books | 19.345 * | 19.214 | 19.460 | 19.455 |
(11.694) | (11.693) | (11.949) | (11.948) | |
More than 500 books | 14.435 | 14.415 | 14.557 | 14.567 |
(17.911) | (17.865) | (17.820) | (17.818) | |
Parents’ occupation | 0.197 ** | 0.195 ** | 0.198 ** | 0.198 ** |
(0.095) | (0.095) | (0.092) | (0.092) | |
Parents’ education | ||||
Primary | 1.075 | 1.104 | 1.033 | 1.034 |
(8.661) | (8.666) | (9.248) | (9.247) | |
Lower secondary | −2.303 | −2.450 | −2.232 | −2.251 |
(13.209) | (13.196) | (13.281) | (13.281) | |
Upper secondary I | 11.199 | 11.093 | 11.100 | 11.090 |
(8.610) | (8.595) | (8.517) | (8.517) | |
Upper secondary II | −4.080 | −4.141 | −4.152 | −4.158 |
(9.019) | (9.003) | (8.680) | (8.680) | |
University | 5.855 | 5.752 | 5.727 | 5.716 |
(10.347) | (10.332) | (10.573) | (10.573) | |
School characteristics | ||||
Number of students | 0.010 * | 0.006 | 0.008 | 0.007 |
(0.006) | (0.004) | (0.005) | (0.005) | |
Privately operated | −25.589 | −65.747 *** | 0.224 | −0.956 |
(22.862) | (19.180) | (24.216) | (23.636) | |
Share of government funding | −0.013 | −0.006 | −0.014 | −0.014 |
(0.103) | (0.102) | (0.101) | (0.101) | |
School’s community location | ||||
Town (3000–15,000) | 9.367 | −14.259 | 2.986 | 2.127 |
(13.017) | (11.565) | (12.382) | (12.040) | |
Large town (15,000–100,000) | 17.743 | −15.136 | 5.501 | 2.477 |
(11.629) | (9.719) | (11.018) | (11.094) | |
City (100,000–1,000,000) | 15.911 | −12.330 | −0.081 | −1.801 |
(16.906) | (14.739) | (14.080) | (14.062) | |
Large city (>1,000,000) | −6.108 | −37.841 | −41.704 | −44.265 |
(34.896) | (24.367) | (47.887) | (47.738) | |
Share of fully certified teachers at school | −10.950 | −11.163 | −10.864 | −10.941 |
(9.139) | (9.085) | (9.300) | (9.292) | |
Shortage of mathematics teachers | ||||
Very little | 18.556 | 18.115 | 21.419 | 21.033 |
(18.936) | (17.998) | (15.844) | (15.759) | |
To some extent | 3.659 | 2.841 | 8.294 | 8.980 |
(17.861) | (15.821) | (18.154) | (18.079) | |
A lot | 35.540 | 15.146 | 41.884 | 34.108 |
(24.939) | (27.953) | (29.640) | (31.990) | |
School Autonomy | 36.322 *** | 25.950 *** | 25.539 ** | 25.417 *** |
(8.793) | (7.125) | (9.958) | (9.763) | |
ESCS by schools | 38.598 *** | |||
(6.986) | ||||
District characteristics | ||||
Poverty index by districts | −95.911 *** | |||
(33.571) | ||||
Constant | 383.413 *** | 448.998 *** | 385.977 *** | 413.872 *** |
(109.634) | (111.173) | (111.626) | (113.982) | |
N | 4602 | 4602 | 4602 | 4602 |
Multilevel (Students, Schools) | ||||||
Mathematics | Reading | Science | ||||
25% | 75% | 25% | 75% | 25% | 75% | |
Control variables | ||||||
ESCS by schools | 6.602 | 21.772 *** | 7.703 | 12.737 * | 5.274 | 10.867 |
(6.901) | (6.774) | (8.011) | (6.978) | (7.074) | (9.330) | |
Multilevel (students, schools and districts) | ||||||
Mathematics | Reading | Science | ||||
25% | 75% | 25% | 75% | 25% | 75% | |
Control variables | ||||||
Poverty index by districts | −34.921 * | −19.671 | −4.261 | −33.377 | −64.084 *** | −19.243 |
(18.686) | (28.419) | (31.970) | (29.026) | (23.417) | (36.081) |
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Gimenez, G.; Ciobanu, D.; Barrado, B. A Proposal of Spatial Measurement of Peer Effect through Socioeconomic Indices and Unsatisfied Basic Needs. Economies 2021, 9, 72. https://doi.org/10.3390/economies9020072
Gimenez G, Ciobanu D, Barrado B. A Proposal of Spatial Measurement of Peer Effect through Socioeconomic Indices and Unsatisfied Basic Needs. Economies. 2021; 9(2):72. https://doi.org/10.3390/economies9020072
Chicago/Turabian StyleGimenez, Gregorio, Denisa Ciobanu, and Beatriz Barrado. 2021. "A Proposal of Spatial Measurement of Peer Effect through Socioeconomic Indices and Unsatisfied Basic Needs" Economies 9, no. 2: 72. https://doi.org/10.3390/economies9020072
APA StyleGimenez, G., Ciobanu, D., & Barrado, B. (2021). A Proposal of Spatial Measurement of Peer Effect through Socioeconomic Indices and Unsatisfied Basic Needs. Economies, 9(2), 72. https://doi.org/10.3390/economies9020072