Social Capital and Dropping Out of High School: Benefits to At-Risk Students Of Teachers' Support and Guidance

2001 ◽  
Vol 103 (4) ◽  
pp. 548-581 ◽  
Author(s):  
Robert G. Croninger ◽  
Valerie E. Lee
Mousaion ◽  
2021 ◽  
Vol 39 (2) ◽  
Author(s):  
Vicki Lawal

This paper examines academic library services to at-risk students in the Fourth Industrial Revolution (4IR). It aims to explore theoretical approaches that can direct more targeted support and service models as an intervention for students who are at risk of failure. The paper specifically analyses Nan Lin’s concept of social capital theory with its particular emphasis on social network analysis. The study which directed this paper, employed a conceptual analysis as a methodology by which the literature review was used as a basis for analysing the research questions of the paper. Outcomes from the analysis indicate that Lin’s concept of social capital theory has the potential to provide a method for measuring social capital that can be assessed against information seeking outcomes. Recommendations suggest the importance of the theory as a methodological tool for investigating relationships between individuals and their social contexts, which could also be adopted by academic libraries in higher education to enhance students’ learning outcomes and educational experience in the 4IR.


Author(s):  
Gary Natriello

Students in danger of not completing a particular level of schooling have been termed “at-risk.” Reasons that students may be at risk include individual characteristics, family circumstances, poor school conditions, and lack of community resources. Studies of single factors, multiple factors, and programmatic interventions have all identified specific variables associated with greater risk of dropping out of school. The various factors associated with dropping out can offset one another to reduce the risk or reinforce one another to enhance the risk that students will leave school early.


2018 ◽  
Vol 47 (3) ◽  
pp. 275-290 ◽  
Author(s):  
Andrew J. Thayer ◽  
Clayton R. Cook ◽  
Aria E. Fiat ◽  
Meghanne N. Bartlett-Chase ◽  
Jessie M. Kember
Keyword(s):  
At Risk ◽  

Author(s):  
Kitty Fortner ◽  
Jose W. Lalas

School, parent involvement, and at-risk students do not always make a winning combination. However, for the students at Mountain View High School, things were different. Strategies used by the Mountain View Parent Advisory Group helped to transform education for students of color who participated in their program. This chapter follows a study at a high school located in an upper/upper middle-class neighborhood where barriers to academic growth were considered addressed. However, there was a pocket of students of color who were not being successful academically. Strategies used by a parent group to help re-engage at-risk students, raise their GPAs, and redirect their future towards success are highlighted. Understanding that these strategies can be initiated by any group of parents or teachers provides promise for at-risk students, parents, and schools.


2002 ◽  
Vol 35 (1) ◽  
pp. 99-113 ◽  
Author(s):  
Stephen Houghton ◽  
Annemaree Carroll

Two hundred and forty nine 12 to 13 year old at-risk and not at-risk male and female high school students randomly selected from five high schools in the Perth metropolitan area of Western Australia provided self-reported delinquency data for three consecutive years. A multivariate analysis of variance revealed at-risk students self-reported significantly more involvement in delinquency at the first data collection point than their not at-risk counterparts. Male 12–13 year olds self-reported significantly more involvement in car related crimes, assault, rule infractions, and vandalism compared to their female peers. For some delinquent activities there were significant increases in involvement over time (Motor Vehicle, Drugs, and Public Disorder Offences) while for others (Theft, Rule Infractions, and Vandalism) this was not the case. In the majority of categories of delinquency at-risk students self reported significantly higher rates of involvement.


2021 ◽  
pp. 108705472110442
Author(s):  
Rosanna Breaux ◽  
Nicholas C. Dunn ◽  
Joshua M. Langberg ◽  
Caroline N. Cusick ◽  
Melissa R. Dvorsky ◽  
...  

Objective: Researchers have speculated that the COVID-19 pandemic may expand the academic performance gap experienced by at-risk students. We examined learning experiences during the 2020 to 2021 school year and the impact the pandemic has had on high school student grade point average (GPA), including predictors of change in GPA from 2019–2020 to 2020–2021. Method: Participants were 238 adolescents (55.5% male), 49.6% with attention-deficit/hyperactivity disorder (ADHD), in the United States. Adolescents reported on their GPAs via online surveys. Results: GPA significantly decreased on average from 2019–2020 to 2020–2021 school year. ADHD status and biological sex significantly moderated change—students with ADHD and male students reported decreased GPA, whereas students without ADHD and female students’ GPA did not change. Low income and Black/Latinx students had lower GPAs in both school years. Conclusion: It is imperative that additional supports be provided for at-risk students to help them catch up on missed learning during the pandemic.


2020 ◽  
Vol 122 (14) ◽  
pp. 1-30
Author(s):  
James Soland ◽  
Benjamin Domingue ◽  
David Lang

Background/Context Early warning indicators (EWI) are often used by states and districts to identify students who are not on track to finish high school, and provide supports/interventions to increase the odds the student will graduate. While EWI are diverse in terms of the academic behaviors they capture, research suggests that indicators like course failures, chronic absenteeism, and suspensions can help identify students in need of additional supports. In parallel with the expansion of administrative data that have made early versions of EWI possible, new machine learning methods have been developed. These methods are data-driven and often designed to sift through thousands of variables with the purpose of identifying the best predictors of a given outcome. While applications of machine learning techniques to identify students at-risk of high school dropout have obvious appeal, few studies consider the benefits and limitations of applying those models in an EWI context, especially as they relate to questions of fairness and equity. Focus of Study In this study, we will provide applied examples of how machine learning can be used to support EWI selection. The purpose is to articulate the broad risks and benefits of using machine learning methods to identify students who may be at risk of dropping out. We focus on dropping out given its salience in the EWI literature, but also anticipate generating insights that will be germane to EWI used for a variety of outcomes. Research Design We explore these issues by using several hypothetical examples of how ML techniques might be used to identify EWI. For example, we show results from decision tree algorithms used to identify predictors of dropout that use simulated data. Conclusions/Recommendations Generally, we argue that machine learning techniques have several potential benefits in the EWI context. For example, some related methods can help create clear decision rules for which students are a dropout risk, and their predictive accuracy can be higher than for more traditional, regression-based models. At the same time, these methods often require additional statistical and data management expertise to be used appropriately. Further, the black-box nature of machine learning algorithms could invite their users to interpret results through the lens of preexisting biases about students and educational settings.


Author(s):  
Szilvia Schmitsek

This paper explores the educational experiences of young people who had been at risk of dropping out and gained a qualification at a second chance provision. It is based on comparative fieldwork in England, Denmark and Hungary with empirical data collected from observations; and 28 interviews with former students. By listening to the voices of students, the analysis focused on the relevance of different sources of support. The findings revealed that individual study pathways and intensified guidance effort led students to pursue their career in higher education and/or in the labour market.


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