Essays on Learning in Social Networks

Essays on Learning in Social Networks PDF Author: Pooya Molavi
Publisher:
ISBN:
Category :
Languages : en
Pages : 85

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Essays on Learning in Social Networks

Essays on Learning in Social Networks PDF Author: Pooya Molavi
Publisher:
ISBN:
Category :
Languages : en
Pages : 85

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Book Description


Three Essays on Social Networks and Schools

Three Essays on Social Networks and Schools PDF Author: Yunzheng Zheng
Publisher:
ISBN:
Category : Academic achievement
Languages : en
Pages : 0

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Researchers have been increasingly interested in the phenomenon of social networks in education, a research area that provides more opportunities to study the relationships among individuals or organizations in our educational system. The goal of this dissertation was to understand the effect of various social networks on outcomes by investigating various relationships in the educational system. To achieve the goal, three distinct, but related, essays comprised this dissertation. In the first essay, I examined the effects of interschool networks on student achievement. By using the data collected from the High Impact Leadership (HIL) program and employing the hierarchical linear model (HLM) method, I investigated how different interschool relationships, indicated by various interschool network measures, were associated with student mathematics and reading achievement, and the growth of student mathematics and reading achievement. Key findings included (a) schools that reported to have a stronger relationship with other schools had better, and more growth in, mathematics achievement; (b) schools with reciprocal relationships had better, and more growth in, mathematics and reading achievement; and (c) schools connected to more influential schools in the network had better, and more growth in, mathematics and reading achievement. In the second essay, I inquired into the relationship between teacher-to-teacher relationships and student achievement. By using the meta-analysis method, I specifically focused on (a) the relationship between teacher's individual relationship with other teachers and student mathematics and reading achievement; (b) the relationship between teacher-to-teacher relationship at the organization level (i.e., school or grade team) and student mathematics and reading achievement; and (c) how three frequently used theoretical frameworks in studying teacher-to-teacher relationships--teacher network, teacher collaboration and professional learning community (PLC), at either individual or organizational level--were related to student mathematics and reading achievement. Key findings included (a) teachers' individual relationships were not related to student achievement; (b) the relationships in schools or grade teams were significantly positively related to student mathematics and reading achievement; and (c) at the organizational level, different theoretical frameworks were not related to the level of student achievement, but did result in different levels of heterogeneity (i.e., heterogeneity was low for PLCs and teacher networks and was high for teach collaborations). In the third essay, I conducted a meta-analysis study on the relationship between (a) principals' network position in school-wide networks, measured by principals' degree centrality, and (b) school leadership, trust and innovation climate. I found that principals' network position had a strong positive relationship with leadership climate and a moderate relationship with trust and innovation climate, with low to moderate level of heterogeneity. The findings in the three essays have implications for policy, practice, and research. From the perspectives of policy and practice, generally speaking social networks in education are associated with better outcomes, and should be promoted in the educational system. Social networks appear to be an important vehicle to improve outcomes in the context of the bifurcated educational system. Directions for future research were also discussed.

Essays on Social Networks, Participation and Outcomes in Education

Essays on Social Networks, Participation and Outcomes in Education PDF Author: Greg Michal Bulczak
Publisher:
ISBN:
Category :
Languages : en
Pages : 0

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Social Media

Social Media PDF Author: Marlynn M. Griffin
Publisher: IAP
ISBN: 1648026575
Category : Education
Languages : en
Pages : 353

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Book Description
Social media is a multi-faceted tool that has been used by educators and/or their students in ways both beneficial and detrimental. Despite the ubiquitous nature of this tool, there is much research still needed on the multitude of ways that social media impacts education. This book presents research on the influences of social media on education, broadly construed. Specifically, the research included in this book is categorized into four broad areas, examining the educational influence of social media on youth and college students, professional development in content areas, higher education learning, and social justice and activism. Chapter authors emphasize the opportunities of social media use in education and provide recommendations for how to address challenges that may arise with social media integration into the teaching and learning setting. These authors also advocate for use of social media to grow and enhance professional interaction among educators, moving beyond the social aspect of these platforms to advocate for educational and societal change. Individuals working in K-12 schools, teacher education, teacher professional development, and higher education, including pharmacy, nursing, dental and medical education, as well as those in other educational settings can use these findings to support and guide integration of social media into teaching and learning as well as their professional practice. Endorsements for Social Media: Influences on Education "Anyone attempting to understand these issues and the emerging, critical role of social media in education today should read the excellent edited book Social Media: Influences on Education. I’ve been monitoring educational media and technology research and practice for the past 40 years. In my view this book is an important contribution to a current perspective on social media and its impact from preschool to higher education and professional studies in general and social justice issues specifically." Richard E. Clark, Emeritus Professor University of Southern California "Social Media: Influences on Education is an essential book for those seeking to understand the relationship between education and social media or to conduct social media research in education. Griffin and Zinskie have collected a variety of essays showcasing approaches to researching social media from qualitative interviews with teachers, to meta-analyses of nascent literature, and research within the platforms themselves. Providing a well-rounded introduction to the field, this book provides a foundation for those interested in understanding and exploring the impact social media has had on elementary, secondary, and tertiary education." Naomi Barnes, Senior Lecturer Queensland University of Technology, Australia "Social Media: Influences on Education is a must-read for anyone interested in social media's impact on education and social justice. Grounded in the latest research, Griffin and Zinskie offer an informed, critical perspective on key issues – children’s social media use, cyber-harassment, misinformation, social justice through social media, professional networking, and more – as social media pervades every aspect of our lives. Educators, parents, students, activists and social media users everywhere, if you’re invested in education and social justice, this book is for you!" Christine Greenhow, Associate Professor Michigan State University

Essays on Social Networks in Development Economics

Essays on Social Networks in Development Economics PDF Author: Arun Gautham Chandrasekhar
Publisher:
ISBN:
Category :
Languages : en
Pages : 210

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(cont.) substitutes for commitment. On net, savings allows individuals to smooth risk that cannot be shared interpersonally, with the largest benefits for those who are weakly connected in the network. The final chapter (co-authored with my classmates Horacio Larreguy and Juan Pablo Xandri) attempts to determine which models of social learning on networks best describe empirical behavior. Theory has focused on two leading models of social learning on networks: Bayesian and DeGroot rules of thumb learning. These models can yield greatly divergent behavior; individuals employing rules of thumb often double-count information and may not exhibit convergent behavior in the long run. By conducting a unique lab experiment in rural Karnataka, India, set up to exactly differentiate between these two models, we test which model best describes social learning processes on networks. We study experiments in which seven individuals are placed into a network, each with full knowledge of its structure. The participants attempt to learn the underlying (binary) state of the world. Individuals receive independent, identically distributed signals about the state in the first period only; thereafter, individuals make guesses about the underlying state of the world and these guesses are transmitted to their neighbors at the beginning of the following round. We consider various environments including incomplete information Bayesian models and provide evidence that individuals are best described by DeGroot models wherein they either take simple majority of opinions in their neighborhood.

Learning from Multiple Social Networks

Learning from Multiple Social Networks PDF Author: Liqiang Nie
Publisher: Springer Nature
ISBN: 3031023005
Category : Computers
Languages : en
Pages : 102

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Book Description
With the proliferation of social network services, more and more social users, such as individuals and organizations, are simultaneously involved in multiple social networks for various purposes. In fact, multiple social networks characterize the same social users from different perspectives, and their contexts are usually consistent or complementary rather than independent. Hence, as compared to using information from a single social network, appropriate aggregation of multiple social networks offers us a better way to comprehensively understand the given social users. Learning across multiple social networks brings opportunities to new services and applications as well as new insights on user online behaviors, yet it raises tough challenges: (1) How can we map different social network accounts to the same social users? (2) How can we complete the item-wise and block-wise missing data? (3) How can we leverage the relatedness among sources to strengthen the learning performance? And (4) How can we jointly model the dual-heterogeneities: multiple tasks exist for the given application and each task has various features from multiple sources? These questions have been largely unexplored to date. We noticed this timely opportunity, and in this book we present some state-of-the-art theories and novel practical applications on aggregation of multiple social networks. In particular, we first introduce multi-source dataset construction. We then introduce how to effectively and efficiently complete the item-wise and block-wise missing data, which are caused by the inactive social users in some social networks. We next detail the proposed multi-source mono-task learning model and its application in volunteerism tendency prediction. As a counterpart, we also present a mono-source multi-task learning model and apply it to user interest inference. We seamlessly unify these models with the so-called multi-source multi-task learning, and demonstrate several application scenarios, such as occupation prediction. Finally, we conclude the book and figure out the future research directions in multiple social network learning, including the privacy issues and source complementarity modeling. This is preliminary research on learning from multiple social networks, and we hope it can inspire more active researchers to work on this exciting area. If we have seen further it is by standing on the shoulders of giants.

Three Essays on Network Effects in Online Social Networks

Three Essays on Network Effects in Online Social Networks PDF Author: Christopher Rojas
Publisher:
ISBN:
Category :
Languages : en
Pages : 109

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In my dissertation, I focus on estimating network effects in online social networks, using observational data. In the first chapter of my dissertation, coauthored with David Easley and Eleonora Patacchini, we analyze the effect of peer influence on item adoption decisions on GitHub. The second chapter of my dissertation focuses on gender disparities in contributions and social network formation patterns on GitHub. The third chapter of my dissertation studies peer effects on video-game playing decisions on Steam. In each of the chapters of my dissertation, I deal with social selection by incorporating a machine learning algorithm, popular in online recommendation systems, to predict individual preferences based on previous adoption decisions.

Essays on Machine Learning in International Conflict and Social Networks

Essays on Machine Learning in International Conflict and Social Networks PDF Author: Daniel N. Kent
Publisher:
ISBN:
Category : International relations
Languages : en
Pages : 109

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This dissertation leverages developments in machine learning methods to better model networked social processes, with an emphasis on international politics. The first chapter develops a dataset with estimates for every country's level of dissatisfaction with the international system from 1816-2012. The second chapter takes these dissatisfaction measures and uses them as features in a machine learning model which predicts international conflict onset. The third chapter explores spillover effects in social networks, demonstrating how causal forests can be employed to uncover spillover effect heterogeneity. Across these chapters, machine learning techniques are instrumental in modeling outcomes of interest and leveraging information from social networks.

Essays on Economic and Social Networks

Essays on Economic and Social Networks PDF Author: Adrien Vigier
Publisher:
ISBN:
Category :
Languages : en
Pages :

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Essays on Social Networks and Behavioral Economics

Essays on Social Networks and Behavioral Economics PDF Author: Isabel Melguizo López
Publisher:
ISBN: 9788449064616
Category :
Languages : en
Pages : 402

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Los individuos a menudo exhiben robustos patrones de comportamiento al relacionarse con otros y cuando toman decisiones económicas. Por ejemplo, tienden a interactuar de manera desproporcionada con otros similares a ellos. Además, las dimensiones no-cognitivas de la personalidad, como la confianza o la perseverancia afectan a la dilación de las tareas. Esta tesis incorpora estos patrones de comportamiento en modelos económicos de aprendizaje social y de decisiones sobre el momento en el que desarrollar tareas. En el primer capítulo argumentamos cómo los desacuerdos se pueden perpetuar en la sociedad cuando los individuos forman sus opiniones comunicándose de manera desproporcionada con sus similares. Para ello consideramos un modelo dinámico de formación de opinión en el que los individuos desarrollan sus opiniones mediante la incorporación de las de otros en su red social. Nuestros individuos exhiben homofilia, esto es, la atención que prestan a otros se basa en la posesión de atributos similares. La característica clave de este marco es que la atención co-evoluciona con las opiniones, regida por cuán sobresalientes son los atributos. Esta prominencia viene dada por la diferencia de opiniones entre los grupos que poseen y que carecen de estos atributos. Al asumir que los atributos con mayores diferencias en opiniones merecen más atención, mostramos si hay, inicialmente, un único atributo sobresaliente, éste recibe una atención creciente en el tiempo y la sociedad queda escindida en dos grupos de pensamiento. Esta situación se presenta porque los individuos reorientan sus interacciones con otros similares en el rasgo más saliente de tal manera que las opiniones no se mezclan. En el segundo capítulo complementamos el estudio del primero explorando cómo modificaciones en el comportamiento de los individuos afectan a la formación de opiniones. Incorporamos el caso en el cual las opiniones están sujetas a las perturbaciones y demostramos que el desacuerdo es robusto a la aleatoriedad. También discutimos el caso en que los individuos se influencian entre sí con diferentes intensidades, como McPherson et al. (2001) documenta, los jóvenes exhiben mayor homofilia de género que los mayores. Encontramos que cuando algunos individuos agravan la atención que prestan al rasgo más sobresaliente inicialmente, el desacuerdo persiste a través de él, siendo las diferencias en opiniones más mayores que en el caso simétrico. Finalmente exploramos condiciones generales sobre la evolución de la homofilia para que el desacuerdo persista. En el primer capítulo discutimos un proceso particular en el que la evolución de homofilia promueve el desacuerdo, por el contrario, la homofilia constante en Golub y Jackson (2012) afecta a la velocidad de convergencia al consenso, un resultado que siempre surgía. La conciliación de ambos resultado descansa en afirmar que el desacuerdo persiste siempre que que los individuos intensifiquen sus relaciones con otros similares, suficientemente rápido. Específicamente, hay dos fuerzas en juego: primero, las personas prestan cada vez más atención a los demás sobre la base de un atributo específico. Segundo, siempre prestan atención a todos los demás. El desacuerdo persiste cuando la primera domina. En el último capítulo, discutimos la relevancia de las habilidades no-cognitivas en la decisión de cuándo hacer frente a tareas difíciles, pero valiosas. Para ello consideramos un marco dinámico con un individuo caracterizado por el potencial con el que ejecuta sus habilidades. Mostramos que cuando este individuo presenta bajo potencial, se enfrenta siempre a tareas fáciles de bajo valor mientras que cuando presenta alto potencial, se enfrenta siempre a tareas difíciles. Cuando este potencial es sensible a la consecución de resultados, el individuo puede encontrar óptimo pasar de tareas fáciles a difíciles en algún momento. Intuitivamente, los éxitos en tareas fáciles lo motivan a enfrentarse a tareas difíciles.