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Handbook of Computational Social Science - Vol 1 & Vol 2 [Multiple-component retail product]

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  • Formāts: Multiple-component retail product, 848 pages, height x width: 246x174 mm, weight: 680 g, Contains 2 hardbacks
  • Sērija : European Association of Methodology Series
  • Izdošanas datums: 17-Nov-2021
  • Izdevniecība: Routledge
  • ISBN-10: 1032111399
  • ISBN-13: 9781032111391
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  • Formāts: Multiple-component retail product, 848 pages, height x width: 246x174 mm, weight: 680 g, Contains 2 hardbacks
  • Sērija : European Association of Methodology Series
  • Izdošanas datums: 17-Nov-2021
  • Izdevniecība: Routledge
  • ISBN-10: 1032111399
  • ISBN-13: 9781032111391
Citas grāmatas par šo tēmu:

The Handbook of Computational Social Science is a comprehensive reference source for scholars across multiple disciplines. It outlines key debates in the field, showcasing novel statistical modeling and machine learning methods, and draws from specific case studies to demonstrate the opportunities and challenges in CSS approaches.

The Handbook is divided into two volumes written by outstanding, internationally renowned scholars in the field. The first volume focuses on the scope of computational social science, ethics, and case studies. It covers a range of key issues, including open science, formal modeling, and the social and behavioral sciences. This volume explores major debates, introduces digital trace data, reviews the changing survey landscape, and presents novel examples of computational social science research on sensing social interaction, social robots, bots, sentiment, manipulation, and extremism in social media. The volume not only makes major contributions to the consolidation of this growing research field, but also encourages growth into new directions.

The second volume focuses on foundations and advances in data science, statistical modeling, and machine learning. It covers a range of key issues, including the management of big data in terms of record linkage, streaming, and missing data. Machine learning, agent-based and statistical modeling, as well as data quality in relation to digital-trace and textual data, as well as probability-, non-probability-, and crowdsourced samples represent further foci. The volume not only makes major contributions to the consolidation of this growing research field, but also encourages growth into new directions.

With its broad coverage of perspectives (theoretical, methodological, computational), international scope, and interdisciplinary approach, this important resource is integral reading for advanced undergraduates, postgraduates and researchers engaging with computational methods across the social sciences, as well as those within the scientific and engineering sectors.

VOLUME 1 HANDBOOK OF COMPUTATIONAL SOCIAL SCIENCE, Theory, Case Studies and Ethics
List of contributors
x
Preface xx
1 Introduction to the Handbook of Computational Social Science
1(14)
Uwe Engel
Anabel Quan-Haase
Sunny Xun Liu
Lars Lyberg
SECTION I The scope and boundaries of CSS
15(154)
2 The scope of computational social science
17(16)
Claudia Ciofft-Revilla
3 Analytical sociology amidst a computational social science revolution
33(20)
Benjamin F. Farvis
Marc Keuschnigg
Peter Hedstrom
4 Computational cognitive modeling in the social sciences
53(13)
Holger Schultheis
5 Computational communication science: lessons from working group sessions with experts of an emerging research field
66(17)
Stephanie Geise
Annie Waldherr
6 A changing survey landscape
83(17)
Lars Lyberg
Steven G. Heeringa
7 Digital trace data: modes of data collection, applications, and errors at a glance
100(19)
Florian Keusch
Frauke Kreuter
8 Open computational social science
119(12)
Jan G. Voelkel
Jeremy Freese
9 Causal and predictive modeling in computational social science
131(19)
Uwe Engel
10 Data-driven agent-based modeling in computational social science
150(19)
Jan Lorenz
SECTION II Privacy, ethics, and politics in CSS research
169(48)
11 Ethics and privacy in computational social science: a call for pedagogy
171(15)
William Hollingshead
Anabel Quan-Haase
Wenhong Chen
12 Deliberating with the public: an agenda to include stakeholder input on municipal "big data" projects
186(14)
James F. Popham
Jennifer Lavoie
Andrea Corradi
Nicole Coomber
13 Analysis of the principled AI framework's constraints in becoming a methodological reference for trustworthy AI design
200(17)
Daniel Varona
Juan Luis Suarez
SECTION III Case studies and research examples
217(2)
14 Sensing close-range proximity for studying face-to-face interaction
219(21)
Johann Schaible
Marcos Oliveira
Maria Zens
Mathieu Genois
15 Social media data in affective science
240(16)
Max Pellert
Simon Schweighofer
David Garcia
16 Understanding political sentiment: using Twitter to map the U.S. 2016 Democratic primaries
256(31)
Niklas M Loynes
Mark Elliot
17 The social influence of bots and trolls in social media
287(17)
Yimin Chen
18 Social bots and social media manipulation in 2020: the year in review
304(20)
Ho-Chun Herbert Chang
Emily Chen
Meiqing Zhang
Goran Murk
Emilio Ferrara
19 A picture is (still) worth a thousand words: the impact of appearance and characteristic narratives on people's perceptions of social robots
324(19)
Sunny Xun Liu
Elizabeth Arredondo
Hannah Mieczkowski
Jeff Hancock
Byron Reeves
20 Data quality and privacy concerns in digital trace data: insights from a Delphi study on machine learning and robots in human life
343(20)
Uwe Engel
Lena Dahlhaus
21 Effective fight against extremist discourse online: the case of ISIS's propaganda
363(10)
Seraphin Alava
Rasha Nagem
22 Public opinion formation on the far right
373(7)
Michael Adelmund
Uwe Engel
Index 380
VOLUME 2 HANDBOOK OF COMPUTATIONAL SOCIAL SCIENCE, Data Science, Statistical Modelling, and Machine Learning Methods
List of contributors
x
Preface xxi
1 Introduction to the Handbook of Computational Social Science
1(14)
Uwe Engel
Anabel Quan-Haase
Sunny Xun Liu
Lars Lyberg
SECTION I Data in CSS: Collection, management, and cleaning
15(110)
2 A brief history of APIs: Limitations and opportunities for online research
17(16)
Jakob Jtinger
3 Application programming interfaces and web data for social research
33(13)
Dominic Nyhuis
4 Web data mining: Collecting textual data from web pages using R
46(25)
Stefan Bosse
Lena Dahlhaus
Uwe Engel
5 Analyzing data streams for social scientists
71(11)
Lianne Ippel
Maurits Kaptein
Jeroen K. Vermunt
6 Handling missing data in large databases
82(13)
Martin Spiess
Thomas Augustin
7 A primer on probabilistic record linkage
95(13)
Ted Enamorado
8 Reproducibility and principled data processing
108(17)
John McLevey
Pierson Browne
Tyler Crick
SECTION II Data quality in CSS research
125(72)
9 Applying a total error framework for digital traces to social media research
127(13)
Indira Sen
Fabian Flock
Katrin Weller
Bernd Weiß
Claudia Wagner
10 Crowdsourcing in observational and experimental research
140(18)
Camilla Zallot
Gabriele Paolacci
Jesse Chandler
Itay Sisso
11 Inference from probability and nonprobability samples
158(23)
Rebecca Andridge
Richard Valliant
12 Challenges of online non-probability surveys
181(16)
Jelke Bethlehem
SECTION III Statistical modelling and simulation
197(92)
13 Large-scale agent-based simulation and crowd sensing with mobile agents
199(30)
Stefan Bosse
14 Agent-based modelling for cultural networks: tagging by artificial intelligent cultural agents
229(15)
Fernando Sancho-Caparrini
Juan Luis Suarez
15 Using subgroup discovery and latent growth curve modeling to identify unusual developmental trajectories
244(25)
Axel Mayer
Christoph Kiefer
Benedikt Langenberg
Florian Lemmerich
16 Disaggregation via Gaussian regression for robust analysis of heterogeneous data
269(20)
Nazanin Alipoufard
Keith Burghardt
Kristina Lerman
SECTION IV Machine learning methods
289(110)
17 Machine learning methods for computational social science
291(31)
Richard D. De Veaux
Adam Eck
18 Principal component analysis
322(12)
Andreas Poge
Jost Reinecke
19 Unsupervised methods: clustering methods
334(18)
Johann Bacher
Andreas Poge
Knut Wenzig
20 Text mining and topic modeling
352(14)
Raphael H. Heiberger
Sebastian Munoz-Najar Galvez
21 From frequency counts to contextualized word embeddings: the Saussurean turn in automatic content analysis
366(20)
Gregor Wiedemann
Cornelia Fedtke
22 Automated video analysis for social science research
386(13)
Dominic Nyhuis
Tobias Ringwald
Oliver Rittmann
Thomas Gschwend
Rainer Stiefelhagen
Index 399
Uwe Engel is professor at the University of Bremen, Germany where he held a chair in Sociology from 2000 to 2020. From 2008 to 2013, Dr. Engel coordinated the Priority Programme on "Survey Methodology" of the German Research Foundation. His current research focuses on data science, human-robot interaction, and opinion dynamics.

Anabel Quan-Haase is professor of Sociology and Information and Media Studies at Western University and Director of the SocioDigital Media Lab, London, Canada. Her research interests include social media, social networks, life course, social capital, computational social science, and digital inequality/inclusion.

Sunny Xun Liu is a Research Scientist at Stanford Social Media Lab, USA. Her research focuses on the social and psychological effects of social media and AI, social media and well-being, and how the design of social robots impact psychological perceptions.

Lars Lyberg was Head of the Research and Development Department at Statistics Sweden and professor at Stockholm University. He was an elected member of the International Statistical Institute. In 2018, he received the AAPOR Award for Exceptionally Distinguished Achievement.