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VOLUME 1 HANDBOOK OF COMPUTATIONAL SOCIAL SCIENCE, Theory, Case Studies and Ethics |
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x | |
Preface |
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xx | |
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1 Introduction to the Handbook of Computational Social Science |
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1 | (14) |
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SECTION I The scope and boundaries of CSS |
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15 | (154) |
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2 The scope of computational social science |
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17 | (16) |
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3 Analytical sociology amidst a computational social science revolution |
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33 | (20) |
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4 Computational cognitive modeling in the social sciences |
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53 | (13) |
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5 Computational communication science: lessons from working group sessions with experts of an emerging research field |
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66 | (17) |
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6 A changing survey landscape |
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83 | (17) |
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7 Digital trace data: modes of data collection, applications, and errors at a glance |
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100 | (19) |
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8 Open computational social science |
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119 | (12) |
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9 Causal and predictive modeling in computational social science |
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131 | (19) |
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10 Data-driven agent-based modeling in computational social science |
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150 | (19) |
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SECTION II Privacy, ethics, and politics in CSS research |
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169 | (48) |
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11 Ethics and privacy in computational social science: a call for pedagogy |
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171 | (15) |
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12 Deliberating with the public: an agenda to include stakeholder input on municipal "big data" projects |
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186 | (14) |
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13 Analysis of the principled AI framework's constraints in becoming a methodological reference for trustworthy AI design |
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200 | (17) |
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SECTION III Case studies and research examples |
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217 | (2) |
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14 Sensing close-range proximity for studying face-to-face interaction |
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219 | (21) |
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15 Social media data in affective science |
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240 | (16) |
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16 Understanding political sentiment: using Twitter to map the U.S. 2016 Democratic primaries |
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256 | (31) |
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17 The social influence of bots and trolls in social media |
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287 | (17) |
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18 Social bots and social media manipulation in 2020: the year in review |
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304 | (20) |
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19 A picture is (still) worth a thousand words: the impact of appearance and characteristic narratives on people's perceptions of social robots |
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324 | (19) |
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20 Data quality and privacy concerns in digital trace data: insights from a Delphi study on machine learning and robots in human life |
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343 | (20) |
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21 Effective fight against extremist discourse online: the case of ISIS's propaganda |
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363 | (10) |
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22 Public opinion formation on the far right |
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373 | (7) |
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Index |
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380 | |
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VOLUME 2 HANDBOOK OF COMPUTATIONAL SOCIAL SCIENCE, Data Science, Statistical Modelling, and Machine Learning Methods |
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x | |
Preface |
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xxi | |
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1 Introduction to the Handbook of Computational Social Science |
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1 | (14) |
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SECTION I Data in CSS: Collection, management, and cleaning |
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15 | (110) |
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2 A brief history of APIs: Limitations and opportunities for online research |
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17 | (16) |
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3 Application programming interfaces and web data for social research |
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33 | (13) |
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4 Web data mining: Collecting textual data from web pages using R |
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46 | (25) |
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5 Analyzing data streams for social scientists |
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71 | (11) |
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6 Handling missing data in large databases |
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82 | (13) |
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7 A primer on probabilistic record linkage |
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95 | (13) |
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8 Reproducibility and principled data processing |
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108 | (17) |
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SECTION II Data quality in CSS research |
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125 | (72) |
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9 Applying a total error framework for digital traces to social media research |
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127 | (13) |
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10 Crowdsourcing in observational and experimental research |
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140 | (18) |
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11 Inference from probability and nonprobability samples |
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158 | (23) |
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12 Challenges of online non-probability surveys |
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181 | (16) |
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SECTION III Statistical modelling and simulation |
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197 | (92) |
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13 Large-scale agent-based simulation and crowd sensing with mobile agents |
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199 | (30) |
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14 Agent-based modelling for cultural networks: tagging by artificial intelligent cultural agents |
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229 | (15) |
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Fernando Sancho-Caparrini |
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15 Using subgroup discovery and latent growth curve modeling to identify unusual developmental trajectories |
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244 | (25) |
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16 Disaggregation via Gaussian regression for robust analysis of heterogeneous data |
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269 | (20) |
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SECTION IV Machine learning methods |
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289 | (110) |
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17 Machine learning methods for computational social science |
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291 | (31) |
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18 Principal component analysis |
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322 | (12) |
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19 Unsupervised methods: clustering methods |
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334 | (18) |
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20 Text mining and topic modeling |
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352 | (14) |
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Sebastian Munoz-Najar Galvez |
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21 From frequency counts to contextualized word embeddings: the Saussurean turn in automatic content analysis |
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366 | (20) |
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22 Automated video analysis for social science research |
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386 | (13) |
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Index |
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399 | |