2020
DOI: 10.1146/annurev-soc-121919-054621
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Computational Social Science and Sociology

Abstract: The integration of social science with computer science and engineering fields has produced a new area of study: computational social science. This field applies computational methods to novel sources of digital data such as social media, administrative records, and historical archives to develop theories of human behavior. We review the evolution of this field within sociology via bibliometric analysis and in-depth analysis of the following subfields where this new work is appearing most rapidly: ( a) social … Show more

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Cited by 166 publications
(124 citation statements)
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References 139 publications
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“…There are drawbacks to a single case study, however, and future work will need to determine generalizability using comparative approaches. Examining multiple school boards over a long period using manual coding may prove prohibitive but future research could employ automatic text analysis like topic models and word embeddings (Edelmann et al, 2020). Additionally, charter schools are not the only morally complex issue faced by educators.…”
Section: Resultsmentioning
confidence: 99%
“…There are drawbacks to a single case study, however, and future work will need to determine generalizability using comparative approaches. Examining multiple school boards over a long period using manual coding may prove prohibitive but future research could employ automatic text analysis like topic models and word embeddings (Edelmann et al, 2020). Additionally, charter schools are not the only morally complex issue faced by educators.…”
Section: Resultsmentioning
confidence: 99%
“…Clustering text documents using K-means has a long history [47] and assumes that every document belongs to one of K latent classes (or types); by analyzing the word frequencies of text with the same latent class assignment, it is often possible to understand the meaning of clusters through their most frequent words. In a related vein, others use unsupervised topic modelling methods such as Latent Dirichlet Allocation [48], increasingly common in social sciences [49,50], to examine semantic trends in urban spaces (e.g. [51]).…”
Section: Computational Methods For Large-scale Latent Text Analysismentioning
confidence: 99%
“…Clustering text documents using K-means has a long history [47] and assumes that every document belongs to one of K latent classes (or types); by analyzing the word frequencies of text with the same latent class assignment, it is often possible to understand the meaning of clusters through their most frequent words. In a related vein, others use unsupervised topic modelling methods such as Latent Dirichlet Allocation [48], increasingly common in social sciences [49,50], to examine semantic trends in urban spaces (e.g. [51]).…”
Section: Computational Methods For Large-scale Latent Text Analysismentioning
confidence: 99%