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dc.contributor.authorBacher, Johann
dc.contributor.authorPöge, Andreas
dc.contributor.authorWenzig, Knut
dc.date.accessioned2025-03-07T21:33:59Z
dc.date.available2025-03-07T21:33:59Z
dc.date.issued2022
dc.date.submitted2022-08-02T09:57:12Z
dc.identifierhttps://library.oapen.org/handle/20.500.12657/57709
dc.identifier.urihttps://doab-dev.siscern.org/handle/20.500.12854/167671
dc.description.abstractThe 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. This 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.
dc.languageEnglish
dc.rightsopen access
dc.subject.othersurvey data, data analysis, data science, information technology, AI, socio-robotics, quantitative, survey methodology, ethics, ethical standards, privacy, replication, politics, survey design, social media, big data, social, human-robot interaction, machine learning, open data, data archives, data ownership, digital trace, unstructured data
dc.subject.otherthema EDItEUR::U Computing and Information Technology::UY Computer science
dc.subject.otherthema EDItEUR::J Society and Social Sciences::JM Psychology
dc.subject.otherthema EDItEUR::J Society and Social Sciences::JM Psychology::JMB Psychological methodology
dc.titleChapter 19 Unsupervised Methods
dc.title.alternativeClustering Methods
dc.typechapter
oapen.identifier.doi10.4324/9781003025245-23
oapen.relation.isPublishedByfa69b019-f4ee-4979-8d42-c6b6c476b5f0
oapen.relation.isPartOfBookb7820104-56b0-4b39-832b-87916ea7f896
oapen.relation.isPartOfBookfe04e78f-0501-4a40-a3f5-652fe5d161da
oapen.relation.isbn9780367457808
oapen.relation.isbn9781032077703
oapen.imprintRoutledge
oapen.pages19
dc.anonymitySingle-anonymised
dc.peerreviewidbc80075c-96cc-4740-a9f3-a234bc2598f1
dc.peerreviewtitleProposal review
dc.openreviewNo
dc.responsibilityPublisher
dc.stagePre-publication
dc.reviewtypeProposal
dc.reviewertypeInternal editor
dc.reviewertypeExternal peer reviewer


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