Semantic mining of social networks:
Online social networks have already become a bridge connecting our physical daily life with the (web-based) information space. This connection produces a huge volume of data, not only about the information itself, but also about user behavior. The ubiquity of the social Web and the wealth of social...
Gespeichert in:
Hauptverfasser: | , |
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Format: | Elektronisch E-Book |
Sprache: | English |
Veröffentlicht: |
[San Rafael, California]
Morgan & Claypool Publishers
[2015]
|
Schriftenreihe: | Synthesis lectures on the semantic web, theory and technology
#11 |
Schlagworte: | |
Online-Zugang: | UER01 Volltext |
Zusammenfassung: | Online social networks have already become a bridge connecting our physical daily life with the (web-based) information space. This connection produces a huge volume of data, not only about the information itself, but also about user behavior. The ubiquity of the social Web and the wealth of social data offer us unprecedented opportunities for studying the interaction patterns among users so as to understand the dynamic mechanisms underlying different networks, something that was previously difficult to explore due to the lack of available data. In this book, we present the architecture of the research for social network mining, from a microscopic point of view. We focus on investigating several key issues in social networks. Specifically, we begin with analytics of social interactions between users. The first kinds of questions we try to answer are: What are the fundamental factors that form the different categories of social ties? How have reciprocal relationships been developed from parasocial relationships? How do connected users further form groups? Another theme addressed in this book is the study of social influence. Social influence occurs when one's opinions, emotions, or behaviors are affected by others, intentionally or unintentionally. Considerable research has been conducted to verify the existence of social influence in various networks. However, few literature studies address how to quantify the strength of influence between users from different aspects. In Chapter 4 and in [138], we have studied how to model and predict user behaviors. One fundamental problem is distinguishing the effects of different social factors such as social influence, homophily, and individual's characteristics. We introduce a probabilistic model to address this problem. Finally, we use an academic social network, ArnetMiner, as an example to demonstrate how we apply the introduced technologies for mining real social networks. In this system, we try to mine knowledge from both the informative (publication) network and the social (collaboration) network, and to understand the interaction mechanisms between the two networks. The system has been in operation since 2006 and has already attracted millions of users from more than 220 countries/regions |
Beschreibung: | Online-Ressource (xi, 193 pages) illustrations |
ISBN: | 9781608458585 |
DOI: | 10.2200/S00629ED1V01Y201502WBE011 |
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490 | 1 | |a Synthesis lectures on the semantic web, theory and technology |v #11 | |
520 | 3 | |a Online social networks have already become a bridge connecting our physical daily life with the (web-based) information space. This connection produces a huge volume of data, not only about the information itself, but also about user behavior. The ubiquity of the social Web and the wealth of social data offer us unprecedented opportunities for studying the interaction patterns among users so as to understand the dynamic mechanisms underlying different networks, something that was previously difficult to explore due to the lack of available data. In this book, we present the architecture of the research for social network mining, from a microscopic point of view. We focus on investigating several key issues in social networks. Specifically, we begin with analytics of social interactions between users. | |
520 | 3 | |a The first kinds of questions we try to answer are: What are the fundamental factors that form the different categories of social ties? How have reciprocal relationships been developed from parasocial relationships? How do connected users further form groups? Another theme addressed in this book is the study of social influence. Social influence occurs when one's opinions, emotions, or behaviors are affected by others, intentionally or unintentionally. Considerable research has been conducted to verify the existence of social influence in various networks. However, few literature studies address how to quantify the strength of influence between users from different aspects. In Chapter 4 and in [138], we have studied how to model and predict user behaviors. One fundamental problem is distinguishing the effects of different social factors such as social influence, homophily, and individual's characteristics. We introduce a probabilistic model to address this problem. | |
520 | 3 | |a Finally, we use an academic social network, ArnetMiner, as an example to demonstrate how we apply the introduced technologies for mining real social networks. In this system, we try to mine knowledge from both the informative (publication) network and the social (collaboration) network, and to understand the interaction mechanisms between the two networks. The system has been in operation since 2006 and has already attracted millions of users from more than 220 countries/regions | |
653 | 0 | |a Online social networks | |
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653 | 0 | |a Semantic Web | |
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author | Tang, Jie Li, Juanzi |
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author_facet | Tang, Jie Li, Juanzi |
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author_sort | Tang, Jie |
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callnumber-first | H - Social Science |
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ctrlnum | (OCoLC)1024101040 (DE-599)BSZ46971493X |
dewey-full | 025.0427 302.30285 |
dewey-hundreds | 000 - Computer science, information, general works 300 - Social sciences |
dewey-ones | 025 - Operations of libraries and archives 302 - Social interaction |
dewey-raw | 025.0427 302.30285 |
dewey-search | 025.0427 302.30285 |
dewey-sort | 225.0427 |
dewey-tens | 020 - Library and information sciences 300 - Social sciences |
discipline | Allgemeines Soziologie |
doi_str_mv | 10.2200/S00629ED1V01Y201502WBE011 |
format | Electronic eBook |
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language | English |
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series | Synthesis lectures on the semantic web, theory and technology |
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spelling | Tang, Jie Verfasser (DE-588)1080911030 aut Semantic mining of social networks Jie Tang and Juanzi Li, Tsinghua University [San Rafael, California] Morgan & Claypool Publishers [2015] © 2015 Online-Ressource (xi, 193 pages) illustrations txt rdacontent c rdamedia cr rdacarrier Synthesis lectures on the semantic web, theory and technology #11 Online social networks have already become a bridge connecting our physical daily life with the (web-based) information space. This connection produces a huge volume of data, not only about the information itself, but also about user behavior. The ubiquity of the social Web and the wealth of social data offer us unprecedented opportunities for studying the interaction patterns among users so as to understand the dynamic mechanisms underlying different networks, something that was previously difficult to explore due to the lack of available data. In this book, we present the architecture of the research for social network mining, from a microscopic point of view. We focus on investigating several key issues in social networks. Specifically, we begin with analytics of social interactions between users. The first kinds of questions we try to answer are: What are the fundamental factors that form the different categories of social ties? How have reciprocal relationships been developed from parasocial relationships? How do connected users further form groups? Another theme addressed in this book is the study of social influence. Social influence occurs when one's opinions, emotions, or behaviors are affected by others, intentionally or unintentionally. Considerable research has been conducted to verify the existence of social influence in various networks. However, few literature studies address how to quantify the strength of influence between users from different aspects. In Chapter 4 and in [138], we have studied how to model and predict user behaviors. One fundamental problem is distinguishing the effects of different social factors such as social influence, homophily, and individual's characteristics. We introduce a probabilistic model to address this problem. Finally, we use an academic social network, ArnetMiner, as an example to demonstrate how we apply the introduced technologies for mining real social networks. In this system, we try to mine knowledge from both the informative (publication) network and the social (collaboration) network, and to understand the interaction mechanisms between the two networks. The system has been in operation since 2006 and has already attracted millions of users from more than 220 countries/regions Online social networks Data mining Semantic Web Li, Juanzi Verfasser (DE-588)107887638X aut Erscheint auch als Druck-Ausgabe, Paperback 978-1-60845-857-8 Synthesis lectures on the semantic web, theory and technology #11 (DE-604)BV044754751 11 https://doi.org/10.2200/S00629ED1V01Y201502WBE011 Verlag URL des Erstveröffentlichers Volltext |
spellingShingle | Tang, Jie Li, Juanzi Semantic mining of social networks Synthesis lectures on the semantic web, theory and technology |
title | Semantic mining of social networks |
title_auth | Semantic mining of social networks |
title_exact_search | Semantic mining of social networks |
title_full | Semantic mining of social networks Jie Tang and Juanzi Li, Tsinghua University |
title_fullStr | Semantic mining of social networks Jie Tang and Juanzi Li, Tsinghua University |
title_full_unstemmed | Semantic mining of social networks Jie Tang and Juanzi Li, Tsinghua University |
title_short | Semantic mining of social networks |
title_sort | semantic mining of social networks |
url | https://doi.org/10.2200/S00629ED1V01Y201502WBE011 |
volume_link | (DE-604)BV044754751 |
work_keys_str_mv | AT tangjie semanticminingofsocialnetworks AT lijuanzi semanticminingofsocialnetworks |