000 06306nam a2200793 i 4500
001 6813302
003 IEEE
005 20200413152858.0
006 m eo d
007 cr cn |||m|||a
008 100913s2010 caua foab 001 0 eng d
020 _a9781608453559 (electronic bk.)
020 _z9781608453542 (pbk.)
024 7 _a10.2200/S00298ED1V01Y201009DMK003
_2doi
035 _a(CaBNVSL)gtp00543524
035 _a(OCoLC)664596184
040 _aCaBNVSL
_cCaBNVSL
_dCaBNVSL
050 4 _aHM742
_b.T253 2010
082 0 4 _a006.754
_222
100 1 _aTang, Lei.
245 1 0 _aCommunity detection and mining in social media
_h[electronic resource] /
_cLei Tang, Huan Liu.
260 _aSan Rafael, Calif. (1537 Fourth Street, San Rafael, CA 94901 USA) :
_bMorgan & Claypool,
_cc2010.
300 _a1 electronic text (xi, 123 p. : ill.) :
_bdigital file.
490 1 _aSynthesis lectures on data mining and knowledge discovery,
_x2151-0075 ;
_v# 3
538 _aMode of access: World Wide Web.
538 _aSystem requirements: Adobe Acrobat Reader.
500 _aPart of: Synthesis digital library of engineering and computer science.
500 _aSeries from website.
504 _aIncludes bibliographical references (p. 105-115) and index.
505 0 _aAcknowledgments -- 1. Social media and social computing -- Social media -- Concepts and definitions -- Networks and representations -- Properties of large-scale networks -- Challenges -- Social computing tasks -- Network modeling -- Centrality analysis and influence modeling -- Community detection -- Classification and recommendation -- Privacy, spam and security -- Summary --
505 8 _a2. Nodes, ties, and influence -- Importance of nodes -- Strengths of ties -- Learning from network topology -- Learning from user attributes and interactions -- Learning from sequence of user activities -- Influence modeling -- Linear threshold model (LTM) -- Independent cascade model (ICM) -- Influence maximization -- Distinguishing influence and correlation --
505 8 _a3. Community detection and evaluation -- Node-centric community detection -- Complete mutuality -- Reachability -- Group-centric community detection -- Network-centric community detection -- Vertex similarity -- Latent space models -- Block model approximation -- Spectral clustering -- Modularity maximization -- A unified process -- Hierarchy-centric community detection -- Divisive hierarchical clustering -- Agglomerative hierarchical clustering -- Community evaluation --
505 8 _a4. Communities in heterogeneous networks -- Heterogeneous networks -- Multi-dimensional networks -- Network integration -- Utility integration -- Feature integration -- Partition integration -- Multi-mode networks -- Co-clustering on two-mode networks -- Generalization to multi-mode networks --
505 8 _a5. Social media mining -- Evolution patterns in social media -- A naive approach to studying community evolution -- Community evolution in smoothly evolving networks -- Segment-based clustering with evolving networks -- Classification with network data -- Collective classification -- Community-based learning -- Summary --
505 8 _aA. Data collection -- B. Computing betweenness -- C. K-means clustering -- Bibliography -- Authors' biographies -- Index.
506 1 _aAbstract freely available; full-text restricted to subscribers or individual document purchasers.
510 0 _aCompendex
510 0 _aINSPEC
510 0 _aGoogle scholar
510 0 _aGoogle book search
520 3 _aThe past decade has witnessed the emergence of participatory Web and social media, bringing people together in many creative ways. Millions of users are playing, tagging, working, and socializing online, demonstrating new forms of collaboration, communication, and intelligence that were hardly imaginable just a short time ago. Social media also helps reshape business models, sway opinions and emotions, and opens up numerous possibilities to study human interaction and collective behavior in an unparalleled scale.This lecture, from a data mining perspective, introduces characteristics of social media, reviews representative tasks of computing with social media, and illustrates associated challenges. It introduces basic concepts, presents state-of-the-art algorithms with easy-to-understand examples, and recommends effective evaluation methods. In particular,we discuss graph-based community detection techniques and many important extensions that handle dynamic, heterogeneous networks in social media. We also demonstrate how discovered patterns of communities can be used for social media mining. The concepts, algorithms, and methods presented in this lecture can help harness the power of social media and support building socially-intelligent systems. This book is an accessible introduction to the study of community detection and mining in social media. It is an essential reading for students, researchers, and practitioners in disciplines and applications where social media is a key source of data that piques our curiosity to understand, manage, innovate, and excel.
530 _aAlso available in print.
588 _aTitle from PDF t.p. (viewed on September 13, 2010).
650 0 _aSocial media.
650 0 _aWeb usage mining.
653 _asocial media
653 _acommunity detection
653 _asocial media mining
653 _acentrality analysis
653 _astrength of ties
653 _ainfluence modeling
653 _ainformation diffusion
653 _ainfluence maximization
653 _acorrelation
653 _ahomophily
653 _ainfluence
653 _acommunity evaluation
653 _aheterogeneous networks
653 _amulti-dimensional networks
653 _amulti-mode networks
653 _acommunity evolution
653 _acollective classification
653 _asocial dimension
653 _abehavioral study
700 1 _aLiu, Huan.
830 0 _aSynthesis digital library of engineering and computer science.
830 0 _aSynthesis lectures on data mining and knowledge discovery,
_x2151-0075 ;
_v# 3.
856 4 2 _3Abstract with links to resource
_uhttp://ieeexplore.ieee.org/servlet/opac?bknumber=6813302
999 _c561775
_d561775