Intelligent state machine for social ad hoc data management and reuse

Neil Y. Yen, Qun Jin, Joseph C. Tsai, James J. Park

    Research output: Contribution to journalArticle

    Abstract

    Recent advances in information technology have turned out World Wide Web to be the main platform for interactions where participants—users and corresponding events—are triggered. Although the participants vary in accordance with scenarios, a considerable size of data will be generated. This phenomenon indeed causes the complexity in information retrieval, management, and resuse, and meanwhile, turns down the value of this data. In this research, we attempt to achieve efficient management of user-generated data and its derivative contexts (i.e., social ad hoc data) for human supports. The correlations among data, contexts, and their hybridization are specifically concentrated. An intelligent state machine is proposed to outline the relations of data and contexts, and applied to further identify their usage scenarios. The performance and feasibility can be revealed by the experiments that were conducted on the data collected from open social networks (e.g., Facebook, Twitter, etc.) in the past few years with size around 500 users and 8,000,000 shared contents from them.

    Original languageEnglish
    Pages (from-to)3521-3541
    Number of pages21
    JournalMultimedia Tools and Applications
    Volume74
    Issue number10
    DOIs
    Publication statusPublished - 2014 Mar 21

    Fingerprint

    Information management
    Information retrieval
    World Wide Web
    Information technology
    Derivatives
    Experiments

    Keywords

    • Human-centered support
    • Information retrieval
    • Intelligent state machine
    • Social contexts
    • User-generated data

    ASJC Scopus subject areas

    • Media Technology
    • Hardware and Architecture
    • Computer Networks and Communications
    • Software

    Cite this

    Intelligent state machine for social ad hoc data management and reuse. / Yen, Neil Y.; Jin, Qun; Tsai, Joseph C.; Park, James J.

    In: Multimedia Tools and Applications, Vol. 74, No. 10, 21.03.2014, p. 3521-3541.

    Research output: Contribution to journalArticle

    Yen, Neil Y. ; Jin, Qun ; Tsai, Joseph C. ; Park, James J. / Intelligent state machine for social ad hoc data management and reuse. In: Multimedia Tools and Applications. 2014 ; Vol. 74, No. 10. pp. 3521-3541.
    @article{2fa1470e13b7445c93a82901facfa494,
    title = "Intelligent state machine for social ad hoc data management and reuse",
    abstract = "Recent advances in information technology have turned out World Wide Web to be the main platform for interactions where participants—users and corresponding events—are triggered. Although the participants vary in accordance with scenarios, a considerable size of data will be generated. This phenomenon indeed causes the complexity in information retrieval, management, and resuse, and meanwhile, turns down the value of this data. In this research, we attempt to achieve efficient management of user-generated data and its derivative contexts (i.e., social ad hoc data) for human supports. The correlations among data, contexts, and their hybridization are specifically concentrated. An intelligent state machine is proposed to outline the relations of data and contexts, and applied to further identify their usage scenarios. The performance and feasibility can be revealed by the experiments that were conducted on the data collected from open social networks (e.g., Facebook, Twitter, etc.) in the past few years with size around 500 users and 8,000,000 shared contents from them.",
    keywords = "Human-centered support, Information retrieval, Intelligent state machine, Social contexts, User-generated data",
    author = "Yen, {Neil Y.} and Qun Jin and Tsai, {Joseph C.} and Park, {James J.}",
    year = "2014",
    month = "3",
    day = "21",
    doi = "10.1007/s11042-014-1941-2",
    language = "English",
    volume = "74",
    pages = "3521--3541",
    journal = "Multimedia Tools and Applications",
    issn = "1380-7501",
    publisher = "Springer Netherlands",
    number = "10",

    }

    TY - JOUR

    T1 - Intelligent state machine for social ad hoc data management and reuse

    AU - Yen, Neil Y.

    AU - Jin, Qun

    AU - Tsai, Joseph C.

    AU - Park, James J.

    PY - 2014/3/21

    Y1 - 2014/3/21

    N2 - Recent advances in information technology have turned out World Wide Web to be the main platform for interactions where participants—users and corresponding events—are triggered. Although the participants vary in accordance with scenarios, a considerable size of data will be generated. This phenomenon indeed causes the complexity in information retrieval, management, and resuse, and meanwhile, turns down the value of this data. In this research, we attempt to achieve efficient management of user-generated data and its derivative contexts (i.e., social ad hoc data) for human supports. The correlations among data, contexts, and their hybridization are specifically concentrated. An intelligent state machine is proposed to outline the relations of data and contexts, and applied to further identify their usage scenarios. The performance and feasibility can be revealed by the experiments that were conducted on the data collected from open social networks (e.g., Facebook, Twitter, etc.) in the past few years with size around 500 users and 8,000,000 shared contents from them.

    AB - Recent advances in information technology have turned out World Wide Web to be the main platform for interactions where participants—users and corresponding events—are triggered. Although the participants vary in accordance with scenarios, a considerable size of data will be generated. This phenomenon indeed causes the complexity in information retrieval, management, and resuse, and meanwhile, turns down the value of this data. In this research, we attempt to achieve efficient management of user-generated data and its derivative contexts (i.e., social ad hoc data) for human supports. The correlations among data, contexts, and their hybridization are specifically concentrated. An intelligent state machine is proposed to outline the relations of data and contexts, and applied to further identify their usage scenarios. The performance and feasibility can be revealed by the experiments that were conducted on the data collected from open social networks (e.g., Facebook, Twitter, etc.) in the past few years with size around 500 users and 8,000,000 shared contents from them.

    KW - Human-centered support

    KW - Information retrieval

    KW - Intelligent state machine

    KW - Social contexts

    KW - User-generated data

    UR - http://www.scopus.com/inward/record.url?scp=84929522678&partnerID=8YFLogxK

    UR - http://www.scopus.com/inward/citedby.url?scp=84929522678&partnerID=8YFLogxK

    U2 - 10.1007/s11042-014-1941-2

    DO - 10.1007/s11042-014-1941-2

    M3 - Article

    AN - SCOPUS:84929522678

    VL - 74

    SP - 3521

    EP - 3541

    JO - Multimedia Tools and Applications

    JF - Multimedia Tools and Applications

    SN - 1380-7501

    IS - 10

    ER -