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    政大機構典藏 > 資訊學院 > 資訊科學系 > 學位論文 >  Item 140.119/67902
    Please use this identifier to cite or link to this item: https://nccur.lib.nccu.edu.tw/handle/140.119/67902


    Title: 社群感測器:社群媒體分析工具之設計
    Social Sensor: a Tool for Social Media Analysis
    Authors: 吳君孝
    Wu, Chun Hsiao
    Contributors: 李蔡彥
    Li, Tsai Yen
    吳君孝
    Wu, Chun Hsiao
    Keywords: 社群感測器
    社群媒體
    資料科學
    鉅量資料分析
    大數據
    資料分析
    資料探勘
    自動化分析
    系統設計
    Social Sensor
    Social Media
    Data Science
    Big Data Analysis
    Big Data
    Data Analysis
    Data Mining
    Automated Analysis
    System Design
    Date: 2013
    Issue Date: 2014-07-29 16:11:51 (UTC+8)
    Abstract: 社群媒體網絡的興起,架構起了龐大且複雜的新形態網路結構,而這些蓬勃興起的社群媒體,及其資料開放政策,帶動了全球社群媒體的資料分析狂潮。本研究剖析了國立政治大學水火計畫團隊的研究方法,將其社群媒體分析流程依序分為以下幾個步驟:事件發生、關鍵字收集、資料儲存與管理、等待收割、資料預處理、資料分析、資料視覺化、結果觀察與闡釋等八項步驟。並以「2012年台灣總統大選」分析個案作為實例說明,進一步將該個案分析流程歸納整理後,發現其普遍存在的問題,包含了,資料分析速度趕不上資料收集速度、分析步驟獨立且破碎、手動化分析居多且多使用人工傳遞做為資料交換模式、分析方法零散、個案多且缺乏管理、專家經驗難保留且不易重現、重啟花費成本高且等待結果時間長等問題。
    因此,本研究以嶄新的概念提出了一套社群媒體資料分析工具,名為社群感測器(Social Sensor),設計上這是一種將實體感測器概念引入到社群媒體世界的一種創新思維,以可管理性、可模組化、可重用性的三大特色建構本系統。使用上,以觀測個案為中心,分析人員可選擇社群媒體類型,如Twitter,也可以自由的選擇分析資料集,與挑選合適的感測器來進行分析,而透過參數預設樣板可快速套用與保留專家的個案分析經驗,亦可針對觀測個案來進行管理。在本研究中亦將分析方法模組化為語系感測器與文本感測器,其中語系感測器的分析方法為本研究所提出。
    實驗評估結果顯示,過去沒有現成的語系感測器工具,故模組化後相當好用,文本感測器則是強於時間序列分析以及可支援繁體中文。本系統的有用性評價也相當正面。可模組化、可重用性、可管理性評估結果亦為正面。另外在有助於縮短資料分析時程上被認為是很重要的貢獻,解決了過去社群媒體鉅量資料分析所遇上的難題,且確實可透過本系統獲得分析價值,證實了以感測器概念所設計之系統確實有用。
    The rise of social media networks established a new style of network structure, and the policy of opening data led the data analysis of global social media frenzy. This research analyzed the process of National Chengchi University`s team in analyzing social media, which is divided into the following steps: event occur, keyword collection, data storage and management, waiting for harvest, data preprocessing, data analysis, data visualization, observation and interpretation. And we use the case study of "2012 Taiwan presidential election" to illustrate the problems in a typical analysis process such as unmatched speed of data analysis with the speed of data collecting, independent and fragmented analysis steps, labor-intensive manual analysis, manual file exchanges, lack of data and case management tools, difficulty to maintain domain expertise, high restart costs and long waiting time, etc.
    Therefore, in this research, we propose a new concept for social media analysis called “Social Sensor,” which is an innovative design attempting to transform the concept of a physical sensor in a real world into the world of social media with three design features: manageability, modularity, reusability. The system is a case-centered design that allows analysts to select the type of social media (such as Twitter), the target data sets, and appropriate social sensors for analysis. By adopting parameter templates, one can quickly apply the experience of other experts in the beginning of a new case or even create their own templates. We have also modularized the analysis tools into two social sensors: Language Sensor and Text Sensor. Experimental results show that the Language Sensor is quite easy to use and the Text Sensor’s strength is on the functions of time se-ries analysis and the support for Traditional Chinese. The evaluation result of the system on usefulness, modularity, reusability, and manageability are all very positive. The results also show that this tool can greatly reduce the time needed to perform data analysis, solve the problems encountered in traditional analysis process, and obtain useful results. The experimental results reveal that the concept of social sensor and the proposed system design are shown to be use-ful.
    Reference: [1] Kusnetzky, Dan. What is "Big Data?". ZDNet. http://www.zdnet.com/blog/virtualization/what-is-big-data/1708
    [2] Big Data Now: 2013 Edition Current Perspectives from O`Reilly Media http://www.oreilly.com/data/free/files/bigdatanow2013.pdf
    [3] 鄭宇君 and 陳百齡, “探索2012台灣總統大選之社交媒體浮現社群:鉅量資料分析取徑”, 2013中華傳播學會年會論文
    [4] Kaplan, A. M., & Haenlein, M. (2010). Users of the world, unite! The Chal-lenges and opportunities of social media.
    [5] OECD.(2007).Participative web and user-created content: Web 2.0, wikis, and social networking. Paris: Organisation for Economic Co-operation and Develop-ment.
    [6] Short, J., Williams, E., & Christie, B. (1976). The social psychology of tele-communications. Hoboken, NJ: John Wiley & Sons, Ltd.
    [7] Howard Rheingold (1993). The Virtual Community: Homesteading on the Electronic Frontier. London: MIT Press.
    [8] Murthy, Dhiraj (2012). Towards a Sociological Understanding of Social Media: Theorizing Twitter. Sociology, 46(6): 1059-1073.
    [9] Mark Stelzner(2009). Social Media vs. Social Networking: What`s the difference? http://www.examiner.com/article/social-media-vs-social-networking-what-s-the-difference
    [10] Scott, John. (1991). Social network analysis: A handbook. London: Sage.
    [11] Haythornthwaite, C. (1996). Social network analysis: an approach and technique for the study of information exchange. Library and Information Science Research, 18(4), 323-342.
    [12] Elaine J. Yuan, Miao Feng, & James A. Danowski(2013), ‘‘Privacy’’ in Semantic Networks on Chinese Social Media: The Case of Sina Weibo, Journal of Communication
    [13] Kwak, Haewoon, Lee, Changhyun & Moon, Sue (2010). What is twitter, a social network or a news media? Paper presented at the International World Wide Web Conference Committee, North Carolina, USA
    [14] Bruns, Axel.; Burgess, Jean. (in press). Researching News Discussion on Twitter. Journalism Studies.
    [15] Wikipedia, the free encyclopedia. Social Network Analysis http://en.wikipedia.org/wiki/Social_network_analysis
    [16] 資策會,創研所,"社群媒體分析服務平台" http://www.ideas.iii.org.tw/application.html
    [17] Jean Burgess and Axel Bruns.(2012). (Not) the Twitter Election: The Dy-namics of the #ausvotes Conversation in Relation to the Australian Media Ecolo-gy. Journalism Practice 20 Mar. 2012.
    [18] Tamara A. Small (2011): What the HASHTAG?, A content analysis of Canadian politics on Twitter. Information, Communication & Society, 14:6, 872-895.
    [19] Himelboim, I. (2014). Political Television Hosts on Twitter: Examining Patterns of Interconnectivity and Self Exposure in Twitter Political Talk Networks. Journal of Broadcasting & Electronic Media, 58 (1), pp.76-96.
    [20] Vieweg, S., A. L. Hughes, Starbird, K. and Palen, L. (2010). Microblogging during two natural hazards events: what twitter may contribute to situational awareness. In Proc. CHI 2010, ACM Press, 1079-1088.
    [21] 施旭峰,"災難事件下新媒體資訊傳播方式分析與自動化分類設計─ 以八八風災為例",國立政治大學資訊科學系,中華民國一百零二年九月
    [22] Venu Vasudevan, Jehan Wickramasuriya, Siqi Zhao, Lin Zhong. Is Twitter a Good Enough Social Sensor for Sports TV? Pervasive Collaboration and Social Net-working 2013 IEEE
    [23] Takeshi Sakaki, Makoto Okazaki, Yutaka Matsuo. Earthquake Shakes Twitter Us-ers: Real-time Event Detection by Social Sensors. WWW2010, April 26-30, 2010, Raleigh, North Carolina.
    [24] Takeshi Sakaki, Yutaka Matsuo, Tadashi Yanagihara, Naiwala P. Chandrasiri, Ka-zunari Nawa. Real-time Event Extraction for Driving Information. Proceedings of the 2012 IEEE International Conference on Cyber Technology in Automation, Control and Intelligent Systems May 27-31, 2012, Bangkok, Thailand
    [25] 鄭宇君 and 陳百齡,"超越在地脈絡的全球社交媒體:以 2012 年台灣總統大選的中文Twitter 討論社群為例",2012 中國網絡傳播學年會澳門國際會議
    [26] 使用D3.js的知识组织系统 Web动态交互可视化功能实现[J],现代图书情报技术,2013(7/8):127-131
    [27] C.-H. Tsai. (2000). MMSEG: A Word Identification System for Mandarin Chinese Text Based on Two Variants of the Maximum Matching Algorithm. Available: http://technology.chtsai.org/mmseg/
    [28] Chih-Hao Tsai. MMSEG: A Word Identification System for Mandarin Chinese Text Based on Two Variants of the Maximum Matching Algorithm. http://technology.chtsai.org/mmseg/
    [29] 國語辭典簡編本編輯小組. (1997). 國語辭典簡編本編輯資料字詞頻統計報告. Available:http://www.edu.tw/files/site_content/M0001/pin/f11.html
    [30] 王淑美, "傳播科技與生活韻律―關於研究方法的探討" ,傳播研究與實踐.第4 卷 第1 期.頁23-43.2014 年1 月
    [31] Carney, T. F. (1990). Collaborative inquiry methodology. Windsor, Ontario, Can-ada:University of Windsor, Division for Instructional Development.
    [32] 張芬芬, "質性資料分析的五步驟:在抽象階梯上爬升", 初等教育學刊 第三十五期 2010年4月 頁87-120
    Description: 碩士
    國立政治大學
    資訊科學學系
    101971017
    102
    Source URI: http://thesis.lib.nccu.edu.tw/record/#G0101971017
    Data Type: thesis
    Appears in Collections:[資訊科學系] 學位論文

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