參考文獻 |
一、網路資料
[1] 張嘉伶、熊方瑜 (2014)。2014網路人氣賣家總榜單。數位時代,130-135。
[2] 資策會產業情報研究所 (2013)。2013資通訊服務產業年鑑-數位媒體篇,9-18。
[3] 資策會產業情報研究所 (2014)。社群發展專題研究精選。擷取日期:2015年5月16日。取自:http://mic.iii.org.tw/aisp/book/bookdetail.asp?bptype=&bsqno=711
[4] 資策會產業情報研究所 (2015)。2015上半年Facebook廣告於消費行為影響力分析。擷取日期:2015年5月16日。取自: http://mic.iii.org.tw/aisp/reports/reportdetail.asp?docid=CDOC20150319002&doctype=RC&smode=1
[5] 路透社 (2008)。Facebook登陸中國市場推出簡體中文版。擷取日期:2015年5月16日。取自:http://cn.reuters.com/article/2008/06/20/idCNChina-1472720080620
[6] 熊方瑜 (2014)。Facebook測試「購買」按鈕,站內輕鬆完成購物。數位時代。擷取日期:2015年5月16日。取自:http://www.bnext.com.tw/article/view/id/33081
[7] 模範市場研究顧問 (2014)。Facebook台灣消費者線上行為調查。擷取日期:2015年5月16日。取自:http://share.inside.com.tw/posts/5249
[8] 羅之盈 (2012)。樂天市場挖深社群,推Facebook開店應用程式。數位時代。擷取日期:2015年5月16日。取自:http://www.bnext.com.tw/article/view/id/23759
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