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題名 從ELM理論看WeChat與Weibo之資訊流廣告效果
A research of news feed ads effect between WeChat and Weibo: based on Elaboration Likelihood Model作者 陳奕杭
Chen, Yihang貢獻者 張郁敏
Chang, Yuhmiin
陳奕杭
Chen, Yihang關鍵詞 社群媒體
資訊流廣告
訊息涉入度
訊息可信度
感知按讃數量
Social Media
News Feed Ad
Message Involvement
Message Credibility
Perceived Number of Likes日期 2017 上傳時間 5-Apr-2017 15:43:28 (UTC+8) 摘要 行動時代的到來為社群媒體帶來了發展的春天,原生廣告也隨之應運而生,成為備受社群媒體青睞的新興廣告形式。而在中國市場,WeChat與Weibo這兩大社群媒體自2012年起相繼推出了資訊流廣告服務,並不斷試水新的技術和表現形式。兩者的資訊流廣告在運作機制和表現形式上雖有所雷同,但仍各有特點,其中最主要的差異體現在廣告訊息的按讃者和按讃數量上。因此,本研究以WeChat和Weibo為研究對象,援引推敲可能性模式理論,希望探究消費者在觀看WeChat和Weibo資訊流廣告時,是否會因為廣告訊息按讚者或按讚數量的不同,在品牌態度和購買意願上產生差異。本研究採用實驗室實驗法,招募60名國立政治大學非傳播相關科系的大陸籍學生進行實驗。研究結果發現WeChat和Weibo的資訊流廣告訊息接收者在品牌態度和購買意願的形塑歷程上確實存在差異:就WeChat而言,廣告訊息可信度更能正向影響消費者的品牌態度和購買意願;就Weibo而言,感知按讃數量更能正向影響消費者的購買意願,但對品牌態度不構成顯著影響。
Native advertising has emerged both as an exciting new way for digital marketers to engage with the consumer, and as a new source of advertising revenue for social media. In the China market, news feed ad, a major type of native advertising, has been very popular in WeChat and Weibo since 2012. Visually the native advertisement in these two social media seem pretty similar, but they have enough differences to make them different, particularly in the differences of likers and the number of likes on advertisement.Using the Elaboration Likelihood Model (ELM) adopted by Harkins and Petty, this study focus on WeChat and Weibo and try to clarify the differences of consumer’s information processing, brand attitude and purchase intention between these two social media, which has various social tie strength. Adopting an laboratory experimentation, a total of 60 samples, participated in this study during January, 2017.Finding of this study show the differences of brand attitude and purchase intention towards news feed ad when subjects are exposed to WeChat between Weibo. In WeChat, message credibility indicate more significant influence on the brand attitude and purchase intention towards native advertisement rather than perceived number of likes. Oppositely perceived number of likes positively influence on purchase intention towards native advertisement in Weibo.參考文獻 一、中文書目白明勝(1995)。《投入程度、認知需求對廣告說服效果之影響》。台北:國立政治大學國際貿易研究所碩士論文。吳統雄(1984)。《電話調查:理論與方法》。台北市:聯經出版事業公司。張郁敏(2008)。〈單一與多重媒體重複策略之傳播效果比較〉,《中華傳播學刊》,14:231-265。張維仁(2015)。〈原生廣告5大型態〉,《動腦雜誌》,467:60-65。陳又瑈(2015)。《Facebook與Instagram之跨訊息綜效比較》。台北:國立政治大學廣告學系碩士論文。陳歆平(2016)。《探討原生廣告和橫幅廣告與網頁一致性差異對使用者經驗與廣告效果的影響》。高雄:國立中山大學資訊管理學系碩士論文。陳維謙(2016)。《原生廣告位置及內容一致性對廣告效果之影響—以產品及內容涉入程度為干擾變數》。台北:國立政治大學商學院企業管理學系碩士論文。陳建州(2009)。《線上社會網絡連結強度之衡量》。台北:國立台灣大學管理學院資訊管理學研究所碩士論文。黃俊寧、李奇勳、陳俊銘(2014)。〈傳遞者專業度、訊息數量與聯繫強度對口碑接受度和購買意圖之影響〉,《輔仁管理評論》,21(1):33-60。程新雨(2001)。《產品屬性,產品知識,認知需求對消費者反遞移律決策行為之影響》。台北:國立台灣大學商學研究所碩士論文。戴軒廷、馬恆、張紹勳(2004)。〈影響網路廣告效果之相關因素〉,《中華管理評論》,7(2):1-29。二、英文書目Arndt, J. (1967). Role of product-related conversations in the diffusion of a new product. Journal of marketing Research, 4(1), 291-295.Appelman, A., & Sundar, S. S. (2015). Measuring Message Credibility Construction and Validation of an Exclusive Scale. 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國立政治大學
傳播學院傳播碩士學位學程
103464079資料來源 http://thesis.lib.nccu.edu.tw/record/#G0103464079 資料類型 thesis dc.contributor.advisor 張郁敏 zh_TW dc.contributor.advisor Chang, Yuhmiin en_US dc.contributor.author (Authors) 陳奕杭 zh_TW dc.contributor.author (Authors) Chen, Yihang en_US dc.creator (作者) 陳奕杭 zh_TW dc.creator (作者) Chen, Yihang en_US dc.date (日期) 2017 en_US dc.date.accessioned 5-Apr-2017 15:43:28 (UTC+8) - dc.date.available 5-Apr-2017 15:43:28 (UTC+8) - dc.date.issued (上傳時間) 5-Apr-2017 15:43:28 (UTC+8) - dc.identifier (Other Identifiers) G0103464079 en_US dc.identifier.uri (URI) http://nccur.lib.nccu.edu.tw/handle/140.119/108149 - dc.description (描述) 碩士 zh_TW dc.description (描述) 國立政治大學 zh_TW dc.description (描述) 傳播學院傳播碩士學位學程 zh_TW dc.description (描述) 103464079 zh_TW dc.description.abstract (摘要) 行動時代的到來為社群媒體帶來了發展的春天,原生廣告也隨之應運而生,成為備受社群媒體青睞的新興廣告形式。而在中國市場,WeChat與Weibo這兩大社群媒體自2012年起相繼推出了資訊流廣告服務,並不斷試水新的技術和表現形式。兩者的資訊流廣告在運作機制和表現形式上雖有所雷同,但仍各有特點,其中最主要的差異體現在廣告訊息的按讃者和按讃數量上。因此,本研究以WeChat和Weibo為研究對象,援引推敲可能性模式理論,希望探究消費者在觀看WeChat和Weibo資訊流廣告時,是否會因為廣告訊息按讚者或按讚數量的不同,在品牌態度和購買意願上產生差異。本研究採用實驗室實驗法,招募60名國立政治大學非傳播相關科系的大陸籍學生進行實驗。研究結果發現WeChat和Weibo的資訊流廣告訊息接收者在品牌態度和購買意願的形塑歷程上確實存在差異:就WeChat而言,廣告訊息可信度更能正向影響消費者的品牌態度和購買意願;就Weibo而言,感知按讃數量更能正向影響消費者的購買意願,但對品牌態度不構成顯著影響。 zh_TW dc.description.abstract (摘要) Native advertising has emerged both as an exciting new way for digital marketers to engage with the consumer, and as a new source of advertising revenue for social media. In the China market, news feed ad, a major type of native advertising, has been very popular in WeChat and Weibo since 2012. Visually the native advertisement in these two social media seem pretty similar, but they have enough differences to make them different, particularly in the differences of likers and the number of likes on advertisement.Using the Elaboration Likelihood Model (ELM) adopted by Harkins and Petty, this study focus on WeChat and Weibo and try to clarify the differences of consumer’s information processing, brand attitude and purchase intention between these two social media, which has various social tie strength. Adopting an laboratory experimentation, a total of 60 samples, participated in this study during January, 2017.Finding of this study show the differences of brand attitude and purchase intention towards news feed ad when subjects are exposed to WeChat between Weibo. In WeChat, message credibility indicate more significant influence on the brand attitude and purchase intention towards native advertisement rather than perceived number of likes. Oppositely perceived number of likes positively influence on purchase intention towards native advertisement in Weibo. en_US dc.description.tableofcontents 第一章 緒論 1第一節 研究背景與動機 1第二節 研究目的與價值 6第二章 文獻探討 8第一節 原生廣告的前世今生 8第二節 WeChat vs. Weibo:社交連結強度與廣告訊息涉入度 11第三節 WeChat:廣告訊息可信度、品牌態度與購買意願 15第四節 Weibo:感知按讚數量、品牌態度與購買意願 17第三章 研究方法 18第一節 研究架構 18第二節 實驗設計 19第三節 實驗刺激物設計 19第四節 前測 24第五節 正式實驗 32第四章 研究結果與分析 38第一節 受試者輪廓 38第二節 量表信效度分析 39第三節 操弄檢定 40第四節 假設驗證 42第五章 結論與討論 51第一節 研究發現與討論 51第二節 研究貢獻 55第三節 研究限制與未來研究建議 57參考文獻 59一、中文書目 59二、英文書目 59三、網路資料 64附錄 66附錄一:第一次前測問卷 66附錄二:第二次前測問卷 67附錄三:正式實驗物 73附錄四:正式實驗問卷 75 zh_TW dc.format.extent 2247184 bytes - dc.format.mimetype application/pdf - dc.source.uri (資料來源) http://thesis.lib.nccu.edu.tw/record/#G0103464079 en_US dc.subject (關鍵詞) 社群媒體 zh_TW dc.subject (關鍵詞) 資訊流廣告 zh_TW dc.subject (關鍵詞) 訊息涉入度 zh_TW dc.subject (關鍵詞) 訊息可信度 zh_TW dc.subject (關鍵詞) 感知按讃數量 zh_TW dc.subject (關鍵詞) Social Media en_US dc.subject (關鍵詞) News Feed Ad en_US dc.subject (關鍵詞) Message Involvement en_US dc.subject (關鍵詞) Message Credibility en_US dc.subject (關鍵詞) Perceived Number of Likes en_US dc.title (題名) 從ELM理論看WeChat與Weibo之資訊流廣告效果 zh_TW dc.title (題名) A research of news feed ads effect between WeChat and Weibo: based on Elaboration Likelihood Model en_US dc.type (資料類型) thesis en_US dc.relation.reference (參考文獻) 一、中文書目白明勝(1995)。《投入程度、認知需求對廣告說服效果之影響》。台北:國立政治大學國際貿易研究所碩士論文。吳統雄(1984)。《電話調查:理論與方法》。台北市:聯經出版事業公司。張郁敏(2008)。〈單一與多重媒體重複策略之傳播效果比較〉,《中華傳播學刊》,14:231-265。張維仁(2015)。〈原生廣告5大型態〉,《動腦雜誌》,467:60-65。陳又瑈(2015)。《Facebook與Instagram之跨訊息綜效比較》。台北:國立政治大學廣告學系碩士論文。陳歆平(2016)。《探討原生廣告和橫幅廣告與網頁一致性差異對使用者經驗與廣告效果的影響》。高雄:國立中山大學資訊管理學系碩士論文。陳維謙(2016)。《原生廣告位置及內容一致性對廣告效果之影響—以產品及內容涉入程度為干擾變數》。台北:國立政治大學商學院企業管理學系碩士論文。陳建州(2009)。《線上社會網絡連結強度之衡量》。台北:國立台灣大學管理學院資訊管理學研究所碩士論文。黃俊寧、李奇勳、陳俊銘(2014)。〈傳遞者專業度、訊息數量與聯繫強度對口碑接受度和購買意圖之影響〉,《輔仁管理評論》,21(1):33-60。程新雨(2001)。《產品屬性,產品知識,認知需求對消費者反遞移律決策行為之影響》。台北:國立台灣大學商學研究所碩士論文。戴軒廷、馬恆、張紹勳(2004)。〈影響網路廣告效果之相關因素〉,《中華管理評論》,7(2):1-29。二、英文書目Arndt, J. 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