§ 瀏覽學位論文書目資料
  
系統識別號 U0002-2806201209264100
DOI 10.6846/TKU.2012.01212
論文名稱(中文) 結合科技接受模型與期望確認模型探討電子書之用後行為。
論文名稱(英文) Integrating TAM and ECT to explore continued usage behavior of e-book
第三語言論文名稱
校院名稱 淡江大學
系所名稱(中文) 企業管理學系碩士在職專班
系所名稱(英文) Department of Business Administration
外國學位學校名稱
外國學位學院名稱
外國學位研究所名稱
學年度 100
學期 2
出版年 101
研究生(中文) 何彩鈴
研究生(英文) Tsai-Ling Ho
學號 799610166
學位類別 碩士
語言別 繁體中文
第二語言別
口試日期 2012-05-26
論文頁數 62頁
口試委員 指導教授 - 吳坤山
共同指導教授 - 涂敏芬
委員 - 楊志德
委員 - 楊立人
關鍵字(中) e-book
期望確認模型
科技接受模型
使用成本
關鍵字(英) e-book
Expectation Confirmation Model
Technology Acceptance Model
Usage cost
第三語言關鍵字
學科別分類
中文摘要
2001年郝明義先生於《網路與書》中自述:「書籍,是一種傳統型態的網路。
網路是一種新型態的書。」網路打破了知識的疆界,科技改變了閱讀習慣,時過11年了,新型態的書仍在演變中。現在,就我們所知的閱讀,其閱讀內容的型式早已打破紙本書閱讀的侷限。因此e-book的閱讀行為是否能全面取代,亦是分割多少比例的傳統紙本書的閱讀習慣,為本研究的主要動機。
本研究先針對期望確認模型與科技接受模型等國內外相關文獻,及其關係構面
逐一探討。經文獻探討後,本研究之研究架構採用Bhattacherjee(2001a)所提出的IS接受後持續採用模式為基礎,並結合Davies et al.(1989)的科技接受模式,探討消費者持續使用電子書的行為意圖。問卷調查對象以e-book用戶為主要研究對象,並針對回收的有效樣本數254份,進行敘述性統計、信效度分析及結構方程模型(Structural Equation Modeling, SEM)中之偏最小平方估計法(Partial Least Square, PLS)進行分析,其主要研究結果如下:
1.電子書用戶的期望確認程度對e-book的認知易用性、 認知有用性有顯著正向的影響。
2.電子書用戶的期望確認程度對e-book的使用滿意度有顯著的正向影響。
3.電子書用戶的認知易用性對e-book的認知有用性、使用滿意度有顯著的正向影
響。
4.電子書用戶對的認知有用性對e-book的使用滿意度、與持續使用意願有顯著的正向影響。
5.電子書用戶使用e-book的滿意度對持續使用意願有顯著的正向影響。
6.電子書的使用成本對持續使用意願有顯著的負向影響。
英文摘要
2001 Mr. Hao, Min-gyi Network book in the readme: "books, is a traditional type of network. The Internet is a new kind of book". Network to break the boundaries of knowledge, technology is changing reading habits, but when more than 11 years, new types of books are still evolving. Now, reading as we know, read the content type has long been to break the limitations of the paper book to read. E-book reading behavior can fully replace, is also split what percentage of the traditional paper book reading habits, the main motivation of this study.
In this study, against expectations confirmation theory and technology acceptance model, relevant literature and its relational dimension go into. It uses the research model of Expectancy Confirmation Model (ECM) and Technology Acceptance Model (TAM) to explore the behavior of consumers continue to use the e-book intentions. The study object of this research is e-books users. There are 254 valid questionnaires and the quantitative research method including descriptive statistics, validity analysis, reliability analysis, and structural equation modeling (Partial Least Square method) were then conducted for data analysis. The main empirical results are as followings:
1.Users’ expectation confirmation has a positive effect on the perceived ease of use, perceived usefulness of e-book.
2.Users’ expectation confirmation while using e-book has a positive effect on satisfaction.
3.Perceived ease of use while using e-book has a positive effect on perceived usefulness and satisfaction.
4.Perceived usefulness while using e-book has a positive effect on satisfaction and continuance intention.
5.Users’ satisfaction is positively associated with continuance intention.
6.Usage cost is negatively associated with continuance intention.
第三語言摘要
論文目次
目錄	I
表目錄	III
圖目錄	IV
第一章 緒論	1
第一節 研究背景與動機	1
第二節 研究目的	4
第三節 研究流程	5
第二章 文獻探討	6
第一節 電子書的市場發展現況	6
第二節 期望確認理論	13
第三節 資訊系統(INFORMATION SYSTEMS, IS)接受後持續採用模式	15
第四節 科技接受模型	17
第五節 使用成本	19
第三章 研究方法	21
第一節 研究架構	21
第二節 研究假設	22
第三節 研究變項與操作型定義與衡量	24
第四節 研究對象與範圍	28
第五節 統計分析	29
第四章  實證分析結果	31
第一節 預試分析	31
第二節 樣本結構分析	32
第三節 研究變項之因果關係	36
一、測量模型評估	36
第五章 結論與建議	43
第一節  研究結論與發現	43
第二節  管理意涵	45
第三節  後續研究建議	47
參考文獻	48
中文文獻	48
英文文獻	50
附錄一:前測問卷	57
附錄二:問卷	60


表目錄
表 2 1 科技接受模型(TAM)應用之相關研究整理	18
表 3 1 期望確認程度之衡量題項	24
表 3 2 認知有用性之衡量題項	25
表 3 3 認知易用性之衡量題項	26
表 3 4 滿意度之衡量題項	26
表 3 5 持續使用意願之衡量題項	27
表 3 6 實際使用之衡量題項	27
表 3 7 使用成本之衡量題項	28
表 4 1 各構面之Cronbach’s α值	32
表 4 2 性別統計	33
表 4 3 年齡統計	33
表 4 4 教育程度統計	34
表 4 5 每月可支配所得統計	34
表 4 6 行業別統計	34
表 4 7 每週使用電子書下載服務之次數統計	35
表 4 8 每週電子書閱讀時數統計	35
表 4 9 使用電子書頻率統計	36
表 4 10研究構面之信度效表	38
表 4 11負荷量-跨負荷量矩陣	39
表 4 12相關係數矩陣	40
表 4 13研究模型路徑分析結果表	42
表 5 1 研究假說彙整表	43


圖目錄
圖 1 1 2002-2011(1Q)美國電子書市場銷售金額	1
圖 1 2台灣電子書產業鏈現況發展	3
圖 1 3研究流程圖	5
圖 2 1電子書產業成長驅動力分析	7
圖 2 2北美三大電子書服務廠商營運模式	8
圖 2 3台灣民眾近半年平均購買電子書籍數量	11
圖 2 4一年購買書籍、雜誌和報紙的平均費用	12
圖 2 5電子書閱讀器重要的因素	12
圖 2 6 Oliver(1980)之期望確認理論架構圖	13
圖 2 7 Bhattacherjee(2001a)之IS接受後持續採用模式	16
圖 2 8 Davis(1989)之科技接受模型架構圖	17
圖 3 1本研究架構圖	21
圖 4 1本研究模型之路徑分析圖	42
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