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研究生: 高于勝
Kao, Yu-Sheng
論文名稱: 使用者技術接受影響因素預測及品牌策略訂定
User Technology Acceptance Influence Factors Prediction and Branding Strategies Formulation
指導教授: 黃啟祐
學位類別: 碩士
Master
系所名稱: 工業教育學系
Department of Industrial Education
論文出版年: 2014
畢業學年度: 102
語文別: 英文
論文頁數: 224
中文關鍵詞: 平板手機品牌策略第二代整合科技使用模型(UTAUT2)決策實驗室分析法決策研究室分析法之網路流程偏最小平方法粗糙集合法模糊積分法多準則決策分析修正式德爾菲法
英文關鍵詞: Phablet, Branding Strategies, Unified Theory of Acceptance and Use of Technology 2 (UTAUT2), Decision Making Trial and Evaluation Laboratory (DEMATEL), Decision Making Trial and Evaluation Laboratory (DEMATEL) based on Network Process (DNP), Partial Least Squares (PLS), Rough Sets Theory (RST), Fuzzy Integral Technique (FIT), Multiple Criteria Decision Making (MCDM), Modified Delphi
論文種類: 學術論文
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  • 隨著智慧型行動裝置使用數量增加,智慧型裝置已經變成人們日常生活中的一部份。許多電子廠商與企業嘗試著想要了解並且找出能夠影響消費者購買動機的潛在因素,此目的是為了要能夠吸引消費者的目光以及能夠改善他們的產品。平板手機,是一種整合型的智慧裝置,它結合了平板電腦與智慧型手機。平板手機目前也已經成為了智慧型手機使用中的未來趨勢。在此情形下,預測平板手機的採用因素與偏好即成為電子廠商不可或缺的工作。然而,預測平板手機的使用因素並非一件簡單的工作。為了能夠有效地了解這些因素,本研究將利用第二代整合科技使用模型 (UTAUT2) 作為研究架構來預測消費者的使用意圖與使用行為。除了預測消費者偏好以及產品改善之外,電子廠商也應該制定合適的品牌策略來提升良好的產品口碑以及刺激產品的銷量。因此,本研究將基於新型多準則決策架構來訂定平板手機的品牌策略。為了解決上述提及的議題,本研究首先將利用修正式德爾菲法來評估合適的準則與構面。其次,為了比較與建構因果模型,也將利用決策實驗室分析法 (DEMATEL) 以及偏最小平方法 (PLS)。第三,利用決策實驗室之網絡分析法 (DNP) 將獲得準則與構面的關聯權重,能夠找出其中最重要的準則與構面,以利進行評估與改善。第四,本研究將利用粗糙集合法來預測使用者採用行為的關聯規則,此目的是為了找出可能相關性最高的準則群。為了進一步制定產品行銷策略並且改善其策略以達到最理想水準,本研究最後會利用模糊積分法來推導出最佳的行銷策略並了解其他策略與理想策略存在的差距,以利進行策略改善。根據本研究的分析結果顯示,使用習慣構面對其他的構面皆有直接影響關係,使用意圖與績效期望屬於最容易被影響的構面。實務上而言,最容易影響其他因素的構面應該優先被改善。另外,關聯權重分析結果顯示使用意圖、享樂動機與績效期望構面為最重要構面。關聯規則的推導結果顯示出對平板手機擁有強烈偏好程度的覆蓋率為10.49%,中等偏好程度的覆蓋率為5.05%,低度偏好程度的覆蓋率為7.02%。最後,品牌策略的選擇以及排序之結果顯示出對於平板手機品牌策略擬定中,以顧客價值主張為基礎的穩定創新策略是最重要的品牌行銷手段。本研究未來的研究結果能夠作為平板手機相關產品的策略訂定以及產品改善之參考依據。而本研究所提出的方法論也能夠作為用來預測消費者科技採用行為偏好以及改善採用因素缺口的參考方法。

    With the increase of smart mobile device in use as a regular part of people’s daily life, many electronic firms and businesses have attempted to understand and discover the potential factors affecting consumer’s purchase motivation to capture the users’ attention and to improve incrementally their product. Phablet, is an integrated smart device of combining the tablet PCs and smartphone, has gradually become a future trend of smartphone use. In this situation, predicting the phablet adopting factors and preferences will become an indispensable work for electronic firms. However, phablet use factors forecast is not a simple work. For the sake of understanding efficaciously the factors influencing the users’ technology adoption, this research will explore and forecast the intention to use and use behavior using the second generation of unified theory of acceptance and use of technology (UTAUT2) as a research model. In addition to customers’ preference prediction and the smart mobile device enhancement, electronics firms should also develop appropriate branding strategies to stimulate the product sales and increase their reputation. Therefore, this research will define the branding strategies for phablet based on MCDM framework. In order to solve above issues, this study first will employ Modified Delphi to evaluate the applicable dimensions/criteria. Second, to construct and compare the causal model, the DEMATEL and Partial Least Squares (PLS) will be introduced. Third, the influential weights versus each criterion being obtained by using DEMATEL based Network Process (DNP) method for understanding the importance among the dimensions/criteria. Fourth, this research will apply the Rough Sets Technique (RST) to forecast the association rules of users’ adopting behavior. To formulate the branding strategies and improve gaps among strategies for achieving aspiring level, the Fuzzy Integral Technique (FIT) finally will be leveraged. In light of the analytical findings, the causal relationships derived by DEMATEL show that the aspect of habit has direct influence on other aspects. The aspects of use intention and performance expectancy have least impact on other aspects. In practice, the least influential aspects should be prioritized in improvement than the rest of aspects. Also, the associated weights among the each criterion and construct reveal that the use intention, hedonic motivation, and performance expectancy are the most important aspects. The relation rules among the each preference level derived by RST method show that the coverage rates of reduction rules are 10.49% for strong preference in Phablet acceptance, 5.05% for moderate preference in Phablet acceptance, and 7.02% for low preference in Phablet acceptance. Finally, the empirical results of branding strategies being selected and ranked by Fuzzy Integral approach reveal that the strategy of creating a steady stream of innovations with strong values position is the most appropriate alternatives for Phablet branding strategies formulation. The research results can serve as a basis for related phablet devices’ branding strategy definition and product improvement. The proposed methodology can also be used for predicting users’ adopting behavioral preferences and be employed for improving the gaps among the phablet use factors.

    Table of Contents 中文摘要 2 Abstract 4 Table of Contents 7 List of Figures 10 List of Tables 12 Chapter 1 Introduction 13 1.1 Research Background and Motivations 14 1.2 Research Objectives 17 1.3 Research Limitations and Future Research 20 1.4 Research Framework 21 1.5 Research Process 22 1.6 Overview of the Research 24 Chapter 2 Literature Review 24 2.1 Prediction of High-Technology Consumer Behaviors 25 2.2 The Lead User Method 29 2.3 Theory of Reasoned Action (TRA) 33 2.3. Theory of Planned Behavior (TPB) 35 2.3. Technology Acceptance Model (TAM) 37 2.4. The Extension of TAM Model 40 2.4.1 Technology Acceptance Model 2 (TAM2) 40 2.4.2 Unified Theory of Acceptance and Use of Technology (UTAUT) 43 2.4.3 Technology Acceptance Model 3 (TAM3) 45 2.4.4 Unified Theory of Acceptance and Use of Technology 2 (UTAUT2) 48 2.5. Branding Strategies of Phablets 50 2.5.1. Branding In High-Technology Markets 51 2.5.2. Developing the Branding Strategies 53 2.6. Research Model and Hypothesis 58 2.6.1. Performance Expectancy 58 2.6.2. Effort Expectancy 60 2.6.3. Social Influence 61 2.6.4. Facilitating Conditions 62 2.6.5. Hedonic Motivation 63 2.6.6. Price Value 64 2.6.7. Habit 66 2.6.8. Behavioral Intention 67 2.6.9. Use Behavior 69 Chapter 3 Research Methods 72 3.1 Data Collection 73 3.2 Measurements 74 3.3 Modified Delphi Technique 75 3.4 Partial Least Squares (PLS) 77 3.5 Decision Making Trial and Evaluation Laboratory (DEMATEL) 83 3.6 Analytic Network Process (ANP) 88 3.7 DEMATEL based Network Process (DNP) Technique 95 3.8 Rough Sets Theory (RST) 100 3.6.1.1 Information and Decision System 101 3.6.1.2 Indiscernibility Relation 101 3.6.1.3 Approximations of Sets 102 3.6.1.4 Attribute Reduction and core 103 3.6.1.5 Decision Rules 104 3.6.1.6 Flow Graphs 105 3.9 Fuzzy Integral Technique (FIT) 107 3.6.2 Fuzzy Measure 108 3.6.3 Fuzzy Integral 109 Chapter 4 Empirical Study 111 4.1 Background and Problem Description 112 4.2 Factors Determination for Phablet Acceptance and Branding Strategies Selection by Modified Delphi 113 4.3 Constructing the Causal Relationships between Dimensions and Criteria by DEMATEL and Deriving the Influential Weights by DNP method 118 4.4 The analytical results by PLS method 131 4.5 The Analytical Results by RST Method 137 4.5.1 Attributes Selection 138 4.5.2 The Associate Rules Derivations by RST Method 141 4.5.3 The Results of Flow Graph 143 4.6 The Results by Fuzzy Integral 149 Chapter 5 Discussion 154 5.1 Managerial Implication 154 5.2 Advances in Research Method 166 Chapter 6 Conclusion 167 Reference 168 List of Figures Figure 1-1 Research Framework 22 Figure 1-2 Research Process 23 Figure 2-1 Characterizing the High Technology Market 29 Figure 2-2 Theory of Reasoned Action (TRA) 35 Figure 2-3 Theory of planned behavior (TPB) 37 Figure 2-4 Technology Acceptance Model (TAM) 40 Figure 2-5 Technology Acceptance Model 2 (TAM2) 43 Figure 2-6 UTAUT Model 45 Figure 2-7 Extended TAM Model 46 Figure 2-8 TAM3 Model 48 Figure 2-9 Research Model 70 Figure 3-1: Example of a PLS Path Model. 79 Figure 3-2 An example of the directed graph 85 Figure 3-3 The control hierarchy 90 Figure 3-4 Connections in a network 91 Figure 3-5 Concept of fuzzy integral 110 Figure 4-1 The Casual Relationship Network versus Each Dimension and Each Criterion 125 Figure 4-2 PLS Path Modeling Analytical Results for Structural Model 136 Figure 4-3 The Flow Graph based on Reduced Decision Rules of Low Preference in Phablet Acceptance 145 Figure 4-4 The Flow Graph based on Reduced Decision Rules of Moderate Preference in Phablet Acceptance 145 Figure 4-5 The Flow Graph based on Reduced Decision Rules of Strong Preference in Phablet Acceptance 146 Figure 4-6 Comparison between Different Branding Strategies based on Criteria by Non-Additive Fuzzy Integral Method 154 Figure 5-1 The original model 156 Figure 5-2 The Comparison of DEMATEL and PLS Methods based Lead Users’ and Mass Users’ Opinions 156 Figure 5-3 The Casual Relationship Network for Performance Expectancy 157 Figure 5-4 The Casual Relationship Network for Effort Expectancy 158 Figure 5-5 The Casual Relationship Network for Social Influence 159 Figure 5-6 The Casual Relationship Network for Facilitating Conditions 160 Figure 5-7 The Casual Relationship Network for Hedonic Motivation 160 Figure 5-8 The Casual Relationship Network for Price Value 161 Figure 5-9 The Casual Relationship Network for Habit 161 Figure 5-10 The Casual Relationship Network for Use Intention 162 Figure 5-11 The Casual Relationship Network for Use Behavior 162   List of Tables Table 2-1The Number of Innovations Across a Various Industries 31 Table 2-2 Strategies for Branding in the High Technology Environment 53 Table 2-3 Dimensions and Criteria for Analyzing Users’ Phablet Acceptance 70 Table 4-1 The Evaluative Results of Dimensions based on Fifteen Experts by Modified Delphi 115 Table 4-2 The Evaluative Results of Criteria based on Fifteen Experts by Modified Delphi 116 Table 4-3 The Evaluative Results of Alternatives Strategies based on Fifteen Experts by Modified Delphi 117 Table 4-4 The Average Initial Direct Influence Matrix 122 Table 4-5 The Normalized Direct Influence Matrix 123 Table 4-6 The Total Influence Matrix 124 Table 4-7 The Total Influence Matrix 126 Table 4-8 and Versus Each Dimension 126 Table 4-9 and Versus Each Criterion 127 Table 4-10 The Unweighted Supermatrix 128 Table 4-11 The Weighted Supermatrix 129 Table 4-12 The Influential Weights versus Each Dimension and Criterion 130 Table 4-13 Descriptive statistics of mass users’ characteristics 133 Table 4-14 Factor loading and T-statistic for Model Measurement 134 Table 4-15 AVE, CR, and Cronbach’s for Model Evaluation 135 Table 4-16 The Square Root of AVEs and Dimension Correlation Coefficients 136 Table 4-17 Direct, Indirect, and Total Effect of dimensions 137 Table 4-18 The Attributes Specification for Mass Users’ Characteristics 139 Table 4-19 Quality and Accuracy Measurement for Classification 143 Table 4-20 Decision Rules for Low Preference in Phablet Acceptance 147 Table 4-21 Decision Rules for Moderate Preference in Phablet Acceptance 147 Table 4-22 Decision Rules for Strong Preference in Phablet Acceptance 148 Table 4-23 Fuzzy Measure for criteria among each dimension 151 Table 4-24 Performance Scores Derivations by Fuzzy Integral 153

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