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  1. NTU Theses and Dissertations Repository
  2. 管理學院
  3. 國際企業學系
請用此 Handle URI 來引用此文件: http://tdr.lib.ntu.edu.tw/jspui/handle/123456789/93218
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dc.contributor.advisor黃恆獎zh_TW
dc.contributor.advisorHeng-Chiang Huangen
dc.contributor.author許柏威zh_TW
dc.contributor.authorPo-Wei Hsuen
dc.date.accessioned2024-07-23T16:20:57Z-
dc.date.available2024-07-24-
dc.date.copyright2024-07-23-
dc.date.issued2024-
dc.date.submitted2024-07-17-
dc.identifier.citationAkter, S., & Wamba, S. F. (2016). Big data analytics in E-commerce: a systematic review and agenda for future research. Electronic Markets, 26, 173-194.
Alzubaidi, L., Zhang, J., Humaidi, A. J., Al-Dujaili, A., Duan, Y., Al-Shamma, O., ... & Farhan, L. (2021). Review of deep learning: concepts, CNN architectures, challenges, applications, future directions. Journal of big Data, 8, 1-74.
Arnold, M. J., & Reynolds, K. E. (2003). Hedonic shopping motivations. Journal of retailing, 79(2), 77-95.
Aswanth, C., Mahesh, R., & Thomas, A. (2023). Predicting The Consumer Purchase Behavior Of Organic Food Using Decision Tree Algorithm. Journal of Namibian Studies: History Politics Culture, 35, 3055-3070.
Ayodele, T. O. (2010). Types of machine learning algorithms. New advances in machine learning, 3(19-48), 5-1.
Beath, C., Becerra-Fernandez, I., Ross, J., & Short, J. (2012). Finding value in the information explosion. MIT Sloan Management Review.
Beulke, D. (2011). Big data impacts data management: The 5 vs of big data. Available from: Big Data Impacts Data Management: The 5Vs of Big Data, accessed, 21.
Cavallo, A. (2018). More Amazon effects: online competition and pricing behaviors (No. w25138). National Bureau of Economic Research.
Escobar-Rodríguez, T., & Bonsón-Fernández, R. (2017). Analyzing online purchase intention in Spain: fashion e-commerce. Information Systems and e-Business Management, 15, 599-622.
Esmeli, R., Bader-El-Den, M., & Abdullahi, H. (2021). Towards early purchase intention prediction in online session based retailing systems. Electronic Markets, 31(3), 697-715.
Fu, Y., Yang, M., & Han, D. (2021). Interactive Marketing E-Commerce Recommendation System Driven by Big Data Technology. Scientific Programming, 2021, 1-11.
Goff, J., McInerney, P., & Soni, G. (2012). Need for speed: Algorithmic marketing and customer data overload. McKinsey & Company, McKinsey on Marketing and Sales.
Hagberg, J., Sundstrom, M., & Egels-Zandén, N. (2016). The digitalization of retailing: an exploratory framework. International Journal of Retail & Distribution Management, 44(7), 694-712.
Jinfu, W., & Aixiang, Z. (2009, May). E-commerce in the textile and apparel supply chain management: Framework and case study. In 2009 Second International Symposium on Electronic Commerce and Security (Vol. 1, pp. 374-378). IEEE.
Kaplan, A., & Haenlein, M. (2019). Siri, Siri, in my hand: Who’s the fairest in the land? On the interpretations, illustrations, and implications of artificial intelligence. Business horizons, 62(1), 15-25.
Kauffman, R. J., Srivastava, J., & Vayghan, J. (2012). Business and data analytics: New innovations in the management of e-commerce. Electronic Commerce Research and Applications, 11(2), 85.
Kopp, M. (2013). Seizing the big data opportunity. Ecommerce Times.
Martin, G. (2011). The Importance Of Marketing Segmentation. American Journal of Business Education, 4(6), 15-18.
McAfee, A., Brynjolfsson, E., Davenport, T. H., Patil, D. J., & Barton, D. (2012). Big data: the management revolution. Harvard business review, 90(10), 60-68.
Moe, W. W. (2003). Buying, searching, or browsing: Differentiating between online shoppers using in-store navigational clickstream. Journal of consumer psychology, 13(1-2), 29-39.
Mohri, M., Rostamizadeh, A., & Talwalkar, A. (2018). Foundations of machine learning. MIT press.
Nandapala, E. Y. L., & Jayasena, K. P. N. (2020, November). The practical approach in Customers segmentation by using the K-Means Algorithm. In 2020 IEEE 15th international conference on industrial and information systems (ICIIS) (pp. 344-349). IEEE.
Ramaswamy, S. (2013). What the companies winning at big data do differently. Bloomberg, June: http://www. bloomberg. com/news/2013–06-25/what-the-companies-winning-at-big-data-do-differently. html.
Russom, P. (2011). Big data analytics. TDWI best practices report, fourth quarter, 19(4), 1-34.
Schellong, D., Kemper, J., & Brettel, M. (2016). Clickstream data as a source to uncover con-sumer shopping types in a large-scale online setting.
Syakur, M. A., Khotimah, B. K., Rochman, E. M. S., & Satoto, B. D. (2018, April). Integration k-means clustering method and elbow method for identification of the best customer profile cluster. In IOP conference series: materials science and engineering (Vol. 336, p. 012017). IOP Publishing.
Wamba, S. F., Akter, S., Edwards, A., Chopin, G., & Gnanzou, D. (2015). How ‘big data’ can make a big impact: Findings from a systematic review and a longitudinal case study. International journal of production economics, 165, 234-246.
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dc.identifier.urihttp://tdr.lib.ntu.edu.tw/jspui/handle/123456789/93218-
dc.description.abstract本研究探討了電子商務環境中消費者的線上購物行為類別與預測,旨在彌補傳統實體購物與線上購物在個人化服務方面的差距。透過現代電商平台提供的大量消費者點擊流數據,本研究開發了一套量化指標來分析消費者的線上瀏覽行為,從而詳細描繪出消費者的線上瀏覽行為軌跡以及行為模式。
本研究識別了兩個核心維度:搜索行為的導向性以及對促銷的敏感度,並將消費者劃分為四個獨特的行為類別:目標導向-促銷愛好者、目標導向-非價格驅動者、探索型-促銷愛好者、探索型-非價格驅動者。透過應用 K-means 分群演算法,驗證上述四種消費者行為類別的顯著性,不僅揭示了消費者購物行為的多樣性,也為電商平台提供了針對性的行銷策略方向。
為了在消費者購物初期階段提早識別出消費者的行為模式,本研究進一步開發了基於決策樹的機器學習模型。此模型能夠在早期瀏覽階段準確預測上述四個行為類別:目標導向-促銷愛好者、目標導向-非價格驅動者、探索型-促銷愛好者、探索型-非價格驅動者。這使得電商平台能夠及時且有效地實施針對性的市場策略。包括支持精準的廣告與促銷投放,實現推薦系統的客制化優化,並顯著提升個人化與互動性的使用者體驗。
總體而言,本研究不僅加深了對電子商務消費者行為的理解,還展示了利用數據驅動分析來提高商業決策效率的巨大潛力。這些發現為電商平台如何利用大數據及機器學習技術來優化行銷策略及顧客體驗提供了具體而實用的指導。
zh_TW
dc.description.abstractThis study explores consumer online shopping behavior categories and predictions within the e-commerce environment, aiming to bridge the gap between traditional physical shopping and online shopping in terms of personalized service. Utilizing extensive consumer clickstream data provided by modern e-commerce platforms, this research developed a set of quantitative indicators to analyze consumers' online browsing behaviors, thereby detailing their browsing trajectories and behavioral patterns.
The study identified two core dimensions: the Exploring Behavioral Orientation and Promotion Sensitivity, categorizing consumers into four unique groups: Goal-Oriented Promotion Lovers, Goal-Oriented Non-Price Driven, Exploratory Promotion Lovers, and Exploratory Non-Price Driven. By applying the K-means clustering algorithm, the significance of these four consumer behavior categories was validated, revealing the diversity of consumer shopping behaviors and providing targeted marketing strategy directions for e-commerce platforms.
To identify consumer behavior patterns early in the shopping process, we further developed a decision-tree-based machine learning model. This model can accurately predict the aforementioned four behavior categories during the early browsing stage, enabling e-commerce platforms to implement targeted market strategies in a timely and effective manner. This includes supporting precise advertising and promotional campaigns, achieving customized optimization of recommendation systems, and significantly enhancing personalized and interactive user experiences.
Overall, this research not only deepens the understanding of consumer behavior in e-commerce but also demonstrates the immense potential of data-driven analysis to enhance business decision-making efficiency. These findings provide concrete and practical guidance on how e-commerce platforms can leverage big data and machine learning technologies to optimize marketing strategies and customer experiences.
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dc.description.provenanceSubmitted by admin ntu (admin@lib.ntu.edu.tw) on 2024-07-23T16:20:57Z
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dc.description.provenanceMade available in DSpace on 2024-07-23T16:20:57Z (GMT). No. of bitstreams: 0en
dc.description.tableofcontents摘要 i
Abstract ii
目次 iii
圖次 v
表次 v
第一章、緒論 1
1-1. 研究背景與動機 1
1-2. 研究目的 1
1-3. 研究流程與章節概述 2
第二章、文獻回顧 4
2-1. 電子商務 4
2-1-1. 電子商務的定義與影響 4
2-1-2. 電子商務近期發展趨勢 4
2-2. 數據在電子商務中的應用 5
2-2-1. 大數據定義 5
2-2-2. 大數據常見類型 7
2-2-3. 大數據於電子商務的應用實例 8
2-3. 人工智慧(機器學習)於電子商務應用 10
2-3-1. 人工智慧(機器學習)定義 10
2-3-2. 常見人工智慧(機器學習)技術 10
2-4. 顧客分群方法 11
2-4-1. 顧客分群概述 11
2-4-2. 顧客分群常見方法 12
第三章、研究框架與分類發展 14
3-1.消費者分類的重要性與意義 14
3-1-1. 電商中對消費者分類的重要性 14
3-1-2. 有效分類的關鍵維度 15
3-2. 分類策略與實施方法 16
3-2-1. 資料使用 16
3-2-2. 參考作法 17
3-3. 分類研究框架與預測模型 17
3-3-1. 分類研究框架 17
3-3-2. 客戶行為類別的提前預測 20
第四章、研究方法與數據 22
4-1. 資料來源與預處理 22
4-1-1. 資料來源介紹 22
4-1-2. 定義分析單位 23
4-2. 指標介紹 24
4-3. 指標與維度的關聯性分析 31
4-4. 消費者分類方法 32
4-5. 預測模型與效能評估方法 34
第五章、研究結果及解釋 36
5-1. 分類結果描述 36
5-1-1. 最佳分類選擇 36
5-1-2. 分類結果評估與解釋 37
5-2. 消費者類別特徵與行為分析 41
5-3. 預測與早期識別 45
第六章、結論及未來研究方向 50
6-1. 研究發現與結論 50
6-2. 研究應用及效益 50
6-3. 研究限制 51
6-4. 未來研究方向 52
參考文獻 54
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dc.language.isozh_TW-
dc.subject電子商務zh_TW
dc.subject行為預測zh_TW
dc.subject消費者行為zh_TW
dc.subject機器學習zh_TW
dc.subject大數據zh_TW
dc.subject顧客分群zh_TW
dc.subjectCustomer Segmentationen
dc.subjectBehavior Predictionen
dc.subjectMachine Learningen
dc.subjectBig Dataen
dc.subjectE-commerceen
dc.subjectConsumer Behavioren
dc.title電子商務中基於大數據與機器學習的消費者分析: 探索行為導向性與促銷敏感度zh_TW
dc.titleConsumer Analysis in E-commerce Based on Big Data and Machine Learning: Exploring Behavioral Orientation and Promotion Sensitivityen
dc.typeThesis-
dc.date.schoolyear112-2-
dc.description.degree碩士-
dc.contributor.coadvisor楊立偉zh_TW
dc.contributor.coadvisorLi-Wei Yangen
dc.contributor.oralexamcommittee陳瑀屏;施權峰zh_TW
dc.contributor.oralexamcommitteeYu-Ping Chen;C-F Shihen
dc.subject.keyword電子商務,大數據,機器學習,顧客分群,行為預測,消費者行為,zh_TW
dc.subject.keywordE-commerce,Big Data,Machine Learning,Customer Segmentation,Behavior Prediction,Consumer Behavior,en
dc.relation.page56-
dc.identifier.doi10.6342/NTU202401829-
dc.rights.note同意授權(限校園內公開)-
dc.date.accepted2024-07-18-
dc.contributor.author-college管理學院-
dc.contributor.author-dept國際企業學系-
dc.date.embargo-lift2029-07-15-
顯示於系所單位:國際企業學系

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