透過您的圖書館登入
IP:34.201.37.128
  • 學位論文

資料探勘應用於資訊家電之一對一行銷之研究

The Research of Data Mining Techniques Applied To One to One Marketing of Information Appliances

指導教授 : 廖述賢
共同指導教授 : 劉艾華(Ay-Hwa Liou)

摘要


隨著近年來的資訊匯流發展趨勢和資訊家電的蓬勃發展,加上持續的網路科技爆炸,3C產業(電腦、通訊和電子產品)的產品已由以往的昂貴奢侈品變成了21世紀大眾日常生活的平價必需品。這項資訊革命伴隨著現今發熱的全球化透明市場效應不但大幅的提昇了3C產業內的競爭困難,且由於科技產品、新購買和付費方法、激烈的競爭和更多的行銷管道降低了廣告和大眾行銷法手的有效性,因此如今人們需要的是個人行銷,又稱為一對一行銷。 因此,在當下環境想達到雙贏局面的業者們必須找到方式使其產品和服務差異化,並且滿足顧客的需求和慾望,提昇顧客滿意度,進而提昇企業利潤。 此研究的目的為協助3C產業業者透過有效的顧客資料使用和分析下在目前高透明化及高競爭環境中達到該雙贏策略,進而提昇其競爭力。 本研究所建立的顧客資料庫透過數種資料探勘技術的應用,把大量的顧客資料庫作處理,分析,理解和視覺化,使其從無意義的資料轉換為企業有價值的寶貴知識。本研究所使用的資料採礦分析方法包含了Apriori演算法、Two-step集群分析和CART決策樹。 透過所產出之分析,以顧客為導向,擬定策略、行銷手法和新產品開發之建議,並提出對業者之管理意涵及研究結論。

並列摘要


As information technologies converges and information devices become more powerful, along with the continuing network technology’s boom, the 3C (Computer, Communication, and Consumer electronics) industry’s products have became from a luxurious product to an essential product of daily needs for most people in the 21st century. This digital revolution accompanied with today’s increasingly globalized market have not only raised the competition difficulty within the 3C industry, but also lowered the effectiveness of the traditional mass marketing due to changing households, complex technology-based products, new ways to shop and pay, intense competition, additional channels, and declining advertising effectiveness. Personal marketing is what the customers want nowadays. Accordingly, practitioners who want to reach a win-win strategy under such conditions must somehow distinguish their products and services from those of their competitors, and increase customers’ satisfaction by fulfilling their needs and preferences, thus obtaining higher loyalties and profits. The purpose of this research was to assist marketers of 3C industry at improving their competitiveness by reaching such win-win strategy in today’s highly competitive markets through effective utilization of customers’ data. This research has built a relational database and utilized various data mining techniques to help analyze, understand, and visualize the huge amounts of stored data about customers. Valuable information, knowledge patterns and rules have been extracted, analyzed, and interpreted from customers’ database by using Apriori algorithmn, Two-step clustering analysis, and CART (Classification and Regression Trees) as needed. Consequently, reports, conclusions, and map of marketing have been drawn at the end suggesting to the marketers the need to obtain customer knowledge and feedback from the demand side and use them as a knowledge resource for establishing suitable one to one marketing offers, mix of products, and future product developments.

參考文獻


Agrawal, R., Imilienski, T., & Swami, A. (1993). Mining Association Rules between Sets of Items in Large Database. Proceedings of the 1993 ACM SIGMOD International Conference on Management of Data, 207-216.
Bohrnstedt, G. W. (1970). Attitude measurement. Chicago: Rand McNally.
Boutsinas, B. & Gnardellis, T. (2002). On distributing the clustering process. Pattern Recognition Letters, 23, 999-1008.
Chang, L. Y., & Chen, W. C. (2005). Data mining of tree-based models to analyze freeway accident frequency. Journal of Safety Research, 36, 365-375.
Changchien, S. W., Lee, C. F., & Hsu, Y. J. (2004). On-line Personalized Sales Promotion in Electronic Commerce. Expert Systems with Applications, 27, 35-52.

延伸閱讀