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研究生: 吳心蕙
Wu, Shin-huey
論文名稱: 以基於約略集合之關聯規則探勘法定義科技產業聚落不動產租賃定價規則
The Rough Set Theory Based Association Rule Mining for Pricing Rule of Real Estates in Technology Clusters
指導教授: 黃啟祐
Huang, Chi-Yo
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: 2017
畢業學年度: 105
語文別: 英文
論文頁數: 101
中文關鍵詞: 不動產租賃市場多準則決策分析科技產業聚落定價策略約略集合理論
英文關鍵詞: The Rental Market of Real Estate, Technology Clustering, Price-Making Strategy, Multi-Criteria Decision Analysis, Rough Set Theory
DOI URL: https://doi.org/10.6345/NTNU202202923
論文種類: 學術論文
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  • 近年來亞洲地區國家產業群聚蓬勃發展,如中國大陸、東南亞、臺灣等…,對亞洲整體經濟發展有著重大影響。因此相對帶動產業群聚地區居住需求,然而,即使在產業聚落工作,卻也不見得能夠負擔高漲的房價,進而以租賃取代購買滿足居住的需求,過往學者著重於不動產買賣價值分析的研究較多,較少針對環境對於租賃價格的定義進行資料分析並且加以研究規則,因此,本研究依據大數據資料探勘的基礎,發展「科技產業聚落不動產租賃定價規則」的規則導向,期望能藉由規則的定義,提供科技產業聚落不動產租賃市場中的消費需求者更精準之定價規則供其參考。同時利用大數據資料及約略集合理論(Rough Set Theory)推導科技產業聚落周邊不動產租賃定價規則,使房仲業者定價能夠更趨於精準。本研究之主要內容旨在探索科技產業聚落不動產租賃市場之價格定義規則。有鑑於此,本研究將以消費者租賃需求期望偏好及基於約略集合之關聯規則探勘法,發展出符合科技產業聚落租賃房屋市場產品之顧客消費期望偏好之規則結果。本研究將依據台北市某大房屋租賃公司所擁有之歷史交易資料庫中,探討內湖科學園區及南港科學園區周邊物件之區位因素與租賃價格,實證本研究所推導之定價規則,可作為房屋租賃業者定價之依據。

    There has been a boom in various aspects of industries in Mainland China, South East Asia and Taiwan recently. It has drastically influenced the entire economic development of Asia. Therefore, the need for residence of Technology clustering is gradually ascending; however, the expensive housing price is not affordable though working in the industrial clusters. That is to say, purchasing will be replaced by renting to meet the residential requirement. The study of real estate emphasized on analysis of price more but less on the analysis of rental pricing toward environment. Thus, the study is to develop the Decision Support System concerning “the Rental Rules of the real estate in Technology Clustering” on the basis of data-probing. By the foundation and schematization of this system and rules, we can supply references for consumers from the rental market of the real estate in technology clustering with greater accuracy in decision-making and assessing or evaluating; meanwhile, we use the big data to infer the rental rules of the real estate in technology clustering which makes the price of realty industry more accurate. The leading content of this study is to construct the Decision Support rules of the tenant consuming preference regarding the rental market of the real estate in technology clustering. Whereas, the study will construct the decision support system of the clients consuming preference in accordance with the rental market of the real estate in technology clustering on the basis of clients' preferences and the Association Rule of Rough Set Theory. The study will probe the transaction record database of one major house-renting company in Taipei that focuses on the location factors and lease prices of neighboring objects in Neihu Science Park, to prove feasibility of this study and the price-making rules, which can be the very dependence of price-making for realty industry.

    摘要 i Abstract ii List of Table vi List of Figure viii Chapter 1 Introduction 1 1.1 Research Background 1 1.2 Research Motivations 3 1.3 Research Purposes 4 1.4 Research Method specialist 6 1.5 Research Framework 7 1.6 Limitations 8 1.7 Thesis Structure 9 Chapter 2 Literature Review 11 2.1 Association Rule Mining 12 2.2 General Features of Real Estate Market Analysis 14 2.3 Industrial Cluster 22 Chapter 3 Research Method 25 3.1 Modified Delphi Method 25 3.2 Rough Set Theory (RST) 30 3.3 Dominance based rough set theory (DRSA) 37 Chapter 4 Empirical study 41 4.1 The Determination of Factors and Alternatives for real estate by Modified Delphi 41 4.2 Preparation of the information table 47 4.3 Rough set theory 52 4.4 DRSA 66 4.5 Apriori (Association) 80 Chapter 5 Discussion 89 5.1 Managerial Implications 89 5.2 The comparison of Research Method 89 Chapter 6 Conclusions 93 References 95

    Adler, M., & Ziglio, E. (1996). Gazing into the oracle: the Delphi method and its application to social policy and public health. Jessica Kingsley Publishers.
    Armon, K., Stephenson, T., MacFaul, R., Eccleston, P., & Werneke, U. (2001). An evidence and consensus based guideline for acute diarrhoea management. Archives of Disease in Childhood, 85(2), 132-142.
    Ballard, C. L., & Lee, J. (2007). Internet purchases, cross-border shopping, and sales taxes. National Tax Journal, 711-725.
    Behrens, A., Doyle, J. J., Stern, L., Chuck, R. S., McDonnell, P. J., Azar, D. T, Laibson, P. R. (2006). Dysfunctional tear syndrome: a Delphi approach to treatment recommendations. Cornea, 25(8), 900-907.
    Blow, A.J. & Sprenkle, D.H. (2001). Common Factor Across Theories of Marriage and Family Therapy:A Modified Delphi Study. Journal of Marital and Family Theorpy. 27(3), p385-401.
    Brusco, Sebastiano, (1990). The idea of the industrial district: its genesis. Industrial districts and inter-firm co-operation in Italy. 10-19
    Carr, Norman J, Cecil, Thomas D, Mohamed, Faheez, Sobin, Leslie H, Sugarbaker, Paul H, González-Moreno, Santiago, Taflampas, Panos, Chapman, Sara, Moran, Brendan J, (2016). A consensus for classification and pathologic reporting of pseudomyxoma peritonei and associated appendiceal neoplasia: the results of the Peritoneal Surface Oncology Group International (PSOGI) modified Delphi process. The American journal of surgical pathology, 14-26
    Carnes, D., Mullinger, B., & Underwood, M. (2010). Defining adverse events in manual therapies: a modified Delphi consensus study. Manual therapy, 15(1), 2-6.
    Chakravarti, A., Vasanta, B., Krishnan, A., & Dubash, R. (1998). Modified Delphi methodology for technology forecasting case study of electronics and information technology in India. Technological Forecasting and Social Change, 58(1), 155-165.
    Christiansen, V. (2003). Cross-border shopping and tax structure: EPRU Working Paper Series.
    Clayton, M. J. (1997). Delphi: a technique to harness expert opinion for critical decision‐making tasks in education. Educational Psychology, 17(4), 373-386.
    Dalkey, N., & Helmer, O. (1963). An experimental application of the Delphi method to the use of experts. Management science, 9(3), 458-467.
    Darshit Parmar, T. W. , & Blackhurst, J. (2007). MMR: An algorithm for clustering categorical data using rough set theory. Data and Knowledge Engineering, 63 (3), 879–893.
    Dubois, D., Prade, H., (1992): Putting rough sets and fuzzy sets together. In:Słowiński, R. (ed.) Intelligent Decision Support. Handbook of Applications and Advances of the Sets Theory, pp. 203–232.
    Forester, J., (1994) Bridging interests and community: Advocacy planning and the challenges of deliberate democracy. Journal of the American Planning Association, Vol. 60, 153-158
    Giliberto, Michael, (1990). The Journal of Real Estate Research, 259-263
    Gordon, T. J. (1994). The delphi method. Futures research methodology,Klement, E.P., Mesiar, R., Pap, E.: Triangular Norms. Kluwer, Dordrecht. 1-33.
    Greco, S., Matarazzo, B., Słowiński, R., (2001). Rough sets theory for multicriteria decision analysis. European Journal of Operational Research 129, 1–47 (2001)
    Greco, S., Matarazzo, B., Słowiński, R. (2002). Multicriteria classification by dominance-based rough set approach. In: W.Kloesgen and J.Zytkow (eds.), Handbook of Data Mining and Knowledge Discovery, Oxford University Press. 26-64.
    Greco, S., Matarazzo, B., Słowiński, R. (2005): Decision rule approach. In: Figueira, J., Greco, S., Erghott, M. (eds.) Multiple Criteria DecisionAnalysis: State of the Art Surveys, Springer, Heidelberg pp. 507–563.
    Green, K. C., Armstrong, J. S., & Graefe, A. (2007). Methods to elicit forecasts from groups: Delphi and prediction markets compared.
    Humphrey, John, Schmitz, Hubert, (2000). Governance and upgrading: linking industrial cluster and global value chain research, Institute of Development Studies Brighton, 1-37.
    Hsu, Chia-Chien, Sandford, Brian A.(2007) The Delphi technique: making sense of consensus.Practical assessment, research & evaluation, 1-8.
    John Cotter, Richard Roll. (2014). A Comparative Anatomy of Residential REITs and Private Real Estate Markets: Returns, Risks and Distributional Characteristics
    Joseph-Williams, Natalie, Newcombe, Robert, Politi, Mary, Durand, Marie, Anne, Sivell, Stephanie, Stacey, Dawn, O’Connor, Annette, Volk, Robert J, Edwards, Adrian, Bennett, Carol. (2014). Toward minimum standards for certifying patient decision aids: a modified Delphi consensus process, Medical Decision Making, 699-710
    Jowsey, Ernie. (2011)Real estate economics,39-56.
    Liu, C. H., Tzeng, G. H., & Lee, M. H. (2012). Improving tourism policy implementation–The use of hybrid MCDM models. Tourism Management, 33(2), 413-426.
    Meesapawong, P., Rezgui, Y., & Li, H. (2014). Planning innovation orientation in public research and development organizations: using a combined Delphi and analytic hierarchy process approach. Technological Forecasting and Social Change, 87, 245-256.
    Murry Jr, J. W., & Hammons, J. O. (1995). Delphi: A Versatile Methodology for Conducting Qualitative Research. Review of Higher Education, 18(4), 423-436.
    Nikensari, Sri Indah, Mukhtar, Saparuddin, (2014). The Viability of Industry in Industrial Cluster: Still Hopes for Growth, 1-18.
    Phillips-Wren, G. (2010). Advances in Intelligent Decision Technologies: Proceedings of the Second KES International Symposium IDT 2010. Springer, (4), 89-125.
    Padmore, Tim, Gibson, Hervey, (1998). Modelling systems of innovation: II. A framework for industrial cluster analysis in regions, Research policy, 625-641.
    Rossouw, A., Hacker, M., & de Vries, M. J. (2011). Concepts and contexts in engineering and technology education: An international and interdisciplinary Delphi study. International Journal of Technology and Design Education, 21(4), 409-424.
    Scott, D. G., Washer, B. A., & Wright, M. D. (2006). A Delphi study to identify recommended biotechnology competencies for first-year/initially certified technology education teachers. Co-sponsored by International Technology Education Association Council on Technology Teacher Education, 17(2).
    Shen, K.-Y., & Tzeng, G.-H. (2015). Combining DRSA decision-rules with FCA-based DANP evaluation for financial performance improvements. Technological and Economic Development of Economy, 1-30.
    Shan N. W. Ziarko, (1995)Data-Base acquisition an incremental modification of classifi- cation rules. Computational Intelligence, pp. 357-368
    Shan N., Rule Discovery from Data using decision matrices Master degree Thesis. University of Regina, 1995
    Shaojiang, L., Jiaying, C., & Xingping, C. (2015). Research on tourism industry competitiveness based on structural equation model.
    Shen, K.-Y., & Tzeng, G.-H. (2015). Combining DRSA decision-rules withFCA-based DANP evaluation for financial performance improvements. Technological and Economic Development of Economy, 1-30.
    Slimani, Thabet, (2015). Class Association Rules Mining based Rough Set Method, 1-6.
    Słowiński, R., Greco, S., Matarazzo, B. (2005). Rough set based decision support. Chapter 16 [in]: E.K. Burke and G. Kendall (eds.), Search Methodologies: Introductory Tutorials in Optimization and Decision Support Techniques, Springer-Verlag, New York 475–527.
    Skulmoski, Gregory, Hartman, Francis, Krahn, Jennifer. (2007). The Delphi method for graduate research. Journal of Information Technology Education: Research, 1-21.
    Skowron A., (1995)Extracting laws from decision tables:A Rough Set approach Computational Intelligence, vol.11 n. 2,.pp. 371-387
    Sung, W. (2001). Application of Delphi method, a qualitative and quantitative analysis, to the healthcare management. Journal of Healthcare Management, 2(2), 11-19.
    Tzeng, G. H., & Huang, C. Y. (2012). Combined DEMATEL technique with hybrid MCDM methods for creating the aspired intelligent global manufacturing & logistics systems. Annals of Operations Research, 1-32.
    Özer, K. O., Latif, H., Sarıışık, M., & Ergün, Ö. (2012). International Competitive Advantage of Turkish Tourism Industry: A Comperative Analyse of Turkey and Spain By Using The Diamond Model of M. Porter. Procedia-Social and Behavioral Sciences, 58, 1064-1076.
    Winkler, J., Kuklinski, C. P. J.-W., & Moser, R. (2015). Decision making in emerging markets: The Delphi approach's contribution to coping with uncertainty and equivocality. Journal of Business Research, 68(5), 1118-1126.
    Wu, C.-R., Lin, C.-T., & Chen, H.-C. (2007). Optimal selection of location for Taiwanese hospitals to ensure a competitive advantage by using the analytic hierarchy process and sensitivity analysis. Building and Environment, 42(3), 1431-1444.
    Wu, Jing, Gyourko, Joseph, Deng, Yongheng, (2015). Evaluating the risk of Chinese housing markets: What we know and what we need to know, China Economic Review, 91-114.
    Wenfen, Z., Min, T., & Jiaqi, Y. (2013). Choosing the Mode for FDI Entry to China's Port Market based on Two-stage Game between the Foreign-funded Enterprises and Government. Procedia-Social and Behavioral Sciences, 96, 704-713.
    Wyatt, PJ. (1997) The Development of a GIS-based Property Information System for Real Estate Valuation, International Journal of Geographical Information Science, 11(5): 435-450
    Z. Pawlak, (1984) Rough classification. International Journal of Man–Machine Studies, 20 (5), pp. 469-483

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