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請用此 Handle URI 來引用此文件: http://tdr.lib.ntu.edu.tw/jspui/handle/123456789/85664
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dc.contributor.advisor何泰寬zh_TW
dc.contributor.advisorTai-Kuang Hoen
dc.contributor.author胡育嘉zh_TW
dc.contributor.authorYu-Jia Huen
dc.date.accessioned2023-03-19T23:20:56Z-
dc.date.available2023-12-27-
dc.date.copyright2022-07-07-
dc.date.issued2022-
dc.date.submitted2002-01-01-
dc.identifier.citation王景南, 葉錦徽, & 林宗漢. (2011). 台灣房市存在價格泡沫嗎?. 經濟論文, 39(2), 61-89.
朱浩榜. (2021). 即時認定台灣的景氣轉折. 經濟論文叢刊, 49(3), 335-370.
張金鶚, 陳明吉, 鄧筱蓉, & 楊智元. (2009). 台北市房價泡沫知多少?-房價 vs. 租金, 房價 vs. 所得. 住宅學報, 18(2), 1-22.
楊鈞喬. (2021). 房市泡沫預測: 長時期的總體經濟歷史資料和隨機森林演算法能夠告訴我們甚麼?. 國立台灣大學經濟學系碩士論文.
鄧筱蓉. (2017). 房市泡沫與總體經濟關係. 住宅學報, 26(2), 27-50.
Bashyal, S., & Venayagamoorthy, G. K. (2008). Recognition of facial expressions using Gabor wavelets and learning vector quantization. Engineering Applications of Artificial Intelligence, 21(7), 1056-1064.
Bluwstein, K., Buckmann, M., Joseph, A., Kapadia, S., & Simsek, Ö. (2021). Credit growth, the yield curve and financial crisis prediction: evidence from a machine learning approach.
Brockett, P. L., Golden, L. L., Jang, J., & Yang, C. (2006). A comparison of neural network, statistical methods, and variable choice for life insurers' financial distress prediction. Journal of Risk and Insurance, 73(3), 397-419.
Davig, T., & Hall, A. S. (2019). Recession forecasting using Bayesian classification. International Journal of Forecasting, 35(3), 848-867.
Demyanyk, Y., & Van Hemert, O. (2011). Understanding the subprime mortgage crisis. The review of financial studies, 24(6), 1848-1880.
Englund, P., Hwang, M., & Quigley, J. M. (2002). Hedging housing risk. The Journal of Real Estate Finance and Economics, 24(1), 167-200.
Giusto, A., & Piger, J. (2017). Identifying business cycle turning points in real time with vector quantization. International Journal of Forecasting, 33(1), 174-184.
Hamilton, J. D. (2018). Why you should never use the Hodrick-Prescott filter. Review of Economics and Statistics, 100(5), 831-843.
Hosmer Jr, D. W., Lemeshow, S., & Sturdivant, R. X. (2013). Applied logistic regression. John Wiley & Sons.
Jagric, V., Kracun, D., & Jagric, T. (2011). Does non-linearity matter in retail credit risk modeling?. Finance a Uver: Czech Journal of Economics & Finance, 61(4).
Ji, Y., Hao, J., Reyhani, N., & Lendasse, A. (2005, June). Direct and recursive prediction of time series using mutual information selection. In International Work-Conference on Artificial Neural Networks (pp. 1010-1017). Springer, Berlin, Heidelberg
Jordà, Ò., Schularick, M., & Taylor, A. M. (2015). Leveraged bubbles. Journal of Monetary Economics, 76, PP. 1-20
Jordà, Ò., Schularick, M., & Taylor, A. M. (2017). Macrofinancial history and the new business cycle facts. NBER macroeconomics annual, 31(1), 213-263.
Kauko, T. (2009). Classification of residential areas in the three largest Dutch cities using multidimensional data. Urban studies, 46(8), 1639-1663.
Kohonen, T. (1990). The self-organizing map. Proceedings of the IEEE, 78(9), 1464-1480.
Kohonen, T. (2001). Learning vector quantization. In Self-organizing maps (pp. 245-261). Springer, Berlin, Heidelberg.
Lanzarini, L. C., Monte, A. V., Bariviera, A. F., & Santana, P. J. (2017). Simplifying credit scoring rules using LVQ+ PSO. Kybernetes.
Pauws, S. C., & Biehl, M. (2015). Insightful stress detection from physiology modalities using learning vector quantization. Neurocomputing, 151, 873-882.
Phillips, P. C., Wu, Y., & Yu, J. (2011). Explosive behavior in the 1990s Nasdaq: When did exuberance escalate asset values?. International economic review, 52(1), 201-226.
Ravn, M. O., & Uhlig, H. (2002). On adjusting the Hodrick-Prescott filter for the frequency of observations. Review of economics and statistics, 84(2), 371-376.
Ward, F. (2017). Spotting the danger zone: Forecasting financial crises with classification tree ensembles and many predictors. Journal of Applied Econometrics, 32(2), 359-378.
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dc.identifier.urihttp://tdr.lib.ntu.edu.tw/jspui/handle/123456789/85664-
dc.description.abstract本研究目的為建立一個房市泡沫的預警系統,使用長時間的總體經濟歷史資料,並使用學習向量量化演算法來建構預測的模型,以提供政策制定者或投資人作為參考的依據,若預測的投票率有逐步上升或是過高時,便能考慮在泡沫發生前,提早實施總體審慎政策。
首先,本文使用18個已開發國家自1870年起的總體經濟歷史資料,並使用雙重泡沫認定法來認定泡沫發生,分別為房價快速上升與房價向下修正,而本文主要以房價快速上升所認定的泡沫作為被解釋變數,解釋變數則是選用29個總體經濟指標的年資料。第二,在重複一百次模型訓練後,得到預測泡沫發生的投票率,並使用向後特徵淘汰法與向前特徵選取法來挑選解釋變數,得到最適的17個解釋變數。第三,評估LVQ模型的模型表現,以及比較傳統的Logit模型,實證發現LVQ的模型表現較Logit模型優秀。最後,以台灣近十年的房市為例,使用18個國家的數據來建構預測模型,得到台灣發生泡沫的預測投票率,其中在2020年的投票率為近十年中最高,顯示此時的房市相較其他時期熱絡。
zh_TW
dc.description.abstractThis research establishes an early warning system for housing bubbles, using long-term macroeconomic history data and applying the learning vector quantitative algorithm to construct a prediction model as a reference for politicians, policymakers, and investors. If the predicted vote rate gradually increases or is too high, then a macroprudential policy can be implemented early before the bubble appears.
This paper first presents macroeconomic historical data of 18 developed countries since 1870 and sets up the double bubble identification method to identify the occurrence of bubbles - namely, the rapid rise in housing prices and their subsequent downward revision. Bubbles represent the dependent variables, and the independent variables are annual data of 29 macroeconomic indicators. Second, after repeating the model training 100 times, we are able to obtain the vote rate of predicting a bubble’s occurrence. Backward feature elimination and forward feature selection help select the independent variables, in which we list the 17 most suitable independent variables. Third, we evaluate the performance of the LVQ model and that of the traditional Logit model and empirically find that the former is better than the latter. Finally, taking the housing market in Taiwan in the past ten years as an example and utilizing data from 18 countries to construct a forecast model to obtain the predicted vote rate of a domestic bubble, results show that the vote rate of a bubble in the year 2020 is the highest over the past ten years, indicating that the housing market at that time was relatively hotter than in other periods.
en
dc.description.provenanceMade available in DSpace on 2023-03-19T23:20:56Z (GMT). No. of bitstreams: 1
U0001-2206202201064500.pdf: 6248956 bytes, checksum: 5de5dce1dfe1a28953b2b2ca2e32cbb9 (MD5)
Previous issue date: 2022
en
dc.description.tableofcontents口試委員會審定書 i
誌謝 ii
摘要 iii
Abstract iv
目錄 v
圖目錄 vii
表目錄 viii
第一章 緒論 1
第二章 方法論 3
第一節 學習向量量化演算法 3
第二節 LVQ實證文獻 6
第三章 資料 9
第一節 被解釋變數 9
第二節 解釋變數 12
第四章 實證結果 15
第一節 模型設定 15
第二節 模型評估與變數選取 17
一、 模型評估準則 17
二、 變數選取準則 18
第三節 變數選取結果 20
第四節 模型表現 23
第五節 模型比較與穩健性 26
一、 Logit模型方法論 26
二、 模型比較結果 27
三、 穩健性 28
第六節 台灣實證與政策討論 30
第五章 結論 33
參考文獻 69
附錄一 LVQ訓練範例MATLAB程式碼: 72
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dc.language.isozh_TW-
dc.subject房市泡沫預測zh_TW
dc.subject向後特徵選取法zh_TW
dc.subject遞迴式預測zh_TW
dc.subject信噪比zh_TW
dc.subject向後特徵選取法zh_TW
dc.subject房市泡沫預測zh_TW
dc.subject學習式向量量化演算法zh_TW
dc.subjectLogit模型zh_TW
dc.subjectLogit模型zh_TW
dc.subject信噪比zh_TW
dc.subject遞迴式預測zh_TW
dc.subject學習式向量量化演算法zh_TW
dc.subjectlogit modelen
dc.subjectlearning vector quantizationen
dc.subjecthousing bubbles predictionen
dc.subjectbackward feature eliminationen
dc.subjectrecursive predictionen
dc.subjectsignal to noise ratioen
dc.subjectlogit modelen
dc.subjectlearning vector quantizationen
dc.subjecthousing bubbles predictionen
dc.subjectbackward feature eliminationen
dc.subjectrecursive predictionen
dc.subjectsignal to noise ratioen
dc.title學習式向量量化演算法預測房市泡沫zh_TW
dc.titlePredicting a Housing Bubble: Perspectives from Learning Vector Quantizationen
dc.typeThesis-
dc.date.schoolyear110-2-
dc.description.degree碩士-
dc.contributor.coadvisor楊睿中zh_TW
dc.contributor.coadvisorJui-Chung Yangen
dc.contributor.oralexamcommittee王建強;唐震宏;楊茜文zh_TW
dc.contributor.oralexamcommitteeChien-Chiang Wang;Jenn-Hong Tang;Chien-Wen Yangen
dc.subject.keyword學習式向量量化演算法,房市泡沫預測,向後特徵選取法,遞迴式預測,信噪比,Logit模型,zh_TW
dc.subject.keywordlearning vector quantization,housing bubbles prediction,backward feature elimination,recursive prediction,signal to noise ratio,logit model,en
dc.relation.page74-
dc.identifier.doi10.6342/NTU202201051-
dc.rights.note同意授權(全球公開)-
dc.date.accepted2022-06-25-
dc.contributor.author-college社會科學院-
dc.contributor.author-dept經濟學系-
dc.date.embargo-lift2024-06-28-
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