Please use this identifier to cite or link to this item: https://ah.lib.nccu.edu.tw/handle/140.119/51390
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dc.contributor.advisor徐士勛zh_TW
dc.contributor.advisorHsu, Shih Hsunen_US
dc.contributor.author張慈恬zh_TW
dc.contributor.authorChang, Ci Tianen_US
dc.creator張慈恬zh_TW
dc.creatorChang, Ci Tianen_US
dc.date2010en_US
dc.date.accessioned2011-10-05T06:52:15Z-
dc.date.available2011-10-05T06:52:15Z-
dc.date.issued2011-10-05T06:52:15Z-
dc.identifierG0098258013en_US
dc.identifier.urihttp://nccur.lib.nccu.edu.tw/handle/140.119/51390-
dc.description碩士zh_TW
dc.description國立政治大學zh_TW
dc.description經濟學系zh_TW
dc.description98258013zh_TW
dc.description99zh_TW
dc.description.abstract本篇論文擴充Ang et al. (2007)之基本架構,分別建構台灣各式月資料與季資料的物價指數預測模型,並進行預測以及實證分析。我們用以衡量通貨膨脹率的指標為 CPI 年增率與核心CPI 年增率。我們比較貨幣模型、成本加成模型、6 種不同設定的菲力浦曲線模型、3 種期限結構模型、隨機漫步模型、 AO 模型、ARIMA 模型、VAR 模型、主計處(DGBAS)、中經院(CIER) 及台經院(TIER) 之預測。藉由此研究,我們可以完整評估出文獻上常用之各式月資料及季資料預測模型的優劣。\n\n我們實證結果顯示,在月資料預測模型樣本外預測績效表現方面, ARIMA 模\n型對 2 種通貨膨脹率指標的樣本外預測能力表現最好。至於季資料預測模型樣本外預測績效表現, ARIMA 模型對未來核心 CPI 年增率的樣本外預測能力表現最好; 然而,對於 CPI 年增率為預測目標的預測模型則不存在最佳的模型。此外,實證分析中我們也發現本研究所建構的模型預測表現仍遜於主計處的預測,但部份模型的樣本外預測能力表現則比中經院與台經院的預測為佳。zh_TW
dc.description.abstractThis paper compares the forecasting performance of inflation in Taiwan. We conduct various inflation forecasting methods (models) for two inflation measures(CPI growth rate and core-CPI growth rate) by using monthly and quarterly data. Besides the models of Ang et al. (2007), we also consider some macroeconomic models for comparison. We compare some Monetary models, Mark-up models, six variants of Phillips curve models, three variants of term structure models, a Random walk model, an AO model, an ARIMA model, and a VAR model. We also compare the forecast ability of these model with three different survey forecasts (the DGBAS, CIER, and TIER surveys).\n\nWe summarized our findings as follows. The best monthly forecasting model for both inflation measures is ARIMA model. For quarterly core-CPI inflation, ARIMA model is also the best model; however, when comparing the quarterly forecasts for CPI inflation, there does not exist the best one. Besides, we also found that the DGBAS survey outperforms all of our forecasting methods/models, but some of our forecasting models are better than the CIER and TIER surveys in terms of MAE.en_US
dc.description.tableofcontents第一章 緒論 3\n1.1 研究動機與目的 3\n1.2 研究架構 6\n第二章 文獻回顧 7\n2.1 國外通貨膨脹率預測相關文獻探討 7\n2.2 國內通貨膨脹率預測相關文獻探討 14\n第三章 實證模型建立 16\n3.1 總體經濟模型 16\n3.1.1 貨幣模型 16\n3.1.2 成本加成模型 16\n3.1.3 菲力浦曲線模型 18\n3.1.4 期限結構模型 19\n3.2 時間序列模型 20\n3.2.1 隨機漫步模型 20\n3.2.2 ARIMA 模型 20\n3.2.3 VAR 模型 22\n第四章 研究方法 23\n4.1 ADF 單根檢定 23\n4.2 共整合檢定 24\n4.3 Hodrick-Prescott 濾器 26\n4.4 評估預測模型準則 27\n4.4.1 調整後判定係數 27\n4.4.2 絕對平均誤差 27\n4.4.3 均誤差平方根 27\n4.5 評估預測模型檢定 28\n第五章 證結果與分析 29\n5.1 資料來源與說明 29\n5.1.1 資料來源 29\n5.1.2 研究期間 29\n5.1.3 研究對象 30\n5.2 月資料預測模型實證分析 32\n5.2.1 ADF 單根檢定與共整合檢定 32\n5.2.2 模型配適能力比較 33\n5.2.3 模型樣本外預測績效評估 34\n5.3 季資料預測模型實證分析 36\n5.3.1 ADF 單根檢定與共整合檢定 36\n5.3.2 模型配適能力比較 37\n5.3.3 模型樣本外預測績效評估 38\n5.4 與其他文獻結果作比較 41\n第六章 結論 42\n圖 43\n表 44\n參考文獻 63\n附錄 67zh_TW
dc.language.isoen_US-
dc.source.urihttp://thesis.lib.nccu.edu.tw/record/#G0098258013en_US
dc.subject通貨膨脹率預測zh_TW
dc.subject樣本外預測zh_TW
dc.subject貨幣模型zh_TW
dc.subject成本加成模型zh_TW
dc.subject菲力浦曲線zh_TW
dc.subject期限結構zh_TW
dc.subject隨機漫步模型zh_TW
dc.subjectARIMA 模型zh_TW
dc.subjectVAR 模型zh_TW
dc.subjectForecasting inflationen_US
dc.subjectout-of-sample forecasten_US
dc.subjectmonetary modelen_US
dc.subjectmark-up modelen_US
dc.subjectPhillips curveen_US
dc.subjectterm structureen_US
dc.subjectrandom walk modelen_US
dc.subjectARIMA modelen_US
dc.subjectVAR modelen_US
dc.title台灣消費者物價指數的預測評估與比較zh_TW
dc.titleThe evaluations and comparisons of consumer price index`s forecasts in Taiwanen_US
dc.typethesisen
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