Please use this identifier to cite or link to this item: https://ah.lib.nccu.edu.tw/handle/140.119/136571
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dc.contributor.advisor林靖<br>李慧琳zh_TW
dc.contributor.advisorLin, Jin<br>Lee, Huey-Linen_US
dc.contributor.author杜婉瓊zh_TW
dc.contributor.authorDu, Wan-Qiongen_US
dc.creator杜婉瓊zh_TW
dc.creatorDu, Wan-Qiongen_US
dc.date2021en_US
dc.date.accessioned2021-08-04T08:01:22Z-
dc.date.available2021-08-04T08:01:22Z-
dc.date.issued2021-08-04T08:01:22Z-
dc.identifierG0108258048en_US
dc.identifier.urihttp://nccur.lib.nccu.edu.tw/handle/140.119/136571-
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.description108258048zh_TW
dc.description.abstract自中美科技戰爆發以來,美國制裁了包括華為和中芯國際在內的多家中國半導體公司以阻止其在該產業的發展,對中國半導體產業產生巨大影響。中國政府也採取多項政策以扶持半導體產業的國產化。因應經濟事件的發生和一系列政策的出台,中國半導體產業股票發生巨大波動。本研究以該研究背景出發,欲從產業的角度探討中國半導體產業鏈(上游對中游、中游對下游)股價波動關係。本研究運用GARCH-MIDAS模型實證分析2016年11月1日至2021年3月25日中國半導體產業鏈之外溢效果。全樣本期間涵蓋中美科技戰與COVID-19兩個事件。本研究蒐集八家IC設計公司、兩家晶圓代工公司以及三家封裝測試廠共十三家半導體上市公司股票收盤價數據,並根據公司年度報表的「業務概要」裡公司目前能實現的工藝技術依據半導體製程構建中國半導體供應鏈。根據GARCH-MIDAS模型實證結果顯示,在中美科技戰期間,大部分IC設計公司的已實現波動會對中游晶圓代工公司產生長期正向的波動外溢效果;中游晶圓代工廠的低頻報酬率波動會對下游封裝測試廠商產生負向的波動外溢效果。上述證實了半導體垂直供應鏈之間存在股價波動外溢效果,因此當投資人在做投資組合時,應考慮到半導體產業投資標的之間的長期波動關係,以便進行相應套利和避險的舉措。zh_TW
dc.description.abstractSince the outbreak of the US-China scientific and technological war, the United States has imposed sanctions on several Chinese semiconductor companies, including Huawei and SMIC, preventing their development in the industry. It has had a huge impact on the Chinese semiconductor industry. Due to the occurrence of US-China scientific and technological war and a series of Chinese government’s policies, the stock price of China`s semiconductor industry fluctuated greatly. The purpose of this paper is to explore the fluctuation among various segments of China`s semiconductor industry chain (upstream to midstream and midstream to downstream) from the perspective of industry. This study collected the data from November 1, 2016 to March 25, 2021 and applied GARCH-MIDAS model to analyze the spillover effects of semiconductor industry chain. In this study, we collect the closing price of 13 listed Semiconductor Companies from eight IC design companies, two wafer foundry companies and three Assembly and testing companies, and build a Chinese semiconductor supply chain based on the current technology that the companies can be achieved in the annual report of the company. Based on the GARCH-MIDAS model, the empirical results show that most of the IC design companies’ fluctuations will have significantly positive volatility spillover effects on wafer foundry companies in the long term during the US-China scientific and technological war. Low-frequency fluctuations in the Assembly and testing companies will have significantly negative fluctuation spillover effects on Assembly and testing companies in the long term. The results confirm the spillover effect of stock price fluctuations within vertical semiconductor supply chains. Therefore, when making a portfolio, investors should consider the long-term fluctuation relationship among different links of semiconductor industry for the purpose of making appropriate arbitrage and hedge measures.en_US
dc.description.tableofcontents謝辭 ⅰ\n摘要 ⅱ\nAbstract ⅲ\n目錄 ⅴ\n表次 ⅵ\n圖次 ⅷ\n第一章 緒論 1\n第一節 研究背景與動機 1\n第二節 文獻缺口 3\n第三節 研究目的 4\n第四節 研究框架 5\n第二章 文獻回顧 6\n第一節 半導體產業相關文獻 6\n第二節 供應鏈相關文獻 7\n第三節 GARCH-MIDAS相關文獻 10\n第三章 研究方法 13\n第一節 樣本數據蒐集 13\n第二節 研究設計 16\n第三節 GARCH-MIDAS實證模型 19\n第四節 研究假說 20\n第四章 實證結果 27\n第一節 資料描述與敘述性統計 27\n第二節 定態分析與條件異質變異檢定 29\n第三節 GARCH-MIDAS模型實證結果——全樣本時期 32\n第四節 GARCH-MIDAS模型實證結果——子樣本時期 40\n第五章 結論與建議 55\n第一節 研究發現與經濟意涵 55\n第二節 研究限制與建議 57\n參考文獻 58\n附錄1 61\n附錄2 62zh_TW
dc.format.extent3269552 bytes-
dc.format.mimetypeapplication/pdf-
dc.source.urihttp://thesis.lib.nccu.edu.tw/record/#G0108258048en_US
dc.subjectGARCH-MIDAS模型zh_TW
dc.subject中美科技戰zh_TW
dc.subject外溢效果zh_TW
dc.subject中國半導體產業zh_TW
dc.subject股價波動zh_TW
dc.subjectGARCH-MIDAS modelen_US
dc.subjectUS-China scientific and technological waren_US
dc.subjectspillover effecten_US
dc.subjectChinese semiconductor industryen_US
dc.subjectstock price fluctuationen_US
dc.title探討中國半導體供應鏈上中下游股價之波動外溢效果zh_TW
dc.titleExploring the volatility spillover effects among the stock price of the Upper, Middle and Lower Stream of Semiconductor Industry in Chinaen_US
dc.typethesisen_US
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dc.identifier.doi10.6814/NCCU202101157en_US
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