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  1. NTU Theses and Dissertations Repository
  2. 管理學院
  3. 財務金融學系
請用此 Handle URI 來引用此文件: http://tdr.lib.ntu.edu.tw/jspui/handle/123456789/37997
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dc.contributor.advisor蘇永成
dc.contributor.authorMing-Wei Hsuen
dc.contributor.author徐明瑋zh_TW
dc.date.accessioned2021-06-13T15:55:36Z-
dc.date.available2008-08-05
dc.date.copyright2008-08-05
dc.date.issued2008
dc.date.submitted2008-06-15
dc.identifier.citationReferences
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dc.identifier.urihttp://tdr.lib.ntu.edu.tw/jspui/handle/123456789/37997-
dc.description.abstract證券市場是否具有效率性,長期以來一直是學者們爭論的議題;而近年來諸多關於市場異常、行為投資學、投資心理學等之實證研究,卻也似乎與市場效率之說產生了矛盾。市場所呈現的樣貌即為所有投資人行為交互影響之總和,大部分的學者皆主張,這個總和的效果,足以將市場推升至效率的境界;然此推進的過程並非瞬間達成效率,本研究即致力於觀察、捕捉最大報酬個股之市場效率收斂過程。
首先我們以多元線性回歸模型檢驗同期或前期之買賣單不平衡對報酬率的影響。實證結果顯示,同期之買賣單不均衡對報酬率有顯著之正向影響;前一期的買賣單不平衡,對報酬之顯著影響,在沒有考慮當期時,其影響方向大抵為正,而在考慮當期後,前期買賣單不平衡對報酬的影響為負向關係。接著我們以GARCH(1,1)模型觀察同期買賣單不平衡對報酬率的影響,結果顯示其間有正顯著之關係。不論是線性回歸模型、抑或GARCH(1,1)模型,我們皆可觀察到市場效率之收斂過程,即隨著時間範圍的拉大,買賣單不平衡對報酬的影響力逐漸下降。
另外,我們也以GARCH(1,1)模型觀察股價波動性與買賣單不平衡之間的關係,研究顯示其關係並不顯著,表示場內專家(Specialist)對股價波動性的控制良好。接著,經由簡單線性回歸模性之實證顯示,小型股效果僅存在於多元線性回歸模型之買賣單不平衡變數之中,因此我們將其解釋為波動性影響的效果,而非小型股本身之效果。
最後,我們以買賣單不平衡為指標,嘗試發展出一套交易策略,雖然報酬率為正值,但仍無法擊敗最大報酬個股之原始報酬率。
zh_TW
dc.description.abstractMarket efficiency has been a debated topic in the field of finance for a long time, as a great amount of research on the topic of market anomalies and behavioral finance linked to psychology has been revealed. These conflicting topics can be reconciled by the concept of “aggregation.” All kinds of investors gathering together will push the market toward efficiency to the extent that no one could earn an abnormal profit by any trading strategies continuously. It is intuitive that efficiency cannot happen instantaneously in the real world. The central purpose of our study is to investigate the convergence process toward efficiency of daily top gainers in the stock market.
First of all, we examine the relation between returns and contemporaneous as well as lagged order imbalances by a multi-regression model. The empirical result shows that the contemporaneous imbalances have a significantly positive impact on returns, and the lagged-one imbalances also have a positive impact on returns disregarding the contemporaneous imbalances. But once we condition on the contemporaneous imbalances, the impact of the lagged-one imbalances on returns generally turns to be negative. Besides, we observe a positive relation between contemporaneous imbalances and returns by the use of a GARCH(1,1) model. The convergence process toward efficiency, whether in the multi-regression model or the GARCH(1,1) model, is observable. That is, the explanatory ability of order imbalances decreases as the time interval increases.
In addition, we examine the relation between volatility and order imbalances by a GARCH(1,1) model. The relation is not strong enough, suggesting that market makers do have a capable ability to control volatility of price movements. Moreover, we perform a simple regression model to investigate whether there is any relation between market capitalization and order imbalances. It is significant only in the imbalance variables obtained from the OLS regression model, showing that the effect comes from volatility but not small firm effect itself.
Finally, we try to build a trading strategy based on the indicator of order imbalances. This trading strategy earns a positive profit but still cannot beat the original open-to-close return of top gainers.
en
dc.description.provenanceMade available in DSpace on 2021-06-13T15:55:36Z (GMT). No. of bitstreams: 1
ntu-97-R95723055-1.pdf: 635952 bytes, checksum: 514a23826db5fbaac901d3ebafde7360 (MD5)
Previous issue date: 2008
en
dc.description.tableofcontentsCHAPTER 1 INTRODUCTION 1
1.1 MOTIVES AND PURPOSES 1
1.2 FRAMEWORK OF THE THESIS 7
CHAPTER 2 DATA AND METHODOLOGY 8
2.1 THE DATA 8
2.1.1 DATA SOURCES 8
2.1.2 DATA PROCESSING METHODS 8
2.1.3 DESCRIPTIVE STATISTICS 10
2.2 METHODOLOGY 11
2.2.1 UNCONDITIONAL LAGGED RETURN-ORDER IMBALANCE OLS MODEL 11
2.2.2 CONDITIONAL CONTEMPORANEOUS RETURN-ORDER IMBALANCE OLS MODEL 12
2.2.3 DYNAMIC RETURN-ORDER IMBALANCE GARCH(1,1) MODEL 12
2.2.4 DYNAMIC VOLATILITY-ORDER IMBALANCE GARCH(1,1) MODEL 14
2.2.5 SMALL FIRM EFFECT 14
CHAPTER 3 EMPIRICAL RESULTS 16
3.1 UNCONDITIONAL LAGGED RETURN-ORDER IMBALANCE OLS RELATION 16
3.2 CONDITIONAL CONTEMPORANEOUS RETURN-ORDER IMBALANCE OLS RELATION 18
3.3 DYNAMIC RETURN-ORDER IMBALANCE GARCH(1,1) RELATION 19
3.4 DYNAMIC VOLATILITY-ORDER IMBALANCE GARCH(1,1) RELATION 20
3.5 SMALL FIRM EFFECT 21
3.6 TRADING STRATEGY 22
CHAPTER 4 CONCLUSION 26
REFERENCES 29
dc.language.isoen
dc.subject市場效率zh_TW
dc.subject買賣單不均衡zh_TW
dc.subjectorder imbalanceen
dc.subjectmarket efficiencyen
dc.title最大報酬個股之市場效率收斂性zh_TW
dc.titleConvergence to Market Efficiency of Top Gainersen
dc.typeThesis
dc.date.schoolyear96-2
dc.description.degree碩士
dc.contributor.oralexamcommittee王耀輝,黃漢青
dc.subject.keyword買賣單不均衡,市場效率,zh_TW
dc.subject.keywordorder imbalance,market efficiency,en
dc.relation.page70
dc.rights.note有償授權
dc.date.accepted2008-06-15
dc.contributor.author-college管理學院zh_TW
dc.contributor.author-dept財務金融學研究所zh_TW
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