Implementing the Market Timing Strategy on Taiwan Stock Market: The Linear and Nonlinear Appraoches
碩士 === 國立政治大學 === 財務管理學系 === 87 === This research employs five predicting variables to implementing the market timing strategy. These five variables are E/P1, E/P2, B/M, CP and GM. The investment performances of market timing under a variety of investment horizons are examined. There ar...
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ndltd-TW-087NCCU03050062016-02-03T04:32:43Z http://ndltd.ncl.edu.tw/handle/21675985259966806160 Implementing the Market Timing Strategy on Taiwan Stock Market: The Linear and Nonlinear Appraoches 以線性與非線性模式進行市場擇時策略 Alex Yu 余文正 碩士 國立政治大學 財務管理學系 87 This research employs five predicting variables to implementing the market timing strategy. These five variables are E/P1, E/P2, B/M, CP and GM. The investment performances of market timing under a variety of investment horizons are examined. There are four different forecasting horizons, which are one-month, three-month, six-month, and twelve-month investment horizons. Both the linear approach and artificial neural networks are employed to forecasting the market. The artificial neural network is employed with a view to capture the non-linearity property embedded in the market. The results are summarized as follows. (1) Both the linearity and nonlinear approaches are able to outperform the market. According to the results of Cumby-Modest test, they do have the market timing ability. (2) In the simple regression models, the performance of CP is relatively well compared to those of other variables. (3) The correct prediction rate increases as the investment horizon increases. (4) The performance of the expanding window approach is on average inferior to that of the moving window approach. (5) In the simulations of timing abilities over the period of May, 1991 to December, 1997. The multiple regression models has the best performance for the cases of one-month, three-month, and six-month investment horizons. On the other hand, BP(1) has the best performance for the case of one-year investment horizon. Yenshan Hsu Ray H. Tsaih 徐燕山 蔡瑞煌 1999 學位論文 ; thesis 59 en_US |
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碩士 === 國立政治大學 === 財務管理學系 === 87 === This research employs five predicting variables to implementing the market timing strategy. These five variables are E/P1, E/P2, B/M, CP and GM. The investment performances of market timing under a variety of investment horizons are examined. There are four different forecasting horizons, which are one-month, three-month, six-month, and twelve-month investment horizons. Both the linear approach and artificial neural networks are employed to forecasting the market. The artificial neural network is employed with a view to capture the non-linearity property embedded in the market.
The results are summarized as follows.
(1) Both the linearity and nonlinear approaches are able to outperform the market. According to the results of Cumby-Modest test, they do have the market timing ability.
(2) In the simple regression models, the performance of CP is relatively well compared to those of other variables.
(3) The correct prediction rate increases as the investment horizon increases.
(4) The performance of the expanding window approach is on average inferior to that of the moving window approach.
(5) In the simulations of timing abilities over the period of May, 1991 to December, 1997. The multiple regression models has the best performance for the cases of one-month, three-month, and six-month investment horizons. On the other hand, BP(1) has the best performance for the case of one-year investment horizon.
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author2 |
Yenshan Hsu |
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Yenshan Hsu Alex Yu 余文正 |
author |
Alex Yu 余文正 |
spellingShingle |
Alex Yu 余文正 Implementing the Market Timing Strategy on Taiwan Stock Market: The Linear and Nonlinear Appraoches |
author_sort |
Alex Yu |
title |
Implementing the Market Timing Strategy on Taiwan Stock Market: The Linear and Nonlinear Appraoches |
title_short |
Implementing the Market Timing Strategy on Taiwan Stock Market: The Linear and Nonlinear Appraoches |
title_full |
Implementing the Market Timing Strategy on Taiwan Stock Market: The Linear and Nonlinear Appraoches |
title_fullStr |
Implementing the Market Timing Strategy on Taiwan Stock Market: The Linear and Nonlinear Appraoches |
title_full_unstemmed |
Implementing the Market Timing Strategy on Taiwan Stock Market: The Linear and Nonlinear Appraoches |
title_sort |
implementing the market timing strategy on taiwan stock market: the linear and nonlinear appraoches |
publishDate |
1999 |
url |
http://ndltd.ncl.edu.tw/handle/21675985259966806160 |
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