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the strategy of investment in the stock market using modified support vector regression model
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نویسنده
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huang chih-hua ,yang feng-hua ,lee chien-pang
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منبع
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scientia iranica - 2018 - دوره : 25 - شماره : 3-E - صفحه:1629 -1640
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چکیده
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Stock indices forecasting has become a popular research issue in recent years. although many statistical time series models have been applied in stock indices forecasting, they are limited to certain assumptions. accordingly, the traditional statistical time series models might not be suitable for forecasting reallife stock indices data. hence, this paper proposes a novel forecasting model to assist investors in determining a strategy for investments in the stock market. the proposed model is called the modified support vector regression model, which is composed of the correlation coefficient method, the sliding window algorithm and the support vector regression model. the results show that the forecasting accuracy of the proposed model is more stable than the existing models in terms of average and standard deviation of the root mean square error (rmse) and the mean absolute percentage error (mape). accordingly, the proposed model would be used to assist investors in determining a strategy for investing in stocks.
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کلیدواژه
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correlation coefficient ,support vector regression model ,hybrid model ,time series data forecasting ,stock indices
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آدرس
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da-yeh university, taiwan, da-yeh university, department of international business management, taiwan, national kaohsiung marine university, department of maritime information and technology, taiwan
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پست الکترونیکی
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chien.pang@gmail.com;cplee@nkust.edu.tw
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Authors
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