Stock prediction and trading using low-shot machine learning
Many economists, researchers and analysts find it difficult to predicting stock prices. In fact, investors are keen to know the potential of the stock price prediction in the research field. Lots of investors are eager to determine the future stock market trend for a safe and profitable investment....
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2020
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sg-ntu-dr.10356-1388302023-07-07T18:34:21Z Stock prediction and trading using low-shot machine learning Tee, Chee Zhang Wang Lipo School of Electrical and Electronic Engineering elpwang@ntu.edu.sg Engineering::Electrical and electronic engineering Many economists, researchers and analysts find it difficult to predicting stock prices. In fact, investors are keen to know the potential of the stock price prediction in the research field. Lots of investors are eager to determine the future stock market trend for a safe and profitable investment. In this paper, long short-term memory (LSTM) network is used with the implementation of low-shot learning to predict the future price of stock. By using the method mentioned to determine the Root Mean Squared Error (RMSE) and Mean Absolute Percentage Error (MAPE) between the predicted and actual stock price value, the experimental results indicate that the proposed method outperforms other benchmark model, and that the optimal sub-sampling rate and various parameters can predict the recent stock price of Standard and Poor 500 (S&P 500) accurately. Bachelor of Engineering (Electrical and Electronic Engineering) 2020-05-13T04:44:54Z 2020-05-13T04:44:54Z 2020 Final Year Project (FYP) https://hdl.handle.net/10356/138830 en A3264-191 application/pdf Nanyang Technological University |
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Engineering::Electrical and electronic engineering Tee, Chee Zhang Stock prediction and trading using low-shot machine learning |
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Many economists, researchers and analysts find it difficult to predicting stock prices. In fact, investors are keen to know the potential of the stock price prediction in the research field. Lots of investors are eager to determine the future stock market trend for a safe and profitable investment. In this paper, long short-term memory (LSTM) network is used with the implementation of low-shot learning to predict the future price of stock. By using the method mentioned to determine the Root Mean Squared Error (RMSE) and Mean Absolute Percentage Error (MAPE) between the predicted and actual stock price value, the experimental results indicate that the proposed method outperforms other benchmark model, and that the optimal sub-sampling rate and various parameters can predict the recent stock price of Standard and Poor 500 (S&P 500) accurately. |
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Wang Lipo |
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Wang Lipo Tee, Chee Zhang |
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Final Year Project |
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Tee, Chee Zhang |
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Tee, Chee Zhang |
title |
Stock prediction and trading using low-shot machine learning |
title_short |
Stock prediction and trading using low-shot machine learning |
title_full |
Stock prediction and trading using low-shot machine learning |
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Stock prediction and trading using low-shot machine learning |
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Stock prediction and trading using low-shot machine learning |
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stock prediction and trading using low-shot machine learning |
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Nanyang Technological University |
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2020 |
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https://hdl.handle.net/10356/138830 |
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