- Tài khoản và mật khẩu chỉ cung cấp cho sinh viên, giảng viên, cán bộ của TRƯỜNG ĐẠI HỌC FPT
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Stock market forecasting is a highly difficult time-series problem due to its extreme volatility and
dynamic. This paper proposes a Long-short term memory (LSTM) model that predicts the
probability to outperform the market of all of the VN30-Index constituents by using historical
price changes along with features calculated from the Ichimoku Cloud trading strategy. After
acquiring the pro-posed model’s outputs, we buy three stocks with the best probability to sell
them ten days later. We then reinvest the money on the next day using the same strategy. The
yearly returns of the above trading scheme are used as the empirical results. This study is
conducted in a period of 9 years – from the VN30-Index’s establishment in 2012 to the end of
2020. On average, the adoption of the Ichimoku Cloud features in the LSTM model makes our
trading strategy go from an annual loss of 2.86% to a profit of 14.29%.