Research of Quantative Trading Strategy Based on LSTM
DOI:
https://doi.org/10.54691/bcpbm.v19i.850Keywords:
Price Prediction, ARIMA, LSTM, Risk quantification, Greedy AlgorithmAbstract
Making strategies to maximize returns has always been the biggest problem almost every investor faces in the process of investment. In this paper, we will establish a model to analyze the internal characteristics of gold and bitcoin price data for further price prediction, which is of great help in formulation of trading strategy for the future. In Section 2 we hope to analyze the price trend of gold and bitcoin. At the beginning we establish a model based on ARIMA and get a relatively good prediction result. However, considering the errors may occur when the backward prediction unit gets long in this model, we try to use LSTM algorithm to better extract the nonlinear characteristics of the two time series of price. Through LSTM algorithm we get a much better result, and thus we choose LSTM as our final prediction model after comprehensive comparison. In Section 3, we use the predicted results to make trading strategies. We first divide investors into reckless and prudent types and establish models under different assumptions respectively. Then by applying greedy algorithm and establishing risk quantification model we approach the global optimal solution respectively. In the end, after testing the model and confirming its excellent performance, we summarize the advantages and shortcomings about this model comprehensively. Moreover, much more conclusions are drawn to analyze the possible model update in future.Price Prediction
Downloads
References
Syed Jawad Hussain Shahzad, Elie Bouri, David Roubaud, et al. Safe haven, hedge and diversification for G7 stock markets: Gold versus bitcoin[J]. Economic Modelling. Vol. 87 (2020), p. 212-224.
Baur Dirk G, Hoang Lai. The Bitcoin gold correlation puzzle. Journal of Behavioral and Experimental Finance. Elsevier. Vol. 42 (C) (2021) .
P. Kayal, P. Rohilla. Bitcoin in the economics and finance literature: a survey. SN Bus Econ 1, Vol. 1 (2021), No. 7, p. 1-21.
Information on: www.bitcoin.org
Information on: www.120btc.com
Fang Yiqiu, Lu Zhuang, Ge Junwei. Forecasting stock prices with a combined RMSE loss LSTM-CNN model[J/OL]. Computer Engineering and Applications. Vol 9 (2022), p. 294-302.
Mengya Li, Juan He, Rong Zhou, et al. Research on prediction model of mixed gas concentration based on CNN-LSTM network[C]. Proceedings of 2021 3rd International Conference on Advanced Information Science and System (AISS 2021). Vol. 12 (2021) No. 1, p. 344-348.
Yujie Fang, Juan Chen, Zhengxuan Xue. Research on Quantitative Investment Strategies Based on Deep Learning[J]. Algorithms. Vol. 12 (2019) No. 2, p. 1-35.
Wang Zhijin, Su Qiankun, Chao Guoqing, et al. A multi-view time series model for share turnover prediction[J]. Applied Intelligence, 2022 (prepublish).
Song Shuang, Li Shugang, Zhang Tianjun, et al. Research on the Multi-Parameter Modeling of Submarine Sediment Prediction[J]. Applied Mechanics and Materials. Vol. 462-463 (2013), p. 13-16.