Implementation of the CNN-LSTM Hybrid Model in Predicting Bitcoin Price Fluctuations

Authors

  • Candra Wibowo Informatics Faculty, Mikroskil University, Indonesia
  • Ronsen Purba Informatics Faculty, Mikroskil University, Indonesia
  • Muhammad Fermi Pasha Informatics Faculty, Mikroskil University, Indonesia

DOI:

https://doi.org/10.26905/jtmi.v11i2.16239

Keywords:

Cryptocurrency, Bitcoin, CNN, LSTM, CNN-LSTM, Time Series, RSME, MAE, MAPE

Abstract

Digital financial systems of today face formidable obstacles from the extreme price volatility and unpredictability of Bitcoin. Data cleaning, Min-Max normalization, and sequence creation with a sliding window were performed on the daily BTC-USD historical data received from Yahoo Finance from 2020 to 2024 before implementing a hybrid Convolutional Neural Network-Long Short-Term Memory (CNN-LSTM) model in this study. The CNN layers are responsible for extracting local patterns with a limited time horizon, whereas the LSTM layers are responsible for capturing the time series' long-term relationships. The experimental findings show that the CNN-LSTM model outperforms the CNN and LSTM in terms of predictive ability, with an RMSE of 2,202.717, an MAE of 1,553.202, and a MAPE of 2.244%, which translates to an accuracy of about 97.756%. These results provide useful information for adaptive trading techniques and digital asset risk management based on artificial intelligence, and they prove that the hybrid method is successful in dealing with complicated, non-linear, and unpredictable trends in the cryptocurrency market.

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References

[1] F. Fang And Others, “Cryptocurrency Trading: A Comprehensive Survey,” Springer Sci. Bus. Media Deutschl. Gmbh, Dec. 2022, Doi: 10.1186/S40854-021-00321-6.

[2] B. R. Craig And J. Kachovec, “Bitcoin’s Decentralized Decision Structure,” 2019.

[3] D. Bakas, G. Magkonis, And E. Y. Oh, “What Drives Volatility In Bitcoin Market?,” Financ. Res. Lett., Vol. 50, Dec. 2022, Doi: 10.1016/J.Frl.2022.103237.

[4] S. Guizani And I. K. Nafti, “The Determinants Of Bitcoin Price Volatility: An Investigation With Ardl Model,” In Procedia Computer Science, Elsevier B.V., 2019, Pp. 233–238. Doi: 10.1016/J.Procs.2019.12.177.

[5] Y. Hua, “Bitcoin Price Prediction Using Arima And Lstm,” In E3s Web Of Conferences, Edp Sciences, Dec. 2020. Doi: 10.1051/E3sconf/202021801050.

[6] Y. Li And W. Dai, “Bitcoin Price Forecasting Method Based On Cnn-Lstm Hybrid Neural Network Model,” J. Eng., Vol. 2020, No. 13, Pp. 344–347, Jul. 2020, Doi: 10.1049/Joe.2019.1203.

[7] F. P. Rachman And H. Santoso, “Perbandingan Model Deep Learning Untuk Klasifikasi Sentiment Analysis Dengan Teknik Natural Languange Processing,” J. Teknol. Dan Manaj. Inform., Vol. 7, No. 2, Pp. 103–112, 2021.

[8] M. Gholipour, “Leveraging The Power Of Hybrid Models: Combining Arima And Lstm For Accurate Bitcoin Price Forecasting,” 2023.

[9] R. Zahilah, S. Hajar, And D. Stiawan, “Cnn-Lstm Hybrid Model For Improving Bitcoin Price Prediction Results,” 2023.

[10] O. Omole And D. Enke, “Deep Learning For Bitcoin Price Direction Prediction: Models And Trading Strategies Empirically Compared,” Financ. Innov., Vol. 10, No. 1, Dec. 2024, Doi: 10.1186/S40854-024-00643-1.

[11] S. Somayajulu, M. Ahmed, And B. Kotaiah, “Bitcoin Price Prediction Using Lstm And Cnn,” 2024.

[12] Q. Guo, S. Lei, Q. Ye, And Z. Fang, “Mrc-Lstm: A Hybrid Approach Of Multi-Scale Residual Cnn And Lstm To Predict Bitcoin Price,” May 2021.

[13] M. Ortu, N. Uras, C. Conversano, G. Destefanis, And S. Bartolucci, “On Technical Trading And Social Media Indicators In Cryptocurrencies’ Price Classification Through Deep Learning,” Feb. 2021.

[14] V. P. Ramadhan And F. Y. Pamuji, “Analisis Perbandingan Algoritma Forecasting Dalam Prediksi Harga Saham Lq45 Pt Bank Mandiri Sekuritas (Bmri),” J. Teknol. Dan Manaj. Inform., Vol. 8, No. 1, Pp. 39–45, 2022.

[15] S. Jha And A. Yadav, “Hybrid Deep Learning Model For Bitcoin Price Prediction,” Int. J. Adv. Comput. Sci. Appl., Vol. 13, No. 6, 2022.

[16] R. Sharma, A. Singh, And M. Gupta, “Bitcoin Price Prediction Using Hybrid Cnn-Lstm Model,” Procedia Comput. Sci., Vol. 185, 2022.

[17] H. Kim, J. Lee, And S. Park, “Comparative Analysis Of Deep Learning Models For Bitcoin Price Prediction,” J. Comput. Sci., Vol. 50, 2021.

[18] H. Jang And J. Lee, “Modeling And Prediction Of Bitcoin Prices With Bayesian Neural Networks,” Ieee Access, Vol. 8, 2020.

[19] D. Tiwari And A. Kumar, “Attention-Based Cnn-Lstm Model For Cryptocurrency Price Forecasting,” Appl. Soft Comput., Vol. 123, 2023.

[20] K. A. Rijal, A. V. Vitianingsih, Y. Kristyawan, And A. Lidya, “Forecasting Model Of Indonesia’s Oil & Gas And Non-Oil & Gas Export Value Using Var And Lstm Methods,” J. Teknol. Dan Manaj. Inform., Vol. 10, No. 1, Pp. 59–69, 2024.

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Published

17-12-2025