Implementasi Algoritma Long Short-Term Memory untuk Memprediksi Harga Mata Uang Kripto Litecoin

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Muhamad Jafar Rahadian
Irwansyah
Agus Indra P

Abstract

This study aims to evaluate the effectiveness of the Long Short-Term Memory (LSTM) algorithm in predicting the price of the Litecoin cryptocurrency. The dataset used consists of historical Litecoin price data against USD obtained from Yahoo Finance. Considering the high volatility of the cryptocurrency market, accurate price prediction is essential to assist investors in minimizing risks and maximizing potential returns. The LSTM method was selected due to its capability to model time-series data and capture long-term dependencies. The results show that the LSTM model is able to generate accurate predictions, achieving a Root Mean Square Error (RMSE) of 3.72% and a coefficient of determination (R²) of 91.38%. These findings indicate that the LSTM algorithm has strong potential for cryptocurrency price prediction, particularly for Litecoin.

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How to Cite

Implementasi Algoritma Long Short-Term Memory untuk Memprediksi Harga Mata Uang Kripto Litecoin. (2026). DIGINTEL-AI : DIGital INnovation and InTELligence – AI, 1(2). https://doi.org/10.66217/digintel-ai.v1i2.12

References

ArFan, A., & Lussiana ETP. (2019). Prediksi Harga Saham Di Indonesia Menggunakan Algoritma Long Short-Term Memory. Seminar Nasional Teknologi Informasi Dan Komunikasi STIK (SeNTIK), 3(1), 2581–2327.

Ari Rama Novryadi, Irwansyah, & Moh Shidqon. (2026). Analisis Sentimen Masyarakat Terhadap Kinerja Presiden Indonesia Joko Widodo Periode Kedua Menggunakan Metode Naïve Bayes dan SVM. DIGINTEL-AI : DIGital INnovation and inTELligence – AI, 1(1), 11–24. https://doi.org/10.66217/digintel-ai.v1i1.2

Aushofi, M., Irwansyah, & Moh Shidqon. (2026). Implementasi Data Mining Untuk Menganalisis Pola Penimbangan Sampah Menggunakan Algoritma Apriori. DIGINTEL-AI : DIGital INnovation and inTELligence – AI, 1(1), 1–10. https://doi.org/10.66217/digintel-ai.v1i1.1

Chen, N. (2024). Exploring the development and application of LSTM variants. Applied and Computational Engineering, 53(1), 103–107. https://doi.org/10.54254/2755-2721/53/20241288

Fadil Firmansyah, Irwansyah, & Agus Budiyantara. (2026). Analisis Pola Pembelian Konsumen Di Rumah Makan Tepi Laut Baubau Menggunakan Algoritma Apriori. DIGINTEL-AI : DIGital INnovation and inTELligence – AI, 1(1), 25–36. https://doi.org/10.66217/digintel-ai.v1i1.3

Fischer, T., & Krauss, C. (2018). Deep learning with long short-term memory networks for financial market predictions. European Journal of Operational Research, 270(2), 654–669. https://doi.org/10.1016/j.ejor.2017.11.054

Fu, B. (2022). Application of Blockchain Technology in Cryptocurrency. BCP Business & Management, 23, 198–205. https://doi.org/10.54691/bcpbm.v23i.1351

Henderi, Wahyuningsih, T., & Rahwanto, E. (2021). Comparison of Min-Max normalization and Z-Score Normalization in the K-nearest neighbor (kNN) Algorithm to Test the Accuracy of Types of Breast Cancer. IJIIS: International Journal of Informatics and Information Systems, 4(1), 13–20. https://doi.org/10.47738/ijiis.v4i1.73

Irwansyah, I., Dittyata, R., Rizal, R., & Wiyono, W. (2024). Optimalisasi Klasifikasi Uji Emisi Sepeda Motor Menggunakan Algoritma Naïve Bayes. Infotech: Journal of Technology Information, 10(2), 337–242. https://doi.org/10.37365/jti.v10i2.327

Khan, M. T. I. (2023). Literacy, profile, and determinants of Bitcoin, Ethereum, and Litecoin: Survey results. Journal of Education for Business, 98(7), 367–377. https://doi.org/10.1080/08832323.2023.2201414

Kharel, A., Zarean, Z., & Kaur, D. (2024). Long Short-Term Memory (LSTM) Based Deep Learning Models for Predicting Univariate Time Series Data. International Journal of Machine Learning, 14(1). https://doi.org/10.18178/ijml.2024.14.1.1154

Lindemann, B., Müller, T., Vietz, H., Jazdi, N., & Weyrich, M. (2021). A survey on long short-term memory networks for time series prediction. Procedia CIRP, 99, 650–655. https://doi.org/10.1016/j.procir.2021.03.088

Mishra, P., Biancolillo, A., Roger, J. M., Marini, F., & Rutledge, D. N. (2020). New data preprocessing trends based on ensemble of multiple preprocessing techniques. TrAC Trends in Analytical Chemistry, 132, 116045. https://doi.org/10.1016/j.trac.2020.116045

Patel, J., Shah, S., Thakkar, P., & Kotecha, K. (2015). Predicting stock market index using fusion of machine learning techniques. Expert Systems with Applications, 42(4), 2162–2172. https://doi.org/10.1016/j.eswa.2014.10.031

Prater, R., Hanne, T., & Dornberger, R. (2024). Generalized Performance of LSTM in Time-Series Forecasting. Applied Artificial Intelligence, 38(1), 2377510. https://doi.org/10.1080/08839514.2024.2377510

Salsa Billa Permana Putri, Irwansyah, & Tri M, T. (2026). Implementasi Algoritma K-NN Pada Sosial Media X Untuk Analisis Sentimen Pengalaman Warganet Tinggal Di Luar Negeri. DIGINTEL-AI : DIGital INnovation and inTELligence – AI, 1(1), 37–49. https://doi.org/10.66217/digintel-ai.v1i1.4

Sha, M., Emmanuel, S., Bindhu, A., & Mustaq, M. (2024). Intensified greenhouse gas prediction: Configuring Gate with Fine-Tuning Shifts with Bi-LSTM and GRU System. Frontiers in Climate, 6, 1457441. https://doi.org/10.3389/fclim.2024.1457441

Sharma, G. D., Tiwari, A. K., Chopra, R., & Dev, D. (2024). Past, present, and future of block-chain in finance. Journal of Business Research, 177, 114640. https://doi.org/10.1016/j.jbusres.2024.114640

Shi, J., Wang, S., Qu, P., & Shao, J. (2024). Time series prediction model using LSTM-Transformer neural network for mine water inflow. Scientific Reports, 14(1), 18284. https://doi.org/10.1038/s41598-024-69418-z

Song, X., Deng, L., Wang, H., Zhang, Y., He, Y., & Cao, W. (2024). Deep learning-based time series forecasting. Artificial Intelligence Review, 58(1), 23. https://doi.org/10.1007/s10462-024-10989-8

Yona, Y. S. I., Shidqi, S. R. A.-T. M., & Lemon, R. A. (2024). A Bibliometric Analysis of Cryptocurrency and Blockchain. West Science Interdisciplinary Studies, 2(01), 74–82. https://doi.org/10.58812/wsis.v2i01.564

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