Yıl: 2024 Cilt: 11 Sayı: 1 Sayfa Aralığı: 33 - 40 Metin Dili: İngilizce DOI: 10.17350/hjse19030000329 İndeks Tarihi: 10-06-2024

A Research: Investigation of Financial Applications with Blockchain Technology

Öz:
Cryptocurrencies have revolutionized the financial landscape by providing decentralized and anonymous payment systems, making them an intriguing subject for investors and researchers. This article delves into applying machine learning techniques for predicting cryptocurrency prices, mainly focusing on Bitcoin, Ethereum, and Binance Coin. Employing a range of machine learning models, including XGBoost, Linear Regression, and Gaussian Processes, the study aims to evaluate their predictive performance comprehensively. The results are promising; our models outperform existing studies, achieving impressively low RMSE values of 0.0040 for Bitcoin, 0.028 for Ethereum, and 0.027 for Binance Coin. These findings contribute valuable insights into the volatility and dynamics of cryptocurrency pric- es and underscore the potential of machine learning in shaping financial decision-making. Future directions include integrating advanced deep learning models, additional data sourc- es, and ensemble methods to enhance prediction accuracy and robustness.
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APA Mohammed M, TURK F (2024). A Research: Investigation of Financial Applications with Blockchain Technology. , 33 - 40. 10.17350/hjse19030000329
Chicago Mohammed Mohammed Ali,TURK FUAT A Research: Investigation of Financial Applications with Blockchain Technology. (2024): 33 - 40. 10.17350/hjse19030000329
MLA Mohammed Mohammed Ali,TURK FUAT A Research: Investigation of Financial Applications with Blockchain Technology. , 2024, ss.33 - 40. 10.17350/hjse19030000329
AMA Mohammed M,TURK F A Research: Investigation of Financial Applications with Blockchain Technology. . 2024; 33 - 40. 10.17350/hjse19030000329
Vancouver Mohammed M,TURK F A Research: Investigation of Financial Applications with Blockchain Technology. . 2024; 33 - 40. 10.17350/hjse19030000329
IEEE Mohammed M,TURK F "A Research: Investigation of Financial Applications with Blockchain Technology." , ss.33 - 40, 2024. 10.17350/hjse19030000329
ISNAD Mohammed, Mohammed Ali - TURK, FUAT. "A Research: Investigation of Financial Applications with Blockchain Technology". (2024), 33-40. https://doi.org/10.17350/hjse19030000329
APA Mohammed M, TURK F (2024). A Research: Investigation of Financial Applications with Blockchain Technology. Hittite Journal of Science and Engineering, 11(1), 33 - 40. 10.17350/hjse19030000329
Chicago Mohammed Mohammed Ali,TURK FUAT A Research: Investigation of Financial Applications with Blockchain Technology. Hittite Journal of Science and Engineering 11, no.1 (2024): 33 - 40. 10.17350/hjse19030000329
MLA Mohammed Mohammed Ali,TURK FUAT A Research: Investigation of Financial Applications with Blockchain Technology. Hittite Journal of Science and Engineering, vol.11, no.1, 2024, ss.33 - 40. 10.17350/hjse19030000329
AMA Mohammed M,TURK F A Research: Investigation of Financial Applications with Blockchain Technology. Hittite Journal of Science and Engineering. 2024; 11(1): 33 - 40. 10.17350/hjse19030000329
Vancouver Mohammed M,TURK F A Research: Investigation of Financial Applications with Blockchain Technology. Hittite Journal of Science and Engineering. 2024; 11(1): 33 - 40. 10.17350/hjse19030000329
IEEE Mohammed M,TURK F "A Research: Investigation of Financial Applications with Blockchain Technology." Hittite Journal of Science and Engineering, 11, ss.33 - 40, 2024. 10.17350/hjse19030000329
ISNAD Mohammed, Mohammed Ali - TURK, FUAT. "A Research: Investigation of Financial Applications with Blockchain Technology". Hittite Journal of Science and Engineering 11/1 (2024), 33-40. https://doi.org/10.17350/hjse19030000329