Predicting and Forecasting the Price of Constituents and Index of Cryptocurrency Using Machine Learning
Reaz Chowdhury, M. Arifur Rahman, M. Sohel Rahman, M.R.C. Mahdy

TL;DR
This paper applies various machine learning techniques to predict and forecast cryptocurrency index and constituent prices, aiming to assist traders and improve portfolio management amidst high market volatility.
Contribution
It introduces a comparative analysis of multiple machine learning models for cryptocurrency price prediction, achieving superior results over existing methods.
Findings
Best model outperforms previous state-of-the-art approaches.
Predictions can aid traders in decision-making.
Model results demonstrate high accuracy in volatile markets.
Abstract
At present, cryptocurrencies have become a global phenomenon in financial sectors as it is one of the most traded financial instruments worldwide. Cryptocurrency is not only one of the most complicated and abstruse fields among financial instruments, but it is also deemed as a perplexing problem in finance due to its high volatility. This paper makes an attempt to apply machine learning techniques on the index and constituents of cryptocurrency with a goal to predict and forecast prices thereof. In particular, the purpose of this paper is to predict and forecast the close (closing) price of the cryptocurrency index 30 and nine constituents of cryptocurrencies using machine learning algorithms and models so that, it becomes easier for people to trade these currencies. We have used several machine learning techniques and algorithms and compared the models with each other to get the best…
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