Details



DEVELOPING A SMART CRYPTO-CURRENCY PRICE PREDICTION MODEL BY LEVERAGING THE MACHINE LEARNING TECHNIQUES

Tejas Thakral

81-89

Vol 16, Issue 1, Jul-Dec, 2022

Date of Submission: 2022-08-31 Date of Acceptance: 2022-10-29 Date of Publication: 2022-11-11

Abstract

The goal of the proposed research project is to forecast cryptocurrency prices. Cryptocurrencies are digital currency that can be used as long-term investments or for a variety of transactions. The majority of current systems focus just on the Bitcoin cryptocurrency. However, cryptocurrencies other than bitcoin are also widely used. With remarkable precision, the proposed algorithm would be able to forecast the prices of all the important cryptocurrencies. A multitude of factors will be considered in order to make a reliable price prediction. The relationship between the price of cryptocurrency and the US dollar will be the primary criterion. These days, trading cryptocurrency prices is one of the most sought-after forms of exchange. The recommended technique would be very beneficial for both regular traders and investors. Facebook Prophet is the machine learning algorithm that will be used to predict these prices. Facebook Prophet predicts time series with notable speed and accuracy.

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