In this article forecasting of daily closing price series of Bitcoin, Ripple, Dash, Litecoin and Ethereum copyright currencies, using data on prices (open, low, high), market capital and volumes using prior days is focused.The value conduct Developing an ecological visualization system for biodiversity data of cryptographic forms of money remains to a great extent neglected, giving new chances to scientists and business analysts to feature the likenesses and contrasts with standard monetary costs.Hence the paper is focused on this area.he results are compared with various benchmarks.
Predictions are done using statistical techniques and machine learning algorithms.A simple linear regression (SLR) model that uses only a single-variable sequence of closing prices for forecasting, and a multiple linear regression (MLR) model that uses a multivariate sequence of prices and quantities at the same time.The simple linear regression (SLR) model for univariate serial forecasting uses only closing prices.Mean Absolute Percentage Error (MAPE) and Sovereign CDS Premiums’ Reaction to Macroeconomic News: An Empirical Investigation relative Root Mean Square Error (relative RMSE) performance measures are considered.
The accuracy achieved by the ARIMA model on our dataset is the highest, followed by Multivariable Linear Regression and LSTM.