Automated Tradings System For Cryptocurrencies Using Amazon Cloud Computing
Abstract
This study analyzed the performance of three different models: Autoregressive
Integrated Moving Average, Support Vector Machine, and Artificial Neural Network.
The study utilized three performance metrics: Mean Absolute Error, Mean Squared
Error, and Mean Absolute Percentage Error. The research methodology included
training and testing the models on data sets with varying time frames. Results showed
that the Artificial Neural Network model outperformed the Support Vector Machine
and Autoregressive Integrated Moving Average models in the long term, while the
Support Vector Machine model had better performance in the short term. However, the
Autoregressive Integrated Moving Average model had the poorest performance among
the three models. The study has important implications for the development of
automated trading systems and can inform decision-making in the financial industry.
Future research could explore new machine learning techniques and incorporate
additional data sources to improve the accuracy of automated trading systems.