The Effect of Data Types' on the Performance of Machine Learning Algorithms for Financial Prediction
Hulusi Mehmet Tanrikulu, Hakan Pabuccu

TL;DR
This study evaluates how data types and sample sizes influence the accuracy of various machine learning algorithms in predicting Bitcoin prices, using technical indicators, Google Trends, and tweet data.
Contribution
It introduces a comprehensive methodology comparing continuous and trend data across multiple ML models for Bitcoin forecasting, highlighting the impact of data type and sample size.
Findings
Data type significantly affects prediction accuracy.
Sample size influences model performance.
Random forest and XGBoost outperform other models.
Abstract
Forecasting cryptocurrencies as a financial issue is crucial as it provides investors with possible financial benefits. A small improvement in forecasting performance can lead to increased profitability; therefore, obtaining a realistic forecast is very important for investors. Successful forecasting provides traders with effective buy-or-hold strategies, allowing them to make more profits. The most important thing in this process is to produce accurate forecasts suitable for real-life applications. Bitcoin, frequently mentioned recently due to its volatility and chaotic behavior, has begun to pay great attention and has become an investment tool, especially during and after the COVID-19 pandemic. This study provided a comprehensive methodology, including constructing continuous and trend data using one and seven years periods of data as inputs and applying machine learning (ML)…
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Taxonomy
TopicsImpact of AI and Big Data on Business and Society · Customer churn and segmentation · Stock Market Forecasting Methods
