Cryptocurrency Price Prediction: A Comparative Sentiment Analysis Approach Using SVM, CNN-LSTM, and Pysentimento during Times of Crisis

Author:

Rateb Muhammad Nabil1,Alansary Sameh1,Elzouka Marwa Khamis1,Galal Mohamad2

Affiliation:

1. Alexandria University

2. Nile University

Abstract

Abstract Sentiment analysis is a powerful tool for extracting valuable insights from social media data. In this paper, more than one million tweets spanning three months (March, June, and December 2022) regarding three cryptocurrencies: Bitcoin (BTC), Ethereum (ETH), and Binance Coin (BNB) during the Russian-Ukrainian War are considered. Two models, a convolutional neural network with long short-term memory (CNN-LSTM) and a support vector machine (SVM) with GloVe and TF-IDF features, are trained on a labeled dataset of more than fifty thousand tweets about Bitcoin labeled as (positive, negative, and neutral). A pretrained model (Pysentimento) for sentiment analysis is also employed to compare the performances of the three models. The models are tested on the labeled dataset and then evaluated on the unlabeled tweets, revealing that Pysentimento's level of accuracy outperforms the other two models. Google Trends, along with the opening and closing prices, and the volume of the three cryptocurrencies, in addition to the results of Pysentimento sentiment classification, are employed to apply the Pearson correlation coefficient and conduct price prediction analysis using the SARIMA model. It is found that Bitcoin may appeal to those seeking stability and a known record of accomplishment, while Binance Coin and Ethereum may attract investors looking for more diverse opportunities. Sentiment analysis using machine learning is found to provide invaluable information for cryptocurrency price forecasting and trading strategies, especially in the context of geopolitical events and market volatility.

Publisher

Research Square Platform LLC

Reference54 articles.

1. Cryptocurrency price prediction using tweet volumes and sentiment analysis;Abraham J;SMU Data Science Review,2018

2. Powerful learning is all about retrieval;Aggarwal PK;ASCD Education Update,2020

3. Akhtar, W., Kumaraguru, P., & Joshi, A. (2019). Sentiment analysis for cryptocurrencies using roBERTa transformer model with self-attention mechanism. In Proceedings of the Third Workshop on Blockchain Technologies and Applications (pp. 1–10).

4. Cryptocurrency market: Behavioral finance perspective;AL-MANSOUR BY;The Journal of Asian Finance Economics and Business,2020

5. Impact of negative tweets on diverse assets during stressful events: An investigation through time-varying connectedness;Balasudarsun NL;Journal of Risk and Financial Management,2022

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