This Big Data project focuses on integrating social media data to predict cryptocurrency prices. By analyzing trends, sentiments, and discussions from platform Wikipedia Comments, the system generates real-time predictions on cryptocurrency price movements, leveraging machine learning and data analytics for more accurate forecasting.
import mwclient
import time
import transformers
import mean
import pandas
site = mwclient.Site('en.wikipedia.org')
page = site.pages['Bitcoin']
import yfinance as yf
import os
import pandas as pd
import scikit-learn
btc_ticker = yf.Ticker("BTC-USD")
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The focus of this project is to enhance the prediction of cryptocurrency prices by utilizing sentiment analysis on social media and other advanced kinds of artificial intelligence. The project aims to develop a robust and comprehensive four-dimensional forecasting model by utilizing historical data, market coefficients, blockchain statistics, and sentiment analysis from platforms like Twitter. Long Short-Term Memory (LSTM), Gated Recurrent Unit (GRU), and XGBoost provide the potential to comprehensively capture the intricate patterns of the market owing to their intricate nature, hence ensuring a high level of accuracy and reliability. The research also examines novel methods of prediction and utilizes Big Data to evaluate substantial amounts of data and produce valuable insights and patterns. The end-users will derive advantages from the SEO reports, recommendations, and final analysis provided to the stakeholders in the dynamic and unpredictable bitcoin industry, enabling them to make informed decisions. The model demonstrates a high level of accuracy in reflecting the real-time fluctuations in the markets and provides insights into the efficacy of including sentiment analysis alongside or in combination with the quantitative measures for forecasting purposes.
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Language: Python
Software: JupyterLab, Power BI, Word, Excel