@misc{10481/103611, year = {2024}, month = {12}, url = {https://hdl.handle.net/10481/103611}, abstract = {With the rise of social media platforms, Twitter has become a significant source of real-time data. Analyzing Twitter data can provide valuable insights into public opinions, sentiments, and trends. The use of Twitter data for analysis gained prominence with the growth of social media platforms in recent years. Researchers and businesses recognized the potential of Twitter data in understanding public sentiment, predicting trends, and conducting market research. As a result, various methods and algorithms were developed to process and classify Twitter data efficiently. Traditional systems often rely on basic text processing techniques such as tokenization, stemming, and stop-word removal. While these techniques are useful, they were not be sufficient for handling the unique characteristics of Twitter data, such as hashtags, mentions, and emoticons. In addition, the unstructured and noisy nature of Twitter data poses challenges for effective analysis. Therefore, the need for a comprehensive pre- processing approach arises from the growing importance of Twitter data in decision-making processes. Businesses, researchers, and organizations rely on Twitter data for sentiment analysis, brand monitoring, and trend prediction. To extract meaningful insights from this data, it is essential to preprocess it effectively, ensuring that irrelevant information and noise are removed while preserving the context and nuances of social media language. Thus, this research proposes the effective classification of Twitter data using machine learning algorithms. This comprehensive pre-processing approach is significant for several reasons such as improved accuracy, better understanding of public opinion, enhanced decision making, and research advancements.}, publisher = {Universidad de Granada}, keywords = {Twitter data analysis}, keywords = {Sentiment analysis}, keywords = {Social media trends}, keywords = {Machine learning algorithms}, keywords = {Text pre-processing}, keywords = {Public opinion}, title = {Unveiling Insights with Twitter Data: Exploring Trends, Sentiments, and Predictions Through Social Media Mining}, author = {Srikanth, T. and Sri, Singi Bhanu and Dedeepya, Somishetty and Deepthi, Pothepangari}, }