SENTIMENT ANALYSIS AND VISUALIZATION OF DATA FROM SOCIAL NETWORKS USING MACHINE LEARNING ALGORITHMS

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Nazarbayev University School of Engineering and Digital Sciences

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In today’s data-driven world, it is possible to gain access to significant amounts of data from different sources, and even share this data for various purposes. In modern everyday life, people use social networks extensively, reading tweets and posts, leaving comments, sharing their views on findings through comments and posts, or getting feedback from other users. As social networks are enhancing a source of abundant information flows, it is becoming difficult and time-consuming to filter the information. The correct analysis of information is important since the way we communicate and establish various kinds of relationships can heavily rely on correct interpretations. This thesis aims to introduce the methods for sentiment analysis, investigating the application of the Machine Learning Approach for the sentiment classification problem by comparison of the Machine Learning and Statistical approaches, especially defining the importance of the Machine Learning approach for our purpose. Moreover, this research paper intends to explore the effectiveness of the pre-trained models over other approaches. Logistic Regression, Long Short-Term Memory, and BERT models will be demonstrated as methods of explaining this topic. And there will be an observation of what is the performance of the python libraries next to these methods. The analysis will show how the results are different and how the first approach outperforms the second one and will test whether ML algorithms show good performance and best results. Training experimental work will take place on the open-source dataset Sentiment140 extracted from Twitter.

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Omarali, A. (2021). Sentiment Analysis and Visualization of Data From Social Networks Using Machine Learning Algorithms (Unpublished master's thesis). Nazarbayev University, Nur-Sultan, Kazakhstan

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