Abstract
Sentiment analysis, a pivotal discipline in the digital era, revolves around the nuanced task of categorizing user sentiments within textual data. This research embarks on an exhaustive exploration of diverse sentiment analysis models, comprising Convolutional Neural Networks (CNNs), Long Short-Term Memory Networks (LSTMs), Support Vector Machines (SVMs), and a Baseline Model. Through a rigorous comparative analysis of their performance across varied datasets, this study illuminates the unique strengths and limitations inherent to each model. Furthermore, the research extends beyond the realm of academic inquiry to unveil the practical applications of sentiment analysis. It underscores the profound impact of sentiment analysis in contemporary datadriven decision-making, illustrating its significance across multifaceted domains such as marketing, social media monitoring, finance, customer service, and public sentiment analysis. This investigation seeks to empower stakeholders with invaluable insights, thereby facilitating informed choices and strategies in the ever-evolving digital landscape.