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In the landscape of contemporary marketing, social media platforms have emerged as crucial channels, fundamentally reshaping the dynamics of business-customer interactions. This paper delves into the profound role played by social media platforms in modern marketing, emphasizing their transformative influence on customer engagement. The focus is directed towards advanced data analytics, particularly leveraging machine learning and deep learning techniques, and their capacity to distill valuable insights from the expansive reservoir of user-generated content on social media. The exploration encompasses applications such as sentiment analysis, predictive modeling, and consumer behavior analysis, employing diverse algorithms including logistic regression, random forests, and sophisticated deep learning models such as Long Short-Term Memory (LSTM) networks. The research emphasizes how these analytical approaches elevate marketers' comprehension of public sentiment and emerging trends, empowering the crafting of targeted campaigns and personalized consumer experiences to augment engagement and foster brand loyalty. Moreover, the paper introduces a comprehensive framework for seamlessly integrating these cutting-edge techniques into social media marketing practices, addressing pertinent challenges such as data privacy and ethical considerations. In essence, the research aspires to serve as a guide for businesses, enabling them to harness the full potential of social media analytics for the formulation of more impactful, sustainable, and ethical marketing strategies in the digital age.
Ghareeb et al. (Wed,) studied this question.