Sentiment Analysis of Social Media Conversations on Brand Loyalty
Keywords:
Sentiment analysis, brand loyalty, social media analytics, machine learning, consumer behavior, digital marketingAbstract
The rapid growth of social media platforms has transformed how consumers interact with brands, express opinions, and form long-term relationships. Brand loyalty, once driven primarily by product quality and price, is now significantly shaped by digital sentiments shared across platforms such as Twitter (X), Instagram, Facebook, and Reddit. This study investigates the role of sentiment analysis of social media conversations in understanding and predicting brand loyalty. Using a machine learning-based sentiment analysis framework, this research examines how positive, negative, and neutral sentiments influence behavioral and attitudinal loyalty. A conceptual model is proposed linking sentiment polarity, emotional intensity, and engagement metrics to loyalty outcomes. A hypothetical dataset of 120,000 social media posts across retail and technology brands is used for demonstration. Findings reveal that positive sentiment and emotional engagement significantly predict repurchase intentions and advocacy. The study contributes theoretically by integrating sentiment analytics with brand loyalty theory and offers practical insights for marketers aiming to build data-driven loyalty strategies..
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Copyright (c) 2017 Canadian Journal of Marketing Research

This work is licensed under a Creative Commons Attribution-NoDerivatives 4.0 International License.

