AI-Powered Customer Sentiment Analysis for Enhancing Retail Marketing Strategies and Customer Engagement

Authors

  • Ramana Kumar Kasaraneni Independent Research and Senior Software Developer, India Author

Keywords:

artificial intelligence, customer sentiment analysis

Abstract

In the rapidly evolving retail landscape, the integration of artificial intelligence (AI) into customer sentiment analysis has emerged as a pivotal strategy for refining marketing approaches and enhancing customer engagement. This paper explores the transformative impact of AI-powered sentiment analysis on retail marketing strategies, emphasizing its potential to deliver nuanced, data-driven insights that significantly improve customer interactions and strategic decision-making. The study begins by delineating the theoretical underpinnings and practical implementations of AI-driven sentiment analysis, including an examination of various AI methodologies such as natural language processing (NLP), machine learning (ML), and deep learning (DL) algorithms.

The investigation reveals that AI-powered sentiment analysis enables retailers to parse vast amounts of unstructured data from diverse sources, including social media platforms, customer reviews, and feedback surveys, to extract actionable insights. This capability allows for the real-time assessment of consumer sentiment, which can be harnessed to tailor marketing campaigns, enhance product offerings, and personalize customer interactions with unprecedented precision. The paper delves into the mechanics of sentiment classification and sentiment extraction techniques, highlighting the role of advanced algorithms in discerning nuanced emotional tones and contextual meanings within textual data.

Further, the study examines several case studies showcasing the application of AI-powered sentiment analysis in retail settings. These case studies illustrate how retailers have leveraged sentiment insights to optimize promotional strategies, adjust inventory based on consumer feedback, and enhance overall customer satisfaction. The analysis demonstrates that the application of AI in sentiment analysis not only facilitates a deeper understanding of customer preferences but also drives more effective engagement strategies, thereby fostering stronger brand loyalty and competitive advantage.

Moreover, the paper addresses the challenges associated with implementing AI-powered sentiment analysis in retail environments. These challenges include the need for high-quality data, the potential for algorithmic bias, and the integration of sentiment analysis tools with existing retail systems. The study provides a critical evaluation of these obstacles and suggests potential solutions to mitigate their impact, such as the adoption of robust data preprocessing techniques and continuous model evaluation to ensure accuracy and fairness.

This paper asserts that AI-powered customer sentiment analysis represents a transformative approach to retail marketing and customer engagement. By leveraging sophisticated analytical techniques to gain deeper insights into consumer behavior and preferences, retailers can significantly enhance their strategic marketing efforts and improve customer interactions. The research underscores the importance of embracing AI technologies to remain competitive in the dynamic retail sector and highlights future directions for advancing sentiment analysis methodologies and applications.

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References

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Published

08-10-2022

How to Cite

[1]
Ramana Kumar Kasaraneni, “AI-Powered Customer Sentiment Analysis for Enhancing Retail Marketing Strategies and Customer Engagement”, Australian Journal of Machine Learning Research & Applications, vol. 2, no. 2, pp. 499–537, Oct. 2022, Accessed: Nov. 24, 2024. [Online]. Available: https://sydneyacademics.com/index.php/ajmlra/article/view/138

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