AI Integration in E-Commerce Wishlists

Author:

Behare Nitesh1ORCID,Behare Shubhada Nitesh2,Waghulkar Shrikant3ORCID

Affiliation:

1. Balaji Institute of International Business, Sri Balaji University, Pune, India

2. Independent Researcher, Pune, India

3. Arihant Institute of Business Management, India

Abstract

This chapter delves into the captivating intersection of AI and wishlists, exploring how e-commerce undergoes a transformative shift with innovative strategies and enhanced consumer experiences. A critical examination of existing literature unveils a multifaceted relationship between AI and wishlists, presenting a myriad of opportunities that redefine their function and shape consumer behavior. From personalized recommendations to predictive analytics, this chapter illuminates the profound impact AI integration has on consumer satisfaction and engagement. It also addresses challenges, emphasizing issues like data privacy and security. Serving as a comprehensive guide, this chapter navigates the intricate terrain of AI-infused wishlists, providing insights to revolutionize the e-commerce industry. By ensuring a robust, personalized, and secure shopping experience, the integration of AI in wishlists emerges as a pivotal force in reshaping consumer interactions.

Publisher

IGI Global

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