Personalized Product Recommendation and User Satisfaction

Priyadarsini Patnaik
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Abstract

A recommendation system is a significant part of artificial intelligence (AI) to help users' access information at any time and from anywhere. Online product recommender systems are widely used to recommend products based on consumers' preferences. The traditional recommendation algorithms of recommendation engines do not meet the needs of users in the AI environment when exposed to large amounts of data resulting in a low recommendation efficiency. To address this, a personalized recommendation system was introduced. These personalized recommendation systems (PRS) are an important component for ecommerce players in the Indian e-commerce aspects. Since personalized recommendations are becoming increasingly popular, this study examines information processing theory with respect to personalized recommendations and their impact on user satisfaction. Further, relationships between the variables were examined by conducting regression analysis and found a positive correlation exists between personalized product recommendation and user satisfaction.
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个性化产品推荐和用户满意度
推荐系统是人工智能(AI)的重要组成部分,它可以帮助用户随时随地获取信息。在线产品推荐系统被广泛用于根据消费者的偏好推荐产品。在人工智能环境下,传统推荐引擎的推荐算法在面对大量数据时不能满足用户的需求,导致推荐效率较低。为了解决这个问题,引入了一个个性化的推荐系统。这些个性化推荐系统(PRS)是印度电子商务领域电子商务参与者的重要组成部分。由于个性化推荐越来越受欢迎,本研究探讨了个性化推荐及其对用户满意度的影响的信息处理理论。进一步,通过回归分析检验变量之间的关系,发现个性化产品推荐与用户满意度之间存在正相关关系。
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