Affiliation:
1. Assistant Professor, Department of Computer Engineering, SNJB’s Late Sau. K. B. Jain College of Engineering, Chandwad, Maharashtra, India
Abstract
Recommendation systems are widely used for suggesting products, social media content, and web content to users. These systems utilize information filtering techniques to predict the preferences or ratings that a user would give to a particular item. This paper presents an overview of various data filtering techniques, algorithms, and application areas utilized in recommendation systems. It also includes a comparison between different algorithms used for recommendation systems.
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