A Brief Analysis of Collaborative and Content Based Filtering Algorithms used in Recommender Systems

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Abstract

In the modern age and many prestigious applications use the recommendation method to play an important role. The system of recommendations collected apps, built a global village and provided enough information for development. This paper presents an overview of the approaches and techniques produced in the recommendation framework for collaborative filtering. Collaborative filtering, material and hybrid methods were the method of recommendation. In producing personalised recommendation the technique of collaborative filtering is particularly effective. There have been several algorithms over ten years of study, but no distinctions have been made between the various strategies. Indeed, there is not yet a widely agreed way to test a collaborative filtering algorithm. In this work we compare various literature techniques and review each one's characteristics to emphasise their key strengths and weaknesses.

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Nallamala, S. H., Bajjuri, U. R., Anandarao, S., Prasad, D. D. D., & Mishra, D. P. (2020). A Brief Analysis of Collaborative and Content Based Filtering Algorithms used in Recommender Systems. In IOP Conference Series: Materials Science and Engineering (Vol. 981). IOP Publishing Ltd. https://doi.org/10.1088/1757-899X/981/2/022008

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