Utilizing Alike Neighbor Influenced Similarity Metric for Efficient Prediction in Collaborative Filter-Approach-Based Recommendation System
Permanent link
https://hdl.handle.net/10037/27591Date
2022-11-17Type
Journal articleTidsskriftartikkel
Peer reviewed
Author
Singh, Raushan Kumar; Singh, Pradeep Kumar; Singh, Juginder Pal; Singh, Akhilesh Kumar; Dhanasekaran, SeshathiriAbstract
The most popular method collaborative filter approach is primarily used to handle the
information overloading problem in E-Commerce. Traditionally, collaborative filtering uses ratings
of similar users for predicting the target item. Similarity calculation in the sparse dataset greatly
influences the predicted rating, as less count of co-rated items may degrade the performance of the
collaborative filtering. However, consideration of item features to find the nearest neighbor can
be a more judicious approach to increase the proportion of similar users. In this study, we offer a
new paradigm for raising the rating prediction accuracy in collaborative filtering. The proposed
framework uses rated items of the similar feature of the ’most’ similar individuals, instead of using the
wisdom of the crowd. The reliability of the proposed framework is evaluated on the static MovieLens
datasets and the experimental results corroborate our anticipations.
Publisher
MDPICitation
Singh, Singh PK, Singh, Singh, Dhanasekaran S. Utilizing Alike Neighbor Influenced Similarity Metric for Efficient Prediction in Collaborative Filter-Approach-Based Recommendation System. Applied Sciences. 2022;12(22)Metadata
Show full item recordCollections
Copyright 2022 The Author(s)