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International Journal of Applied Information Systems
Foundation of Computer Science (FCS), NY, USA
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| Volume 12 - Issue 44 |
| Published: July 2024 |
| Authors: Kanishkar Indira, Kiruthi Thaker |
10.5120/ijca2023922852
|
Kanishkar Indira, Kiruthi Thaker . Data Security Concerns in Approaches to Overcome Cold Start Problem in Recommender Systems - A Survey. International Journal of Applied Information Systems. 12, 44 (July 2024), 41-46. DOI=10.5120/ijca2023922852
@article{ 10.5120/ijca2023922852,
author = { Kanishkar Indira,Kiruthi Thaker },
title = { Data Security Concerns in Approaches to Overcome Cold Start Problem in Recommender Systems - A Survey },
journal = { International Journal of Applied Information Systems },
year = { 2024 },
volume = { 12 },
number = { 44 },
pages = { 41-46 },
doi = { 10.5120/ijca2023922852 },
publisher = { Foundation of Computer Science (FCS), NY, USA }
}
%0 Journal Article
%D 2024
%A Kanishkar Indira
%A Kiruthi Thaker
%T Data Security Concerns in Approaches to Overcome Cold Start Problem in Recommender Systems - A Survey%T
%J International Journal of Applied Information Systems
%V 12
%N 44
%P 41-46
%R 10.5120/ijca2023922852
%I Foundation of Computer Science (FCS), NY, USA
In the subject of recommendation engines, the cold start problem is a significant research topic. Due to a lack of knowledge about the user and/or services, the recommendation system is unable to predict the user's preferences or interested products, resulting in a cold start. Many people have sought to overcome the cold start problem in recommending generic domains such as music, movies, E-Commerce, and travel websites using different types of machine learning models. This work provides a survey of the most recent to the traditional methods used for solving the cold start problem and also provides a holistic view of the adversarial attacks that are possible on the machine learning models used while trying to solve the cold start problem using the machine learning models.