The use of Recommender Systems in web technology and an in-depth
analysis of Cold State problem
- URL: http://arxiv.org/abs/2009.04780v1
- Date: Thu, 10 Sep 2020 11:32:59 GMT
- Title: The use of Recommender Systems in web technology and an in-depth
analysis of Cold State problem
- Authors: Denis Selimi, Krenare Pireva Nuci
- Abstract summary: recommender systems provide personalized view for prioritizing items likely to be of keen for users.
They have developed over the years in artificial intelligence techniques that include machine learning and data mining.
This paper aims to tackle the said cold-start problem with a few methods and challenges.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: In the WWW (World Wide Web), dynamic development and spread of data has
resulted a tremendous amount of information available on the Internet, yet user
is unable to find relevant information in a short span of time. Consequently, a
system called recommendation system developed to help users find their
infromation with ease through their browsing activities. In other words,
recommender systems are tools for interacting with large amount of information
that provide personalized view for prioritizing items likely to be of keen for
users. They have developed over the years in artificial intelligence techniques
that include machine learning and data mining amongst many to mention.
Furthermore, the recommendation systems have personalized on an e-commerce,
on-line applications such as Amazon.com, Netflix, and Booking.com. As a result,
this has inspired many researchers to extend the reach of recommendation
systems into new sets of challenges and problem areas that are yet to be truly
solved, primarily a problem with the case of making a recommendation to a new
user that is called cold-state (i.e. cold-start) user problem where the new
user might likely not yield much of information searched. Therfore, the purpose
of this paper is to tackle the said cold-start problem with a few effecient
methods and challenges, as well as identify and overview the current state of
recommendation system as a whole
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