Hybrid Bee Colony Trust Mechanism in Recommender System
Loading...
Files
Authors
Journal Title
Journal ISSN
Volume Title
Publisher
Abstract
In the era of internet, there is a lot of information on the web. The information whether
implicit or explicit is growing at an exponential rate, therefore perplexity in choosing the
products and services has also soared up. Thus recommender system, an automated
filtering mechanism, has been established to filter the information according to
individual’s behavior and preferences and provide best and accurate suggestions.
Recommendation can be in the form of verbal reviews, reviews about a movie or a book
in internet and newspaper, surveys, travel guides etc. Collaborative filtering is one of the
most popular and mature techniques in recommender system and evaluates items on the
basis of opinions of other people. But in spite of its adeptness, it still suffers from
problems such as cold start, sparsity, scalability and is susceptible to attacks like grey
sheep, shilling attacks etc. Thus a solution has been propounded, which involves the
collaboration of artificial bee colony, a swarm intelligence method, and trusted graph
mechanism with that of collaborative filtering. Swarm intelligence is an artificial
intelligence technique to study the behavior of insects in distributed systems while trust is
a measure of reliability of user based on its preferences and behavior with distinct context
at a particular time period. Former possess the adaptation, self organization and
distribution properties while latter removes the fake recommendations and develops faith
in the system. Thus the hybrid of these techniques increases the accuracy and robustness
of recommendations while eliminating the attacks prevailing in existing systems. The
proposed framework has been compared with other existing recommender system
approaches with different parameters and validated by using dataset of movies available
online
Description
ME, CSED
