Title :
An efficient and scalable recommender system for the smart web
Author :
Alejandro Baldominos;Yago Saez;Esperanza Albacete;Ignacio Marrero
Author_Institution :
Computer Science Dept. Universidad Carlos III de Madrid
Abstract :
This work describes the development of a web recommender system implementing both collaborative filtering and content-based filtering. Moreover, it supports two different working modes, either sponsored or related, depending on whether websites are to be recommended based on a list of ongoing ad campaigns or in the user preferences. Novel recommendation algorithms are proposed and implemented, which fully rely on set operations such as union and intersection in order to compute the set of recommendations to be provided to end users. The recommender system is deployed over a real-time big data architecture designed to work with Apache Hadoop ecosystem, thus supporting horizontal scalability, and is able to provide recommendations as a service by means of a RESTful API. The performance of the recommender is measured, resulting in the system being able to provide dozens of recommendations in few milliseconds in a single-node cluster setup.
Keywords :
"Recommender systems","Uniform resource locators","Collaboration","Computer architecture","Big data","Algorithm design and analysis","Real-time systems"
Conference_Titel :
Innovations in Information Technology (IIT), 2015 11th International Conference on
Print_ISBN :
978-1-4673-8509-1
DOI :
10.1109/INNOVATIONS.2015.7381557