Tosin Agagu

Work place: University of Ottawa, Ottawa, K1N 6N5, Canada

E-mail: tagag045@uottawa.ca

Website:

Research Interests: Computational Science and Engineering, Computational Engineering, Software Construction, Software Development Process, Software Engineering

Biography

Tosin Agagu was born in Nigeria on the 22nd of July, 1991. Agagu received his MCS in computer science from the university of Ottawa, Ontario, Canada in 2018. Agagu has a B.Tech. in information technology from the Bells university of technology, Ogun state, Nigeria in 2012.

He works as a Software Engineer at Shopify, Canada.

Author Articles
Context-Aware Recommendation Methods

By Tosin Agagu Thomas Tran

DOI: https://doi.org/10.5815/ijisa.2018.09.01, Pub. Date: 8 Sep. 2018

A context-aware recommender system attempts to generate better recommendations using contextual information. However, generating recommendations for specific contexts have been challenging because of the difficulties in using contextual information to enhance the capabilities of recommender systems.
Several methods have been used to incorporate contextual information into traditional recommendation algorithms and data modeling techniques. These methods focus on incorporating contextual information to improve general recommendations for users rather than identifying the different context applicable to the user and providing recommendations geared towards those specific contexts.
We develop two methods: the first method attaches user preference across multiple contextual conditions, assuming that user preference remains the same, but the suitability of items differs across different contextual conditions. The second method assumes that item suitability remains the same across different contextual conditions but user preference changes.
We perform some experiments on the last.fm dataset to evaluate our methods. We also compared our work to other context-aware recommendation approaches. Our results show that grouping ratings by context and jointly factorizing with common factors improves prediction accuracy.

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