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Original Articles

A ROle-Oriented Filtering (ROOF) approach for collaborative recommendation

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Pages 697-728 | Received 23 Feb 2013, Accepted 08 Sep 2014, Published online: 16 Dec 2014
 

Abstract

In collaborative filtering (CF) recommender systems, existing techniques frequently focus on determining similarities among users’ historical interests. This generally refers to situations in which each user normally plays a single role and his/her taste remains consistent over the long term. However, we note that existing techniques have not been significantly employed in a role-oriented context. This is especially so in situations where users may change their roles over time or play multiple roles simultaneously, while still expecting to access relevant information resources accordingly. Such systems include enterprise architecture management systems, e-commerce sites or journal management systems. In scenarios involving existing techniques, each user needs to build up very different profiles (preferences and interests) based on multiple roles which change over time. Should this not occur to a satisfactory degree, their previous information will either be lost or not utilised at all. To limit the occurrence of such issues, we propose a ROle-Oriented Filtering (ROOF) approach focusing on the manner in which multiple user profiles are obtained and maintained over time. We conducted a number of experiments using an enterprise architecture management scenario. In so doing, we observed that the ROOF approach performs better in comparison with other existing collaborative filtering-based techniques.

Acknowledgement

We are thankful to Universiti Teknologi Malaysia for providing the necessary facilities to conduct this research.

Conflict of interest disclosure statement

No potential conflict of interest was reported by the author(s).

Additional information

Funding

We would like to express our gratitude to Ministry of Higher Education for funding this research project under Vot: 4F315.

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