Hyred - HYbrid Job REcommenDation System
Bruno Coelho, Fernando Costa, Gil M. Gonçalves
2015
Abstract
Nowadays people search job opportunities or candidates mainly online, where several websites for this purpose already do exist (LinkedIn, Guru and oDesk, amongst others). This task is especially difficult because of the large number of items to look for and manual compatibility verification. What we propose in this paper is a Hybrid Job Recommendation System that considers the user model (content-based filtering) and social interactions (collaborative filtering) to improve the quality of its recommendations. Our solution is also able to generate adequate teams for a given job opportunity, based not only on the needed competences but also on the social compatibility between their members.
References
- Blanchard, E., Harzallah, M., Briand, H. and Kuntz, P., 2005. A typology of ontology-based semantic measures. s.l., s.n.
- Datta, A., Braghin, S. and Yong, J. T. T., 2013. The Zen of Multidisciplinary Team Recommendation. In: Journal of the Association for Information Science and Technology. s.l.:s.n.
- Datta, A., Yong, J. T. T. and Ventresque, A., 2011. T-RecS: Team Recommendation System through Expertise. s.l., s.n.
- de Rond, M., 2012. Why Less Is More in Teams. Harvard Business Review.
- Lu, Y., Helou, S. E. and Gillet, D., 2013. A recommender system for job seeking and recruiting website. s.l., s.n.
- Putnam, D., 2015. Haste Makes Waste When You OverStaff to Achieve Schedule Compression. [Online].
- Rauch, K. L., Scholar, M. and University, P. S., 2003. Human Mate Selection: An Exploration of Assortative. s.l., s.n.
- Ringelmann, M., 1913. Recherches sur les moteurs animés: Travail de l'homme. In: Annales de l'Institut National Agronomique. s.l.:s.n.
- Sahebi, S. and Cohen, W., 2011. Community-Based Recommendations: a Solution to the Cold Start Problem. s.l., s.n.
- Simms, A. and Nichols, T., 2014. Social Loafing: A Review of the Literature. In: Journal of Management Policy and Practice. s.l.:s.n.
- Smith, C., 2015. By the Numbers: 12 Interesting LinkedIn Job Statistics. [Online].
- University, W., 2006. Is Your Team Too Big? Too Small? What's the Right Number?. [Online].
- Wagner, K., 2014. LinkedIn Hits 300 Million Users Amid Mobile Push. [Online].
- Widmeyer, W. N., Brawley, L. and Carron, A., 1985. The measurement of cohesion in sport teams: the Group Environment Questionnaire. s.l.:s.n.
- Yu, H., Liu, C. and Zhang, F., 2011. Reciprocal Recommendation Algorithm for the Field of Recruitment. In: Journal of Information and Computational Science. s.l.:s.n.
Paper Citation
in Harvard Style
Coelho B., Costa F. and M. Gonçalves G. (2015). Hyred - HYbrid Job REcommenDation System . In Proceedings of the 12th International Conference on e-Business - Volume 1: ICE-B, (ICETE 2015) ISBN 978-989-758-113-7, pages 29-38. DOI: 10.5220/0005569200290038
in Bibtex Style
@conference{ice-b15,
author={Bruno Coelho and Fernando Costa and Gil M. Gonçalves},
title={Hyred - HYbrid Job REcommenDation System},
booktitle={Proceedings of the 12th International Conference on e-Business - Volume 1: ICE-B, (ICETE 2015)},
year={2015},
pages={29-38},
publisher={SciTePress},
organization={INSTICC},
doi={10.5220/0005569200290038},
isbn={978-989-758-113-7},
}
in EndNote Style
TY - CONF
JO - Proceedings of the 12th International Conference on e-Business - Volume 1: ICE-B, (ICETE 2015)
TI - Hyred - HYbrid Job REcommenDation System
SN - 978-989-758-113-7
AU - Coelho B.
AU - Costa F.
AU - M. Gonçalves G.
PY - 2015
SP - 29
EP - 38
DO - 10.5220/0005569200290038