A hybrid recommender system to predict online job offer performance

With the expansion of internet to advertise, the number of potential channels is increasing every day. In the Human Resource domain, recruiters have to choose between hundreds of job search web sites when they post a job offer on the internet. In order to save costs, assessing job board expected performance has become necessary. In this paper, three recommender systems providing job board performance estimation for a given job posting are introduced. This work refers principally to the new item problem, which is still a challenging topic in the literature. The first system (PLS-R) is a content-based approach, while others are hybrid recommendation approaches. Estimation is made on item neighborhood according to a “naive” similarity or a supervised similarity measure. These predictive algorithms are compared through experiments on a real dataset. In this application, supervised similarity-based system overcomes the lacks of other approaches and outperforms them.

[1]  Upendra Shardanand Social information filtering for music recommendation , 1994 .

[2]  S. A. bano C. D. nn W. I. i Wold,et al.  Pattern recognition: finding and using regularities in multivariate data Food research, how to relate sets of measurements or observations to each other , 1983 .

[3]  Michael W. Berry,et al.  Mathematical Foundations Behind Latent Semantic Analysis , 2007 .

[4]  Michael I. Jordan,et al.  Latent Dirichlet Allocation , 2001, J. Mach. Learn. Res..

[5]  S. Wold,et al.  The multivariate calibration problem in chemistry solved by the PLS method , 1983 .

[6]  David M. Pennock,et al.  Categories and Subject Descriptors , 2001 .

[7]  Gerard Salton,et al.  A vector space model for automatic indexing , 1975, CACM.

[8]  A. Höskuldsson PLS regression methods , 1988 .

[9]  Michael J. Pazzani,et al.  Learning and Revising User Profiles: The Identification of Interesting Web Sites , 1997, Machine Learning.

[10]  Peter V. Gehler,et al.  The rate adapting poisson model for information retrieval and object recognition , 2006, ICML.

[11]  Loriene Roy,et al.  Content-based book recommending using learning for text categorization , 1999, DL '00.

[12]  Rémy Kessler Traitement automatique d'informations appliqué aux ressources humaines. (Automatic processing of information applied to human resources) , 2009 .

[13]  Gerald Salton,et al.  Automatic text processing , 1988 .

[14]  Gilbert Saporta,et al.  A comparison between latent semantic analysis and correspondence analysis , 2011 .

[15]  Pattie Maes,et al.  Social information filtering: algorithms for automating “word of mouth” , 1995, CHI '95.

[16]  Bradley N. Miller,et al.  GroupLens: applying collaborative filtering to Usenet news , 1997, CACM.

[17]  Richard A. Harshman,et al.  Indexing by Latent Semantic Analysis , 1990, J. Am. Soc. Inf. Sci..

[18]  Helmut Schmidt,et al.  Probabilistic part-of-speech tagging using decision trees , 1994 .

[19]  Gediminas Adomavicius,et al.  Toward the next generation of recommender systems: a survey of the state-of-the-art and possible extensions , 2005, IEEE Transactions on Knowledge and Data Engineering.

[20]  Ludovic Lebart,et al.  Exploring Textual Data , 1997 .

[21]  Yoav Shoham,et al.  Fab: content-based, collaborative recommendation , 1997, CACM.