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Title Making use of associative classifiers in order to alleviate typical drawbacks in recommender systems
Authors María N. Moreno García
Summary Nowadays, there is a constant need for personalization in e-commerce systems. Recommender systems make suggestions and provide information about items available, however, many recommender techniques are still vulnerable to some shortcomings. In this work, we analyze how methods employed in these systems are affected by some typical drawbacks. Hence, we conduct a case study using data gathered from real recommender systems in order to investigate what machine learning methods can alleviate such drawbacks. Due to some especial features inherited by associative classifiers, we give a particular attention to this category of methods to test their capability of dealing with typical drawbacks.
Magazine name Expert Systems with Applications
Magazine number 39
Initial page 1273
End page 1283
Year 2012
Volume 1
ISSN 0957-4174
Last impact factors 2.203 (2011)
DOI 10.1016/j.eswa.2011.07.136
Link http://www.sciencedirect.com/science/article/pii/S0957417411011092?_rdoc=134&_fmt=high&_origin=browse&_srch=hubEid(1-s2.0-S0957417411X00106)&_docanchor=&_ct=167&_refLink=Y&_zone=rslt_list_item&md5=bffd4fa6fdf0a9065f519801fdb3d56a
Keywords Recommender systems, Association
Number of appointments
Bibtex