APPLICATION OF MULTI-CRITERIA ANALYSIS BASED ON THE INDIVIDUAL PSYCHOLOGICAL PROFILE FOR RECOMMENDER SYSTEMS

Authors

  • Maria Rafalak Polish Japanese Academy of Information Technology
  • Janusz Granat National Institute of Telecomunications
  • Andrzej Piotr Wierzbicki National Institute of Telecomunications,

DOI:

https://doi.org/10.7494/csci.2016.17.4.503

Keywords:

recommender systems, multi-criteria analysis, user profiling

Abstract

This paper presents a novel approach for user classification exploiting multicriteria
analysis. This method is based on measuring the distance between an
observation and its respective Pareto front. The obtained results show that the
combination of the standard KNN classification and the distance from Pareto
fronts gives satisfactory classification accuracy – higher than the accuracy obtained
for each of these methods applied separately. Conclusions from this
study may be applied in recommender systems where the proposed method
can be implemented as the part of the collaborative filtering algorithm.

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Author Biographies

Maria Rafalak, Polish Japanese Academy of Information Technology

Phd student

Janusz Granat, National Institute of Telecomunications

PhD

Andrzej Piotr Wierzbicki, National Institute of Telecomunications,

Professor

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Published

2017-01-10

How to Cite

Rafalak, M., Granat, J., & Wierzbicki, A. P. (2017). APPLICATION OF MULTI-CRITERIA ANALYSIS BASED ON THE INDIVIDUAL PSYCHOLOGICAL PROFILE FOR RECOMMENDER SYSTEMS. Computer Science, 17(4), 503. https://doi.org/10.7494/csci.2016.17.4.503

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