Review and Analysis of Machine Learning and Soft Computing Approaches for User Modeling

  • Potey M
  • K Sinha P
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Abstract

The adequacy of user models depends mainly on the accuracy and precision of information that is retrieved to the user. The real challenge in user modelling studies is due to the inadequacy of data, improper use of techniques, noise within the data and imprecise nature of human behavior. For the best results of user modelling, one should choose an appropriate way to do it i.e. by selecting the best suitable approach for the desired domain. Machine learning and Soft computing Techniques have the ability to handle the uncertainty and are extensively being used for user modeling purpose. This paper reviews various approaches of user modeling and critically analyzes the machine learning and soft computing techniques that have successfully captured and formally modelled the human behavior. KEYWORDS User Model, personalization, relevance, context modeling, user profiles, relevance feedback, behavior modeling adaptive user model.

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Potey, M., & K Sinha, P. (2015). Review and Analysis of Machine Learning and Soft Computing Approaches for User Modeling. International Journal of Web & Semantic Technology, 6(1), 39–55. https://doi.org/10.5121/ijwest.2015.6104

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