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Article
A Comparison of the Effects of K-Anonymity on Machine Learning Algorithms
International Journal of Advanced Computer Science and Applications (2014)
  • Hayden Wimmer, Georgia Southern University
  • Loreen Powell, Bloomsburg University
Abstract
While research has been conducted in machine learning algorithms and in privacy preserving in data mining (PPDM), a gap in the literature exists which combines the aforementioned areas to determine how PPDM affects common machine learning algorithms. The aim of this research is to narrow this literature gap by investigating how a common PPDM algorithm, K-Anonymity, affects common machine learning and data mining algorithms, namely neural networks, logistic regression, decision trees, and Bayesian classifiers. This applied research reveals practical implications for applying PPDM to data mining and machine learning and serves as a critical first step learning how to apply PPDM to machine learning algorithms and the effects of PPDM on machine learning. Results indicate that certain machine learning algorithms are more suited for use with PPDM techniques.
Keywords
  • Privacy preserving,
  • Data mining,
  • Machine learning,
  • Decision tree,
  • Neural network,
  • Logistic regression,
  • Bayesian classifier
Publication Date
2014
DOI
10.14569/IJACSA.2014.051126
Citation Information
Hayden Wimmer and Loreen Powell. "A Comparison of the Effects of K-Anonymity on Machine Learning Algorithms" International Journal of Advanced Computer Science and Applications Vol. 5 Iss. 11 (2014) p. 155 - 160 ISSN: 2156-5570
Available at: http://works.bepress.com/hayden-wimmer/46/