Combining Instance Weighting and Fine Tuning for Training Naïve Bayesian Classifiers with Scant Trai

Combining Instance Weighting and Fine Tuning for Training Naïve Bayesian Classifiers with Scant Training Data

Khalil El Hindi

Department of Computer Science, King Saud University, Saudi Arabia

Abstract: This work addresses the problem of having to train a Naïve Bayesian classifier using limited data. It first presents an improved instance-weighting algorithm that is accurate and robust to noise and then it shows how to combine it with a fine tuning algorithm to achieve even better classification accuracy. Our empirical work using 49 benchmark data sets shows that the improved instance-weighting method outperforms the original algorithm on both noisy and noise-free data sets. Another set of empirical results indicates that combining the instance-weighting algorithm with the fine tuning algorithm gives better classification accuracy than using either one of them alone.

Keywords: Naïve bayesian algorithm, classification, machine learning, noisy data sets, instance weighting.

Received April 4, 2016; accepted June 7, 2016
 
Read 965 times Last modified on Thursday, 11 October 2018 04:32
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