Combining instance weighting and fine tuning for training Naïve Bayesian classifiers with scant training data

-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 a...

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Veröffentlicht in:International arab journal of information technology 2018-11, Vol.15 (6), p.1099-1106
1. Verfasser: al-Hindi, Khalil
Format: Artikel
Sprache:eng
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Zusammenfassung:-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.
ISSN:1683-3198
1683-3198