TY - JOUR AU - Costa, Felipe Schneider AU - Pires, Maria Marlene De Souza AU - Nassar, Silvia Modesto PY - 2013 TI - ANALYSIS OF BAYESIAN CLASSIFIER ACCURACY JF - Journal of Computer Science VL - 9 IS - 11 DO - 10.3844/jcssp.2013.1487.1495 UR - https://thescipub.com/abstract/jcssp.2013.1487.1495 AB - The naïve Bayes classifier is considered one of the most effective classification algorithms today, competing with more modern and sophisticated classifiers. Despite being based on unrealistic (naïve) assumption that all variables are independent, given the output class, the classifier provides proper results. However, depending on the scenario utilized (network structure, number of samples or training cases, number of variables), the network may not provide appropriate results. This study uses a process variable selection, using the chi-squared test to verify the existence of dependence between variables in the data model in order to identify the reasons which prevent a Bayesian network to provide good performance. A detailed analysis of the data is also proposed, unlike other existing work, as well as adjustments in case of limit values between two adjacent classes. Furthermore, variable weights are used in the calculation of a posteriori probabilities, calculated with mutual information function. Tests were applied in both a naïve Bayesian network and a hierarchical Bayesian network. After testing, a significant reduction in error rate has been observed. The naïve Bayesian network presented a drop in error rates from twenty five percent to five percent, considering the initial results of the classification process. In the hierarchical network, there was not only a drop in fifteen percent error rate, but also the final result came to zero.