The efficiency of hidden naïve bayes technique compared with data mining techniques in early diagnosis of diabetes and prediction system

The efficiency of classification techniques largely varies on the techniques used and the data sets. A classifier process efficiency lies in how accurately, it categorizes the item. The technique of classification finds the relationships between the predictor's worth and the goal values. This p...

সম্পূর্ণ বিবরণ

গ্রন্থ-পঞ্জীর বিবরন
প্রধান লেখক: Bassam Abdo, Al-Hameli, Alsewari, Abdulrahman A.
বিন্যাস: Conference or Workshop Item
ভাষা:English
English
প্রকাশিত: Universiti Malaysia Pahang 2020
বিষয়গুলি:
অনলাইন ব্যবহার করুন:http://umpir.ump.edu.my/id/eprint/28848/1/34.%20The%20efficiency%20of%20hidden%20na%C3%AFve%20bayes%20technique.pdf
http://umpir.ump.edu.my/id/eprint/28848/2/34.1%20The%20efficiency%20of%20hidden%20na%C3%AFve%20bayes%20technique.pdf
বিবরন
সংক্ষিপ্ত:The efficiency of classification techniques largely varies on the techniques used and the data sets. A classifier process efficiency lies in how accurately, it categorizes the item. The technique of classification finds the relationships between the predictor's worth and the goal values. This paper is an in-depth study of the Hidden Naïve Bayes (HNB) classification technique compared to state-of-the-art techniques in the medical field, which have demonstrated HNB efficiency and ability to increase the accuracy of prediction. This study examines the efficiency of the four machine learning techniques including HNB, Decision Tree C4.5, Naive Bayes (NB), and Support Vector Machine (SVM) on the diabetes data set to identify the possibility of creating predictive models with real impact. The four classification techniques are studied and analyzed, then their efficiency is evaluated for the PID dataset in terms of accuracy, precision, F-measure, and recall, in addition to other performance measures. The outcome of this analysis shows that HNB is more reliable than other techniques.