Javascript must be enabled to continue!
Perfomance analysis of Naive Bayes method with data weighting
View through CrossRef
Classification using naive bayes algorithm for air quality dataset has an accuracy rate of 39.97%. This result is considered not good and by using all existing data attributes. By doing pre-processing, namely feature selection using the gain ratio algorithm, the accuracy of the Naive Bayes algorithm increases to 61.76%. This proves that the gain ratio algorithm can improve the performance of the naive bayes algorithm for air quality dataset classification. Classification using naive bayes algorithm for air quality dataset. While the Water Quality dataset has an accuracy rate of 93.18%. These results are considered good and by using all the existing data attributes. By doing pre-processing, namely feature selection using the gain ratio algorithm, the accuracy of the Naive Bayes algorithm increases to 95.73%. This proves that the gain ratio algorithm can improve the performance of the naive bayes algorithm for air quality dataset classification. Classification using Naive Bayes algorithm for Water Quality dataset. Based on the tests that have been carried out on all data, it can be seen that the Weight nave Bayes classification model can provide better accuracy values because there is a change in the weighting of the attribute values in the dataset used. The value of the weighted Gain ratio is used to calculate the probability in Nave Bayes, which is a parameter to see the relationship between each attribute in the data, and is used as the basis for the weighting of each attribute of the dataset. The higher the Gain ratio of an attribute, the greater the relationship to the data class. So that the accuracy value increases than the accuracy value generated by the Naïve Bayes classification model. The increase in accuracy in the Naïve Bayes classification model is due to the number of weights from the attribute selection in the Gain ratio.
Title: Perfomance analysis of Naive Bayes method with data weighting
Description:
Classification using naive bayes algorithm for air quality dataset has an accuracy rate of 39.
97%.
This result is considered not good and by using all existing data attributes.
By doing pre-processing, namely feature selection using the gain ratio algorithm, the accuracy of the Naive Bayes algorithm increases to 61.
76%.
This proves that the gain ratio algorithm can improve the performance of the naive bayes algorithm for air quality dataset classification.
Classification using naive bayes algorithm for air quality dataset.
While the Water Quality dataset has an accuracy rate of 93.
18%.
These results are considered good and by using all the existing data attributes.
By doing pre-processing, namely feature selection using the gain ratio algorithm, the accuracy of the Naive Bayes algorithm increases to 95.
73%.
This proves that the gain ratio algorithm can improve the performance of the naive bayes algorithm for air quality dataset classification.
Classification using Naive Bayes algorithm for Water Quality dataset.
Based on the tests that have been carried out on all data, it can be seen that the Weight nave Bayes classification model can provide better accuracy values because there is a change in the weighting of the attribute values in the dataset used.
The value of the weighted Gain ratio is used to calculate the probability in Nave Bayes, which is a parameter to see the relationship between each attribute in the data, and is used as the basis for the weighting of each attribute of the dataset.
The higher the Gain ratio of an attribute, the greater the relationship to the data class.
So that the accuracy value increases than the accuracy value generated by the Naïve Bayes classification model.
The increase in accuracy in the Naïve Bayes classification model is due to the number of weights from the attribute selection in the Gain ratio.
Related Results
PENERAPAN METODE NAIVE BAYES UNTUK MEMPREDIKSI PENYAKIT JANTUNG
PENERAPAN METODE NAIVE BAYES UNTUK MEMPREDIKSI PENYAKIT JANTUNG
The heart is one of the human organs that has an important function to circulate blood throughout the body. In caring for the human heart, one must know how to take care of the hea...
Peningkatan Kinerja Metode Naive Bayes Dengan Particle Swarm Object Untuk Dataset Pemilihan Metode Melahirkan
Peningkatan Kinerja Metode Naive Bayes Dengan Particle Swarm Object Untuk Dataset Pemilihan Metode Melahirkan
Melahirkan merupakan fase terakhir yang harus dilalui seorang ibu untuk bertemu dengan bayi yang dikandungnya selama kurang lebih 38 minggu. Pemilihan proses persalinan yang tepat ...
Klasifikas Sampah Menggunakan Metode Naive Bayes
Klasifikas Sampah Menggunakan Metode Naive Bayes
Pengelolaan sampah merupakan permasalahan serius yang dihadapi di Indonesia akibat tingginya laju produksi sampah dari konsumsi masyarakat, perkembangan industri, serta rendahnya s...
Penerapan Algoritma Naïve Bayes Classifier dalam Memprediksi Status Keberlanjutan Polis Nasabah Asuransi PT.X
Penerapan Algoritma Naïve Bayes Classifier dalam Memprediksi Status Keberlanjutan Polis Nasabah Asuransi PT.X
Abstract. This article discusses the classification in predicting the sustainability status of the health insurance customer policy of PT. X uses the Naïve Bayes Classifier Algorit...
Opinion Mining Pada Review Produk Kecantikan Menggunakan Algoritma Naïve Bayes
Opinion Mining Pada Review Produk Kecantikan Menggunakan Algoritma Naïve Bayes
Abstract— In recent years many sentiment analysis and opinion mining applications have been developed to analyze opinions, feelings and attitudes about products, brands, and news...
Klasifikasi Sentimen Masyarakat terhadap Presiden Indonesia Menggunakan Metode Naive Bayes
Klasifikasi Sentimen Masyarakat terhadap Presiden Indonesia Menggunakan Metode Naive Bayes
Abstract. Social media platform X has become an important platform for expressing public opinion, particularly in the political context, including the 2024 Presidential Election in...
Perbandingan Kinerja Algoritma Naïve Bayes Dan C.45 Dalam Klasifikasi Spam Email
Perbandingan Kinerja Algoritma Naïve Bayes Dan C.45 Dalam Klasifikasi Spam Email
Antispam dengan algoritma tertentu yang dapat memisahkan antara spam-mail dengan non spam mail. Perbandingan kinerja antara algoritma naïve bayes, dan decision tree yang memakai al...
Implementasi Analisa Penyakit Jantung Menggunakan Naïve Bayes
Implementasi Analisa Penyakit Jantung Menggunakan Naïve Bayes
Penyakit jantung adalah suatu penyebab utama kematian di dunia. Deteksi dini dapat membantu mengurangi angka mortalitas yang tinggi akibat penyakit ini. Dalam penelitian ini, algor...

