Feature selection for multi-label naive Bayes classification

2009 ◽  
Vol 179 (19) ◽  
pp. 3218-3229 ◽  
Author(s):  
Min-Ling Zhang ◽  
José M. Peña ◽  
Victor Robles
2020 ◽  
Vol 7 (1) ◽  
pp. 46-54
Author(s):  
Jasman Pardede

Pesatnya perkembangan teknologi dan media sosial dapat memudahkan pengguna untuk menyampaikan informasi. Selain itu, media sosial juga memberikan dampak negatif dengan cara memposting tulisan kejam atau berkomentar semena-mena tanpa memikirkan akibat pada orang lain. Hal inilah yang menjadikan salah satu terjadinya tindak kekerasan dalam dunia maya (Cyberbullying). Tahapan awal yang dilakukan dalam penelitian ini adalah pengolahan bahasa atau yang disebut dengan text preprocessing meliputi tokenizing,casefolding, stopword removal dan stemming. Kemudian feature selection yaitu mengubah dokument teks menjadi matriks dengan tujuan untuk mendapatkan fitur pada setiap kata untuk dijadikan parameter atau kriteria klasifikasi. Untuk pengambilan keputusan apakah komentar mengandung makna bully atau nonbully menggunakan algoritma Naïve Bayes Classification dengan model multinomial naïve bayes. Perhitungan yang dilakukan adalah menghitung nilai probabilitas setiap kata yang muncul berdasarkan classdan nilai perkalian class conditional probability. Berdasarkan hasil eksperimen menggunakan dataset “cyberbullying comments” yang diambil dari Kaggle  akurasi yang didapat sebesar 80%, precission 81% dan recall 80%.


2016 ◽  
Vol 97 ◽  
pp. 141-149 ◽  
Author(s):  
Hui Zhang ◽  
Zhi-Xing Cao ◽  
Meng Li ◽  
Yu-Zhi Li ◽  
Cheng Peng

2018 ◽  
Vol 14 (1) ◽  
pp. 155014771875603 ◽  
Author(s):  
Yao-Hua Ho ◽  
Yu-Te Huang ◽  
Hao-Hua Chu ◽  
Ling-Jyh Chen

Environmental sensors are important for collecting data to understand environmental changes and analyze environmental issues. In order to effectively monitor environmental changes, high-density sensor deployment and evenly distributed spatial distance between sensors become the requirements and desired properties for such applications. In many applications, sensors are deployed in locations that are difficult and dangerous to reach (e.g. mountaintop or skyscraper roof). To collect data from those sensors, unmanned aerial vehicles are used to act as data mules to overcome the problem of collecting data in challenging environments. In this article, we extend the adaptive return-to-home sensing algorithm with a parameter-tuning algorithm that combines naive Bayes classification and binary search to adapt adaptive return-to-home sensing parameters effectively on the fly. The proposed approach is able to (1) optimize number of sensing attempts, (2) reduce oscillation of the distance for consecutive attempts, and (3) reserve enough power for drone to return-to-home. Our results show that the naive Bayes classification–enhanced adaptive return-to-home sensing scheme is able to avoid oscillation in sensing and guarantees return-to-home feature while behaving more cost-effective in parameter tuning than the other machine learning–based approaches.


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