scholarly journals Twitter text mining for sentiment analysis on government’s response to forest fires with vader lexicon polarity detection and k-nearest neighbor algorithm

2020 ◽  
Vol 1567 ◽  
pp. 032024
Author(s):  
T Mustaqim ◽  
K Umam ◽  
M A Muslim
2020 ◽  
Vol 5 (1) ◽  
pp. 77-85
Author(s):  
Heru Pramono Hadi ◽  
Titien S. Sukamto

Feedback masyarakat terhadap pelayanan pemerintah merupakan elemen penting dalam proses evaluasi dan peningkatan kinerja. Maka dari itu pemerintah perlu untuk memiliki metode pelaporan yang efektif, efisien dan sistematis. Feedback masyarakat dapat berupa pengaduan, permintaan informasi dan aspirasi. Salah satu cara penyampain feedback masyarakat adalah melalui media sosial. Klasifikasi jenis laporan/feedback masyarakat ini penting dilakukan untuk mempercepat proses penanggapan laporan. Algoritma K-Nearest neighbor pada metode text mining ini merupakan salah satu solusi untuk dapat membantu proses klasifikasi jenis laporan. Dengan 930 data latih dan 100 data uji laporan masyarakat tahun 2017 yang disampaikan melalui media sosial, menghasilkan nilai akurasi tertinggi k=11 sebesar 82%.


2018 ◽  
Author(s):  
I Wayan Agus Surya Darma

Balinese character recognition is a technique to recognize feature or pattern of Balinese character. Feature of Balinese character is generated through feature extraction process. This research using handwritten Balinese character. Feature extraction is a process to obtain the feature of character. In this research, feature extraction process generated semantic and direction feature of handwritten Balinese character. Recognition is using K-Nearest Neighbor algorithm to recognize 81 handwritten Balinese character. The feature of Balinese character images tester are compared with reference features. Result of the recognition system with K=3 and reference=10 is achieved a success rate of 97,53%.


2021 ◽  
Vol 11 (15) ◽  
pp. 7132
Author(s):  
Jianfeng Xi ◽  
Shiqing Wang ◽  
Tongqiang Ding ◽  
Jian Tian ◽  
Hui Shao ◽  
...  

Whether in developing or developed countries, traffic accidents caused by freight vehicles are responsible for more than 10% of deaths of all traffic accidents. Fatigue driving is one of the main causes of freight vehicle accidents. Existing fatigue driving studies mostly use vehicle operating data from experiments or simulation data, exposing certain drawbacks in the validity and reliability of the models used. This study collected a large quantity of real driving data to extract sample data under different fatigue degrees. The parameters of vehicle operating data were selected based on significant driver fatigue degrees. The k-nearest neighbor algorithm was used to establish the detection model of fatigue driving behaviors, taking into account influence of the number of training samples and other parameters in the accuracy of fatigue driving behavior detection. With the collected operating data of 50 freight vehicles in the past month, the fatigue driving behavior detection models based on the k-nearest neighbor algorithm and the commonly used BP neural network proposed in this paper were tested, respectively. The analysis results showed that the accuracy of both models are 75.9%, but the fatigue driving detection model based on the k-nearest neighbor algorithm is more reliable.


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