Comparison of Naive Bayes Method with Support Vector Machine in Helpdesk Ticket Classification
Abstract
The technical support department or helpdesk department is a unit that requires a quick response in handling its tasks. The company's helpdesk team can consist of several individuals who know specific or specialized issues. Typically, technical problems are handled with an application that can track issues based on tickets. Ticket queue systems are used to facilitate control over the actions of the service or repair provided by the team. Helpdesk applications assist in addressing issues reported by users and then help upper-level management distribute tasks and monitor the helpdesk team's performance, including providing solutions to users' various problems. This research aims to predict the placement of fields that serve assistance based on the corpus users provide in the natural language. Prediction modelling is done using the Naïve Bayes and Support Vector Machine algorithms. The modelling results show that the accuracy rate of helpdesk service prediction with the Naïve Bayes algorithm reaches 82.06%, while the accuracy rate of prediction with the Support Vector Machine algorithm reaches 85.30%.
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References
Altintaġ and A. C. Tantuğ, “Machine Learning-Based Ticket Classification in Issue-Tracking Systems,” 2014. [Online]. Available: http://worldconferences.net/
R. Feldman and J. Sanger, The text mining handbook : advanced approaches in analyzing unstructured data. Cambridge University Press, 2007.
J. Han, M. Kamber, and J. Pei, “Data Mining. Concepts and Techniques, 3rd Edition (The Morgan Kaufmann Series in Data Management Systems),” 2011.
A. Kulkarni and A. Shivananda, Natural Language Processing Recipes. Apress, 2019. doi: 10.1007/978-1-4842-4267-4.
Yuda S. Nugroho, “Data Mining Menggunakan Algoritma Naïve Bayes Untuk Klasifikasi Kelulusan Mahasiswa Universitas Dian Nuswantoro.”
S. Prayoginingsih and R. P. Kusumawardani, “Klasifikasi Data Twitter Pelanggan Berdasarkan Kategori myTelkomsel Menggunakan Metode Support Vector Machine (SVM) Studi Kasus: Telekomunikasi Selular,” 2017.
H. T. A. Antonius Yadi Kuntoro, “Klasifikasi Keluhan Pengguna KAI Access Untuk Pemesanan Tiket Dengan Algoritma SVM Dan Naïve Bayes”.
D. D. Saputra, B. Pratama, Y. Akbar, and W. Gata, “Penerapan Text Mining Untuk Assignment Complaint Handling Customer Terhadap Divisi Terkait Menggunakan Metode Decision Tree Algoritma C4.5 (Studi Case : PT. XL Axiata, Tbk),” CKI On SPOT, vol. 11, no. 2, 2018.
S. Hilda Kusumahadi, H. Junaedi, and J. Santoso, “Klasifikasi Helpdesk Menggunakan Metode Support Vector Machine,” Jurnal Informatika: Jurnal Pengembangan IT, vol. 4, no. 1, pp. 54–60, Jan. 2019, doi: 10.30591/jpit.v4i1.1125.
S. Russell and P. Norvig, “Artificial Intelligence A Modern Approach Third Edition,” 2010.
I. N. T. Wirawan and I. Eksistyanto, “Penerapan Naive Bayes Pada Intrusion Detection System Dengan Diskritisasi Variabel.”
C. Putra and E. Irawati, “Algoritma Support Vector Machine Untuk Mendeteksi Sms Spam Berbahasa Indonesia,” 2015.
Muhammad Yusril Helmi Setyawan, Rolly Maulana Awangga, and Safif Rafi Efendi, Comparison Of Multinomial Naive Bayes Algorithm And Logistic Regression For Intent Classification In Chatbot.
D. M. Abdullah, “Machine Learning Applications based on SVM Classification: A Review”, doi: 10.48161/Issn.2709-8206.
D. N. Fitriana and Y. Sibaroni, “Sentiment Analysis on KAI Twitter Post Using Multiclass Support Vector Machine (SVM),” Accredited by National Journal Accreditation, vol. 4, no. 2, pp. 846–853, 2020, [Online]. Available: http://jurnal.iaii.or.id
S. Land and S. Fischer, “RapidMiner 5 RapidMiner in academic use.” [Online]. Available: www.rapid-i.com
M. W. Berry and J. Kog, “Text Mining: Applications and Theory,” 2010
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