Yıl: 2021 Cilt: 9 Sayı: 3 Sayfa Aralığı: 268 - 277 Metin Dili: İngilizce DOI: 10.17694/bajece.832274 İndeks Tarihi: 21-12-2021

Automatic Detection of the Topics in Customer Complaints with Artificial Intelligence

Öz:
Today, people first make their complaints and compliments on the internet about a product which they use or a company they are a customer of. Therefore, when they are going to buy a new product, they first analyze the complaints made by other users of the product. These complaints play an important role in helping people make decisions of purchasing or not purchasing products. It is impossible to analyze online complaints manually due to the huge data size. However, companies are still losing a lot of time by analyzing and reading thousands of complaints one by one. In this article, online text based customer complaints are analyzed with Latent Dirichlet Allocation (LDA), GenSim LDA, Mallet LDA and Gibbs Sampling for Dirichlet Multinomial Mixture model (GSDMM) and the performances of them are compared. It is observed that GSDMM gives much more successful results than LDA. The obtained topics of the complaints are presented to users with a mobile application developed in React Native. With the developed application not only the customers will be able to see the topics of complaint from the application interface but also the companies will be able to view the distribution and statistics of the topics of complaints.
Anahtar Kelime:

Belge Türü: Makale Makale Türü: Araştırma Makalesi Erişim Türü: Erişime Açık
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APA ilhan omurca s, Ekinci E, Yakupoğlu E, Arslan E, Çapar B (2021). Automatic Detection of the Topics in Customer Complaints with Artificial Intelligence. , 268 - 277. 10.17694/bajece.832274
Chicago ilhan omurca sevinç,Ekinci Ekin,Yakupoğlu Enes,Arslan Emirhan,Çapar Berkay Automatic Detection of the Topics in Customer Complaints with Artificial Intelligence. (2021): 268 - 277. 10.17694/bajece.832274
MLA ilhan omurca sevinç,Ekinci Ekin,Yakupoğlu Enes,Arslan Emirhan,Çapar Berkay Automatic Detection of the Topics in Customer Complaints with Artificial Intelligence. , 2021, ss.268 - 277. 10.17694/bajece.832274
AMA ilhan omurca s,Ekinci E,Yakupoğlu E,Arslan E,Çapar B Automatic Detection of the Topics in Customer Complaints with Artificial Intelligence. . 2021; 268 - 277. 10.17694/bajece.832274
Vancouver ilhan omurca s,Ekinci E,Yakupoğlu E,Arslan E,Çapar B Automatic Detection of the Topics in Customer Complaints with Artificial Intelligence. . 2021; 268 - 277. 10.17694/bajece.832274
IEEE ilhan omurca s,Ekinci E,Yakupoğlu E,Arslan E,Çapar B "Automatic Detection of the Topics in Customer Complaints with Artificial Intelligence." , ss.268 - 277, 2021. 10.17694/bajece.832274
ISNAD ilhan omurca, sevinç vd. "Automatic Detection of the Topics in Customer Complaints with Artificial Intelligence". (2021), 268-277. https://doi.org/10.17694/bajece.832274
APA ilhan omurca s, Ekinci E, Yakupoğlu E, Arslan E, Çapar B (2021). Automatic Detection of the Topics in Customer Complaints with Artificial Intelligence. Balkan Journal of Electrical and Computer Engineering, 9(3), 268 - 277. 10.17694/bajece.832274
Chicago ilhan omurca sevinç,Ekinci Ekin,Yakupoğlu Enes,Arslan Emirhan,Çapar Berkay Automatic Detection of the Topics in Customer Complaints with Artificial Intelligence. Balkan Journal of Electrical and Computer Engineering 9, no.3 (2021): 268 - 277. 10.17694/bajece.832274
MLA ilhan omurca sevinç,Ekinci Ekin,Yakupoğlu Enes,Arslan Emirhan,Çapar Berkay Automatic Detection of the Topics in Customer Complaints with Artificial Intelligence. Balkan Journal of Electrical and Computer Engineering, vol.9, no.3, 2021, ss.268 - 277. 10.17694/bajece.832274
AMA ilhan omurca s,Ekinci E,Yakupoğlu E,Arslan E,Çapar B Automatic Detection of the Topics in Customer Complaints with Artificial Intelligence. Balkan Journal of Electrical and Computer Engineering. 2021; 9(3): 268 - 277. 10.17694/bajece.832274
Vancouver ilhan omurca s,Ekinci E,Yakupoğlu E,Arslan E,Çapar B Automatic Detection of the Topics in Customer Complaints with Artificial Intelligence. Balkan Journal of Electrical and Computer Engineering. 2021; 9(3): 268 - 277. 10.17694/bajece.832274
IEEE ilhan omurca s,Ekinci E,Yakupoğlu E,Arslan E,Çapar B "Automatic Detection of the Topics in Customer Complaints with Artificial Intelligence." Balkan Journal of Electrical and Computer Engineering, 9, ss.268 - 277, 2021. 10.17694/bajece.832274
ISNAD ilhan omurca, sevinç vd. "Automatic Detection of the Topics in Customer Complaints with Artificial Intelligence". Balkan Journal of Electrical and Computer Engineering 9/3 (2021), 268-277. https://doi.org/10.17694/bajece.832274