E-mail classification with machine learning and word embeddings for improved customer support
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Published:2020-06-19
Issue:6
Volume:33
Page:1881-1902
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ISSN:0941-0643
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Container-title:Neural Computing and Applications
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language:en
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Short-container-title:Neural Comput & Applic
Author:
Borg AntonORCID, Boldt Martin, Rosander Oliver, Ahlstrand Jim
Abstract
AbstractClassifying e-mails into distinct labels can have a great impact on customer support. By using machine learning to label e-mails, the system can set up queues containing e-mails of a specific category. This enables support personnel to handle request quicker and more easily by selecting a queue that match their expertise. This study aims to improve a manually defined rule-based algorithm, currently implemented at a large telecom company, by using machine learning. The proposed model should have higher $$F_1$$
F
1
-score and classification rate. Integrating or migrating from a manually defined rule-based model to a machine learning model should also reduce the administrative and maintenance work. It should also make the model more flexible. By using the frameworks, TensorFlow, Scikit-learn and Gensim, the authors conduct a number of experiments to test the performance of several common machine learning algorithms, text-representations, word embeddings to investigate how they work together. A long short-term memory network showed best classification performance with an $$F_1$$
F
1
-score of 0.91. The authors conclude that long short-term memory networks outperform other non-sequential models such as support vector machines and AdaBoost when predicting labels for e-mails. Further, the study also presents a Web-based interface that were implemented around the LSTM network, which can classify e-mails into 33 different labels.
Funder
Stiftelsen för Kunskapsoch Kompetensutveckling
Publisher
Springer Science and Business Media LLC
Subject
Artificial Intelligence,Software
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