Authors
Piero Molino, Huaixiu Zheng, Yi-Chia Wang
Publication date
2018/7/19
Book
Proceedings of the 24th ACM SIGKDD International Conference on Knowledge Discovery & Data Mining
Pages
586-595
Description
For a company looking to provide delightful user experiences, it is of paramount importance to take care of any customer issues. This paper proposes COTA, a system to improve speed and reliability of customer support for end users through automated ticket classification and answers selection for support representatives. Two machine learning and natural language processing techniques are demonstrated: one relying on feature engineering (COTA v1) and the other exploiting raw signals through deep learning architectures (COTA v2). COTA v1 employs a new approach that converts the multi-classification task into a ranking problem, demonstrating significantly better performance in the case of thousands of classes. For COTA v2, we propose an Encoder-Combiner-Decoder, a novel deep learning architecture that allows for heterogeneous input and output feature types and injection of prior knowledge through …
Total citations
20182019202020212022202320241257956
Scholar articles
P Molino, H Zheng, YC Wang - Proceedings of the 24th ACM SIGKDD International …, 2018