TaDaa: real time Ticket Assignment Deep learning Auto Advisor for
customer support, help desk, and issue ticketing systems
- URL: http://arxiv.org/abs/2207.11187v2
- Date: Mon, 20 Mar 2023 19:15:04 GMT
- Title: TaDaa: real time Ticket Assignment Deep learning Auto Advisor for
customer support, help desk, and issue ticketing systems
- Authors: Leon Feng, Jnana Senapati, Bill Liu
- Abstract summary: The project provides functionality to 1) assign an issue to the correct group, 2) assign an issue to the best resolver, and 3) provide the most relevant previously solved tickets to resolvers.
We leverage one ticketing system sample dataset, with over 3k+ groups and over 10k+ resolvers to obtain a 95.2% top 3 accuracy on group suggestions and a 79.0% top 5 accuracy on resolver suggestions.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: This paper proposes TaDaa: Ticket Assignment Deep learning Auto Advisor,
which leverages the latest Transformers models and machine learning techniques
quickly assign issues within an organization, like customer support, help desk
and alike issue ticketing systems. The project provides functionality to 1)
assign an issue to the correct group, 2) assign an issue to the best resolver,
and 3) provide the most relevant previously solved tickets to resolvers. We
leverage one ticketing system sample dataset, with over 3k+ groups and over
10k+ resolvers to obtain a 95.2% top 3 accuracy on group suggestions and a
79.0% top 5 accuracy on resolver suggestions. We hope this research will
greatly improve average issue resolution time on customer support, help desk,
and issue ticketing systems.
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