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Incident-aware Duplicate Ticket Aggregation for Cloud Systems

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arxiv 2302.09520 v1 pith:YDJRJ22V submitted 2023-02-19 cs.SE

Incident-aware Duplicate Ticket Aggregation for Cloud Systems

classification cs.SE
keywords cloudticketsduplicatecustomerincidentsipackticketaggregating
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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In cloud systems, incidents are potential threats to customer satisfaction and business revenue. When customers are affected by incidents, they often request customer support service (CSS) from the cloud provider by submitting a support ticket. Many tickets could be duplicate as they are reported in a distributed and uncoordinated manner. Thus, aggregating such duplicate tickets is essential for efficient ticket management. Previous studies mainly rely on tickets' textual similarity to detect duplication; however, duplicate tickets in a cloud system could carry semantically different descriptions due to the complex service dependency of the cloud system. To tackle this problem, we propose iPACK, an incident-aware method for aggregating duplicate tickets by fusing the failure information between the customer side (i.e., tickets) and the cloud side (i.e., incidents). We extensively evaluate iPACK on three datasets collected from the production environment of a large-scale cloud platform, Azure. The experimental results show that iPACK can precisely and comprehensively aggregate duplicate tickets, achieving an F1 score of 0.871 ~ 0.935 and outperforming state-of-the-art methods by 12.4% ~ 31.2%.

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