JSAI2018

Presentation information

Oral presentation

General Session » [General Session] 13. AI Application

[1D1] [General Session] 13. AI Application

Tue. Jun 5, 2018 1:20 PM - 3:00 PM Room D (4F Cattleya)

座長:肥田 剛典(東京大学)

2:40 PM - 3:00 PM

[1D1-05] Mobile Network Failure Detection and Forecasting with Multiple User Bahavior

〇Motoyuki OKI1, Koh Takeuchi2, Yukio Uematsu1, Naonori Ueda2 (1. NTT Communications Corporation, 2. NTT Communication Science Laboratories)

Keywords:Event Detection, User Behavior, Network Failure

Providing stable and high-quality service is a critical issue for mobile network service providers.
However, due to an unexpectedly huge amount of data traffic exceeding network capacity of a provider, a mobile network service experiences severe failures such as network troubles, performance deterioration, and slow throughput. Then, the service users often detect service outages before the service provider detects them. They can immediately publish their impressions on the service through social media and search for failure information on the web.
In this paper, we propose a machine learning approach that incorporates multiple user behavior data into detecting and forecasting failure events.
The approach is based on novel feature extraction methods and a model ensemble method that combines outputs of supervised and unsupervised learning models from multiple user behavior datasets.
We demonstrate the effectiveness of the approach by extensive experiments with real-world failure events.