Jee-Tae ParkUi-Jun BaekMyung‐Sup KimMin-Seong LeeChang-Yui Shin
SaaS is a cloud-based application service that allows users to use applications that work in a cloud environment. SaaS is a subscription type, and the service expenditure varies depending on the license, the number of users, and duration of use. For efficient network management, security and cost management, accurate detection of user behavior for SaaS applications is required. In this paper, we propose a rule-based traffic analysis method for the user behavior detection. We conduct comparative experiments with signature-based method by using the real SaaS application and demonstrate the validity of the proposed method.
Jee-Tae ParkUi-Jun BaekChang-Yui ShinJung-Woo ChoiYoon-Hwan HongTae-Gyu HoMyung‐Sup Kim
Shruti KohliEla KumarBhagwati P. Joshi
Xiuwei ZhangHe KeqingWang JianChong WangZheng Li
Jong-Jin JungYun CuiMyungjin Kim