Presentation 2021-03-19
[Encouragement Talk] Utility of Training Data in Sequential Accumulation Learning-Based Anomaly Detection
Natsuki Fukazawa, Naoki Yoshida, Shingo Ata, Ikuo Oka,
PDF Download Page PDF download Page Link
Abstract(in Japanese) (See Japanese page)
Abstract(in English) In Network-based Intrusion Detection Systems (NIDS) using supervised learning, one of important challengings is how to collect and accumlate good learning data to achieve high detection accuracy. So far we proposed a mechanism to accumlate learning data concecutively by associating events of em honeypots and flow characteristics of monitored packets. It is expected that our system can detect anomalies more accurate by running the system longer because the volume of learning data becomes larger. However, it is still unclear the policy how to accumlate the learning data efficiently in terms of the accuracy of detection. In this paper, we conduct quantitative evaluation how an accumulate policy has an impact to the accuracy of detection. We investigate the relation of accumlated learning data and the performance of anomaly detection. Through this paper we aim to consider a guideline to the efficient way of learning data accumulation.
Keyword(in Japanese) (See Japanese page)
Keyword(in English) Anomaly Detection / Traffic Pattern / Honeypot / Machine Learning / Attack Classification
Paper # ICM2020-69
Date of Issue 2021-03-11 (ICM)

Conference Information
Committee ICM
Conference Date 2021/3/18(2days)
Place (in Japanese) (See Japanese page)
Place (in English) Online
Topics (in Japanese) (See Japanese page)
Topics (in English)
Chair Kazuhiko Kinoshita(Tokushima Univ.)
Vice Chair Yoichi Sato(OSL) / Haruo Ooishi(NTT)
Secretary Yoichi Sato(NTT) / Haruo Ooishi(Bosco)
Assistant Tetsuya Uchiumi(Fujitsu Lab.)

Paper Information
Registration To Technical Committee on Information and Communication Management
Language JPN
Title (in Japanese) (See Japanese page)
Sub Title (in Japanese) (See Japanese page)
Title (in English) [Encouragement Talk] Utility of Training Data in Sequential Accumulation Learning-Based Anomaly Detection
Sub Title (in English)
Keyword(1) Anomaly Detection
Keyword(2) Traffic Pattern
Keyword(3) Honeypot
Keyword(4) Machine Learning
Keyword(5) Attack Classification
1st Author's Name Natsuki Fukazawa
1st Author's Affiliation Osaka City University(Osaka City Univ.)
2nd Author's Name Naoki Yoshida
2nd Author's Affiliation Osaka City University(Osaka City Univ.)
3rd Author's Name Shingo Ata
3rd Author's Affiliation Osaka City University(Osaka City Univ.)
4th Author's Name Ikuo Oka
4th Author's Affiliation Osaka City University(Osaka City Univ.)
Date 2021-03-19
Paper # ICM2020-69
Volume (vol) vol.120
Number (no) ICM-433
Page pp.pp.52-57(ICM),
#Pages 6
Date of Issue 2021-03-11 (ICM)