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[Author] Seungwon SHIN(3hit)

1-3hit
  • Verikube: Automatic and Efficient Verification for Container Network Policies

    Haney KANG  Seungwon SHIN  

     
    LETTER-Information Network

      Pubricized:
    2022/08/26
      Vol:
    E105-D No:12
      Page(s):
    2131-2134

    Recently, Linux Container has been the de-facto standard for a cloud system, enabling cloud providers to create a virtual environment in a much more scaled manner. However, configuring container networks remains immature and requires automatic verification for efficient cloud management. We propose Verikube, which utilizes a novel graph structure representing policies to reduce memory consumption and accelerate verification. Moreover, unlike existing works, Verikube is compatible with the complex semantics of Cilium Policy which a cloud adopts from its advantage of performance. Our evaluation results show that Verikube performs at least seven times better for memory efficiency, at least 1.5 times faster for data structure management, and 20K times better for verification.

  • A Large-Scale Bitcoin Abuse Measurement and Clustering Analysis Utilizing Public Reports

    Jinho CHOI  Jaehan KIM  Minkyoo SONG  Hanna KIM  Nahyeon PARK  Minjae SEO  Youngjin JIN  Seungwon SHIN  

     
    PAPER-Artificial Intelligence, Data Mining

      Pubricized:
    2022/04/07
      Vol:
    E105-D No:7
      Page(s):
    1296-1307

    Cryptocurrency abuse has become a critical problem. Due to the anonymous nature of cryptocurrency, criminals commonly adopt cryptocurrency for trading drugs and deceiving people without revealing their identities. Despite its significance and severity, only few works have studied how cryptocurrency has been abused in the real world, and they only provide some limited measurement results. Thus, to provide a more in-depth understanding on the cryptocurrency abuse cases, we present a large-scale analysis on various Bitcoin abuse types using 200,507 real-world reports collected by victims from 214 countries. We scrutinize observable abuse trends, which are closely related to real-world incidents, to understand the causality of the abuses. Furthermore, we investigate the semantics of various cryptocurrency abuse types to show that several abuse types overlap in meaning and to provide valuable insight into the public dataset. In addition, we delve into abuse channels to identify which widely-known platforms can be maliciously deployed by abusers following the COVID-19 pandemic outbreak. Consequently, we demonstrate the polarization property of Bitcoin addresses practically utilized on transactions, and confirm the possible usage of public report data for providing clues to track cyber threats. We expect that this research on Bitcoin abuse can empirically reach victims more effectively than cybercrime, which is subject to professional investigation.

  • Discovering Message Templates on Large Scale Bitcoin Abuse Reports Using a Two-Fold NLP-Based Clustering Method

    Jinho CHOI  Taehwa LEE  Kwanwoo KIM  Minjae SEO  Jian CUI  Seungwon SHIN  

     
    LETTER-Artificial Intelligence, Data Mining

      Pubricized:
    2022/01/11
      Vol:
    E105-D No:4
      Page(s):
    824-827

    Bitcoin is currently a hot issue worldwide, and it is expected to become a new legal tender that replaces the current currency started with El Salvador. Due to the nature of cryptocurrency, however, difficulties in tracking led to the arising of misuses and abuses. Consequently, the pain of innocent victims by exploiting these bitcoins abuse is also increasing. We propose a way to detect new signatures by applying two-fold NLP-based clustering techniques to text data of Bitcoin abuse reports received from actual victims. By clustering the reports of text data, we were able to cluster the message templates as the same campaigns. The new approach using the abuse massage template representing clustering as a signature for identifying abusers is much efficacious.