DeepIntent: ImplicitIntent based Android IDS with E2E Deep Learning architecture

被引:2
|
作者
Sewak, Mohit [1 ]
Sahay, Sanjay K. [1 ]
Rathore, Hemant [1 ]
机构
[1] BITS, Dept CS & IS, Goa Campus, Pilani, Goa, India
关键词
Android; Implicit Intent; IDS; Malware Detection; Auto-Encoder; Deep Learning;
D O I
10.1109/pimrc48278.2020.9217188
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
The Intent in Android plays an important role in inter-process and intra-process communications. The implicit Intent that an application could accept are declared in its manifest and are amongst the easiest feature to extract from an apk. Implicit Intents could even be extracted online and in real-time. So far neither the feasibility of developing an Intrusion Detection System solely on implicit Intent has been explored, nor are any benchmarks available of a malware classifier that is based on implicit Intent alone. We demonstrate that despite Intent is implicit and well declared, it can provide very intuitive insights to distinguish malicious from non-malicious applications. We conducted exhaustive experiments with over 40 different end-to-end Deep Learning configurations of Auto-Encoders and Multi-Layer-Perceptron to create a benchmark for a malware classifier that works exclusively on implicit Intent. Using the results from the experiments we create an intrusion detection system using only the implicit Intents and end-to-end Deep Learning architecture. We obtained an area-under-curve statistic of 0.81, and accuracy of 77.2% along with false-positive-rate of 0.11 on Drebin dataset.
引用
收藏
页数:6
相关论文
共 50 条
  • [1] E2E: An Optimized IPsec Architecture for Secure And Fast Offload
    Migault, Daniel
    Palomares, Daniel
    Herbert, Emmanuel
    You, Wei
    Ganne, Gabriel
    Arfaoui, Ghada
    Laurent, Maryline
    [J]. 2012 SEVENTH INTERNATIONAL CONFERENCE ON AVAILABILITY, RELIABILITY AND SECURITY (ARES), 2012, : 365 - 374
  • [2] Measurement System Architecture for Measuring Network Parameters of e2e Services
    Kulik, Vyacheslav
    Kirichek, Ruslan
    Borodin, Alexey
    Koucheryavy, Andrey
    [J]. DISTRIBUTED COMPUTER AND COMMUNICATION NETWORKS (DCCN 2017), 2017, 700 : 291 - 306
  • [3] A NOVEL PRICING-BASED RESOURCE ALLOCATION ARCHITECTURE AND IMPLEMENT FOR E2E HETEROGENEOUS NETWORKS
    Xie, Bing
    Zhou, Wenan
    Chen, Wei
    Song, Junde
    [J]. PROCEEDINGS OF 2009 IEEE INTERNATIONAL CONFERENCE ON COMMUNICATIONS TECHNOLOGY AND APPLICATIONS, 2009, : 851 - 855
  • [4] Deep Neural Network Calibration for E2E Speech Recognition System
    Lee, Mun-Hak
    Chang, Joon-Hyuk
    [J]. INTERSPEECH 2021, 2021, : 4064 - 4068
  • [5] Eigenimage2Eigenimage (E2E): A Self-Supervised Deep Learning Network for Hyperspectral Image Denoising
    Zhuang, Lina
    Ng, Michael K.
    Gao, Lianru
    Michalski, Joseph
    Wang, Zhicheng
    [J]. IEEE TRANSACTIONS ON NEURAL NETWORKS AND LEARNING SYSTEMS, 2023, : 1 - 15
  • [6] A study on E2E deep learning based autonomous navigation robot from virtual environment to real environment using transfer leaning
    Song, Hyu-Seop
    Kim, Seung-Woo
    Park, Seongkeun
    [J]. Journal of Institute of Control, Robotics and Systems, 2019, 25 (05) : 381 - 387
  • [7] On Persistent Implications of E2E Testing
    Frajtak, Karel
    Cerny, Tomas
    [J]. ENTERPRISE INFORMATION SYSTEMS, ICEIS 2021, 2022, 455 : 326 - 338
  • [8] Attacking Paper-Based E2E Voting Systems
    Kelsey, John
    Regenscheid, Andrew
    Moran, Tal
    Chaum, David
    [J]. TOWARDS TRUSTWORTHY ELECTIONS: NEW DIRECTIONS IN ELECTRONIC VOTING, 2010, 6000 : 370 - +
  • [9] Simulation-based analysis of E2E voting systems
    de Marneffe, Olivier
    Pereira, Olivier
    Quisquater, Jean-Jacques
    [J]. E-VOTING AND IDENTITY, 2007, 4896 : 137 - 149
  • [10] E2E数据采集网络
    张振华
    宫海波
    李国星
    [J]. 中国科技信息, 2017, (06) : 67 - 70