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Deep-Learning-based Vulnerability Detection in Binary Executables

Deep-Learning-based Vulnerability Detection in Binary Executables

25 November 2022
A. Schaad
Dominik Binder
ArXivPDFHTML

Papers citing "Deep-Learning-based Vulnerability Detection in Binary Executables"

9 / 9 papers shown
Title
Can Neural Decompilation Assist Vulnerability Prediction on Binary Code?
Can Neural Decompilation Assist Vulnerability Prediction on Binary Code?
D. Cotroneo
F. C. Grasso
R. Natella
V. Orbinato
121
0
0
10 Dec 2024
Comparing Unidirectional, Bidirectional, and Word2vec Models for Discovering Vulnerabilities in Compiled Lifted Code
Comparing Unidirectional, Bidirectional, and Word2vec Models for Discovering Vulnerabilities in Compiled Lifted Code
Gary A. McCully
John D. Hastings
Shengjie Xu
Adam Fortier
65
2
0
26 Sep 2024
Evaluating Large Language Models Trained on Code
Evaluating Large Language Models Trained on Code
Mark Chen
Jerry Tworek
Heewoo Jun
Qiming Yuan
Henrique Pondé
...
Bob McGrew
Dario Amodei
Sam McCandlish
Ilya Sutskever
Wojciech Zaremba
ELM
ALM
205
5,454
0
07 Jul 2021
Bin2vec: Learning Representations of Binary Executable Programs for
  Security Tasks
Bin2vec: Learning Representations of Binary Executable Programs for Security Tasks
Shushan Arakelyan
Sima Arasteh
Christophe Hauser
Erik Kline
Aram Galstyan
40
19
0
09 Feb 2020
VulDeeLocator: A Deep Learning-based Fine-grained Vulnerability Detector
VulDeeLocator: A Deep Learning-based Fine-grained Vulnerability Detector
Zhuguo Li
Deqing Zou
Shouhuai Xu
Zhaoxuan Chen
Yawei Zhu
Hai Jin
56
187
0
08 Jan 2020
A Survey of Binary Code Similarity
A Survey of Binary Code Similarity
I. Haq
Juan Caballero
31
136
0
25 Sep 2019
Effects of padding on LSTMs and CNNs
Effects of padding on LSTMs and CNNs
Dwarampudi Mahidhar Reddy
Subba Reddy
36
96
0
18 Mar 2019
Optimizing seed inputs in fuzzing with machine learning
Optimizing seed inputs in fuzzing with machine learning
Liang Cheng
Yang Zhang
Yi Zhang
Chen Henry Wu
Zhangtan Li
Yu Fu
Haisheng Li
20
21
0
07 Feb 2019
Learn&Fuzz: Machine Learning for Input Fuzzing
Learn&Fuzz: Machine Learning for Input Fuzzing
Patrice Godefroid
Hila Peleg
Rishabh Singh
AAML
75
372
0
25 Jan 2017
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