1
A Semi-Automated Explainability-Driven Approach for Malware Analysis through Deep Learning
2
Towards an interpretable deep learning model for mobile malware detection and family identification
3
Lessons Learnt on Reproducibility in Machine Learning Based Android Malware Detection
4
Malicious application detection in android - A systematic literature review
5
Deep Learning in Malware Identification and Classification
6
A Survey of Android Malware Detection with Deep Neural Models
7
Enhancing State-of-the-art Classifiers with API Semantics to Detect Evolved Android Malware
8
Evaluating Deep Learning Classification Reliability in Android Malware Family Detection
9
Android Malware Family Classification using Images from Dex Files
10
Two Anatomists Are Better than One - Dual-Level Android Malware Detection
11
A Review of Android Malware Detection Approaches Based on Machine Learning
12
Android malware detection based on image-based features and machine learning techniques
13
Android malware detection method based on bytecode image
14
Android Malware Family Classification and Analysis: Current Status and Future Directions
15
Droidetec: Android Malware Detection and Malicious Code Localization through Deep Learning
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Deep learning for image-based mobile malware detection
17
Android Malware Familial Classification Based on DEX File Section Features
18
Obfuscapk: An open-source black-box obfuscation tool for Android apps
19
DL-Droid: Deep learning based android malware detection using real devices
20
DroidCat: Effective Android Malware Detection and Categorization via App-Level Profiling
21
DroidEvolver: Self-Evolving Android Malware Detection System
22
A Multimodal Deep Learning Method for Android Malware Detection Using Various Features
23
Model Evaluation, Model Selection, and Algorithm Selection in Machine Learning
24
Android Malware Detection Using Machine Learning on Image Patterns
25
LEMNA: Explaining Deep Learning based Security Applications
26
Andro-Simnet: Android Malware Family Classification using Social Network Analysis
27
TESSERACT: Eliminating Experimental Bias in Malware Classification across Space and Time
28
Convolutional neural networks: an overview and application in radiology
29
Effective android malware detection with a hybrid model based on deep autoencoder and convolutional neural network
30
MalDozer: Automatic framework for android malware detection using deep learning
31
[Journal First] Lightweight, Obfuscation-Resilient Detection and Family Identification of Android Malware
32
SAMADroid: A Novel 3-Level Hybrid Malware Detection Model for Android Operating System
34
A pragmatic android malware detection procedure
35
A review of object detection based on convolutional neural network
36
Attention is All you Need
37
R2-D2: ColoR-inspired Convolutional NeuRal Network (CNN)-based AndroiD Malware Detections
38
A review on deep convolutional neural networks
39
A multi-view context-aware approach to Android malware detection and malicious code localization
40
BRIDEMAID: An Hybrid Tool for Accurate Detection of Android Malware
41
Deep Android Malware Detection
42
DroidSieve: Fast and Accurate Classification of Obfuscated Android Malware
43
ANASTASIA: ANdroid mAlware detection using STatic analySIs of Applications
44
Grad-CAM: Visual Explanations from Deep Networks via Gradient-Based Localization
45
Deep4MalDroid: A Deep Learning Framework for Android Malware Detection Based on Linux Kernel System Call Graphs
46
AVclass: A Tool for Massive Malware Labeling
47
DroidDeepLearner: Identifying Android malware using deep learning
48
AndroZoo: Collecting Millions of Android Apps for the Research Community
49
“Why Should I Trust You?”: Explaining the Predictions of Any Classifier
50
DroidDetector: Android Malware Characterization and Detection Using Deep Learning
51
Rethinking the Inception Architecture for Computer Vision
52
Detecting and Classifying Android Malware Using Static Analysis along with Creator Information
53
Empirical assessment of machine learning-based malware detectors for Android
54
Mixed Pooling for Convolutional Neural Networks
55
DroidDolphin: a dynamic Android malware detection framework using big data and machine learning
56
Rage against the virtual machine: hindering dynamic analysis of Android malware
57
DroidLegacy: Automated Familial Classification of Android Malware
58
AndroSimilar: robust statistical feature signature for Android malware detection
59
Distributed Representations of Words and Phrases and their Compositionality
60
Droid Analytics: A Signature Based Analytic System to Collect, Extract, Analyze and Associate Android Malware
61
DroidMat: Android Malware Detection through Manifest and API Calls Tracing
62
Crowdroid: behavior-based malware detection system for Android
63
Malware images: visualization and automatic classification
64
Multiple Kernel Learning Algorithms
65
Modeling the Shape of the Scene: A Holistic Representation of the Spatial Envelope
66
Obfuscation-resilient Android Malware Analysis Based on Contrastive Learning
67
state of malware report
68
MaMaDroid: detecting Android malware by building Markov chains of behavioral models (exten...
69
Android Malware Family Classification Based on Deep Learning of Code Images
70
Computer Vision for Human-Machine Interaction
71
VizMal: A Visualization Tool for Analyzing the Behavior of Android Malware
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Drebin : � Efficient and Explainable Detection of Android Malware in Your Pocket
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DREBIN: Effective and Explainable Detection of Android Malware in Your Pocket
75
Ja1 4 rgen schmidhuber (1997).“long short-term mem-ory”
76
Android security & privacy 2018 year in review
77
Mcafee labs threats report