Jove
Visualize
Contact Us
JoVE
x logofacebook logolinkedin logoyoutube logo
ABOUT JoVE
OverviewLeadershipBlogJoVE Help Center
AUTHORS
Publishing ProcessEditorial BoardScope & PoliciesPeer ReviewFAQSubmit
LIBRARIANS
TestimonialsSubscriptionsAccessResourcesLibrary Advisory BoardFAQ
RESEARCH
JoVE JournalMethods CollectionsJoVE Encyclopedia of ExperimentsArchive
EDUCATION
JoVE CoreJoVE BusinessJoVE Science EducationJoVE Lab ManualFaculty Resource CenterFaculty Site
Terms & Conditions of Use
Privacy Policy
Policies

Related Concept Videos

Steps in Outbreak Investigation01:18

Steps in Outbreak Investigation

162
In the ever-evolving field of public health, statistical analysis serves as a cornerstone for understanding and managing disease outbreaks. By leveraging various statistical tools, health professionals can predict potential outbreaks, analyze ongoing situations, and devise effective responses to mitigate impact. For that to happen, there are a few possible stages of the analysis:
162

You might also read

Related Articles

Articles linked to this work by shared authors, journal, and citation graph.

Sort by
Same author

Security in V2I Communications: A Systematic Literature Review.

Sensors (Basel, Switzerland)·2022
Same author

EEG-Based BCI Emotion Recognition: A Survey.

Sensors (Basel, Switzerland)·2020
Same journal

RETRACTED: Zhang et al. A Novel Framework for Reconstruction and Imaging of Target Scattering Centers via Wide-Angle Incidence in Radar Networks. <i>Sensors</i> 2025, <i>25</i>, 6802.

Sensors (Basel, Switzerland)·2026
Same journal

Enhancing Unsupervised Multi-Source Domain Adaptation for Person Re-Identification via Mixture of Experts and Graph-Based Relation.

Sensors (Basel, Switzerland)·2026
Same journal

Development of an Instrumented Glove for Palmar Pressure Assessment in Kayakers.

Sensors (Basel, Switzerland)·2026
Same journal

Development and Experimental Validation of an Autonomous IoT-Based Monitoring System for Real-Time Water Quality Assessment in the Amazon River.

Sensors (Basel, Switzerland)·2026
Same journal

Semi-Supervised Adversarial Learning Framework for Controller Area Network Bus Intrusion Detection.

Sensors (Basel, Switzerland)·2026
Same journal

Smart Optimization Method for Safety Signs in Innovative Manufacturing Environments Integrating Industrial Field IoT Sensors and Knowledge Graphs.

Sensors (Basel, Switzerland)·2026
See all related articles

Related Experiment Video

Updated: Aug 10, 2025

DNA Virus Detection System Based on RPA-CRISPR/Cas12a-SPM and Deep Learning
04:17

DNA Virus Detection System Based on RPA-CRISPR/Cas12a-SPM and Deep Learning

Published on: May 10, 2024

840

Dynamic Feature Dataset for Ransomware Detection Using Machine Learning Algorithms.

Juan A Herrera-Silva1, Myriam Hernández-Álvarez1

  • 1Departamento de Informática y Ciencias de la Computación, Escuela Politécnica Nacional, Ladrón de Guevara E11-25 y Andalucía, Edificio de Sistemas, Quito 170525, Ecuador.

Sensors (Basel, Switzerland)
|February 11, 2023
PubMed
Summary
This summary is machine-generated.

This study introduces a novel machine learning approach for ransomware detection using dynamic analysis. The method effectively identifies encryptor and locker ransomware variants with high accuracy, enhancing cybersecurity defenses.

Keywords:
analysisclassificationdatasetdynamicencryptorfeatureslockermachine learningransomware

More Related Videos

Author Spotlight: AI-Driven Trypanosome Species Detection from Microscopic Images
08:20

Author Spotlight: AI-Driven Trypanosome Species Detection from Microscopic Images

Published on: October 27, 2023

1.6K
Machine Learning Algorithms for Early Detection of Bone Metastases in an Experimental Rat Model
07:15

Machine Learning Algorithms for Early Detection of Bone Metastases in an Experimental Rat Model

Published on: August 16, 2020

6.9K

Related Experiment Videos

Last Updated: Aug 10, 2025

DNA Virus Detection System Based on RPA-CRISPR/Cas12a-SPM and Deep Learning
04:17

DNA Virus Detection System Based on RPA-CRISPR/Cas12a-SPM and Deep Learning

Published on: May 10, 2024

840
Author Spotlight: AI-Driven Trypanosome Species Detection from Microscopic Images
08:20

Author Spotlight: AI-Driven Trypanosome Species Detection from Microscopic Images

Published on: October 27, 2023

1.6K
Machine Learning Algorithms for Early Detection of Bone Metastases in an Experimental Rat Model
07:15

Machine Learning Algorithms for Early Detection of Bone Metastases in an Experimental Rat Model

Published on: August 16, 2020

6.9K

Area of Science:

  • Computer Science
  • Cybersecurity
  • Machine Learning

Background:

  • Ransomware cyber-attacks have significantly increased, posing a substantial threat to organizations.
  • Existing detection methods struggle to keep pace with evolving ransomware threats.

Purpose of the Study:

  • To develop and validate a machine learning model for detecting ransomware using dynamic analysis.
  • To identify and utilize the most relevant dynamic features for distinguishing ransomware from benign software.
  • To create and share a public dataset of dynamic features for ransomware analysis.

Main Methods:

  • Dynamic analysis of encryptor and locker ransomware alongside goodware using a sandbox environment.
  • Feature selection to identify non-redundant and discriminative dynamic parameters.
  • Development of a public dataset comprising 2000 registers with 50 characteristics each.
  • Application of machine learning algorithms (Gradient Boosted Regression Trees, Random Forest, Neural Networks) with 10-fold cross-validation.

Main Results:

  • A curated dataset of dynamic features was generated from 20 ransomware and 20 goodware samples across five platforms.
  • Machine learning models achieved an average accuracy exceeding 0.99 in detecting ransomware.
  • The selected dynamic features proved effective in identifying both current and novel ransomware variants.

Conclusions:

  • Dynamic analysis combined with machine learning offers a robust solution for advanced ransomware detection.
  • The developed dataset and models can significantly improve the ability to combat evolving ransomware threats.
  • This research contributes a valuable resource for the cybersecurity community in the fight against malware.