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Related Concept Videos

Stereotype Content Model02:16

Stereotype Content Model

The Stereotype Content Model (SCM) was first proposed by Susan Fiske and her colleagues (Fiske, Cuddy, Glick & Xu, 2002; see also Fiske, 2012 and Fiske, 2017). The SCM specifies that when someone encounters a new group, they will stereotype them based on two metrics: warmth—or that group’s perceived intent, and how likely they are to provide help or inflict harm—and competence—or their ability to carry out that objective. Depending on the warmth-competence categorization, a person will feel...

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Deep Neural Networks for Image-Based Dietary Assessment
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AMDDLmodel: Android smartphones malware detection using deep learning model.

Muhammad Aamir1, Muhammad Waseem Iqbal2, Mariam Nosheen3

  • 1Department of Computer Science, COMSATS University Islamabad, Sahiwal Campus, Sahiwal, Pakistan.

Plos One
|January 19, 2024
PubMed
Summary
This summary is machine-generated.

This study introduces AMDDLmodel, a deep learning approach using convolutional neural networks for Android malware detection. The model achieves 99.92% accuracy, significantly improving mobile security against evolving threats.

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Area of Science:

  • Computer Science
  • Cybersecurity
  • Artificial Intelligence

Background:

  • Android's widespread use makes its ecosystem a target for malware.
  • Malware installation occurs through various vectors like API calls and permission grants, compromising user privacy and system security.
  • Existing methods for Android malware detection and classification require enhancement to combat sophisticated threats.

Purpose of the Study:

  • To develop and evaluate AMDDLmodel, a novel deep learning technique for accurate Android malware detection and classification.
  • To enhance the security of Android devices and protect user privacy from malicious applications.
  • To demonstrate the effectiveness of deep learning, specifically convolutional neural networks, in identifying Android malware.

Main Methods:

  • Implementation of AMDDLmodel, a deep learning model utilizing a convolutional neural network (CNN).
  • The model's performance is tuned using various parameters including filter sizes, epochs, learning rates, and network layers.
  • Evaluation of the model using the Drebin dataset, which comprises 215 distinct features.

Main Results:

  • AMDDLmodel achieved a high accuracy of 99.92% in detecting and classifying Android malware.
  • The model demonstrated strong performance metrics, including precision, recall, and F1-score.
  • Comparative analysis showed AMDDLmodel outperformed existing techniques in accuracy for Android malware detection.

Conclusions:

  • AMDDLmodel represents an innovative deep learning solution for Android malware detection.
  • The model significantly enhances detection accuracy and user security through advanced feature engineering.
  • The findings highlight the potential of deep learning for robust mobile security and privacy protection.