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Cyber-Physical Systems Virtual Organization

Read-only archive of site from September 29, 2023.

CPS-VO

data set testing

biblio

Visible to the public Fine Tuning Lasso in an Adversarial Environment against Gradient Attacks

Submitted by grigby1 on Mon, 03/19/2018 - 1:59pm
  • robust classifier
  • known weaknesses
  • labeled training data
  • learning (artificial intelligence)
  • Metrics
  • optimization
  • pattern classification
  • probability
  • pubcrawl
  • resilience
  • Resiliency
  • Input variables
  • Scalability
  • security of data
  • single convex optimization
  • source domain
  • supervised learning
  • Synthetic Data
  • Task Analysis
  • testing
  • Toxicology
  • Training
  • data set testing
  • adversarial data
  • adversarial environment
  • adversarial learning research
  • adversarial learning setting
  • Adversarial Machine Learning
  • Adversary Models
  • convex programming
  • data analysis
  • Data mining
  • data mining algorithms
  • adversarial component
  • data testing
  • domain adaptation
  • domain adaption
  • feature extraction
  • Feature Selection
  • fine tuning lasso
  • fixed probability distribution
  • gradient attacks
  • Human behavior

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