Was Sie vorher wissen sollten
bevor Sie beginnen

Beginnt 5 June 2026 06:44

Endet 5 June 2026

00 Tage
00 Stunden
00 Minuten
00 Sekunden
course image

Know When You Know: Handling Adversarial Data by Abstaining

Explore sequential prediction in stochastic settings with adversarial interference. Learn strategies for handling distribution shifts and making confident predictions while abstaining from uncertain cases.
Simons Institute via YouTube

Simons Institute

6076 Kurse


1 hour

Optionales Upgrade verfügbar

Not Specified

Lernen Sie in Ihrem eigenen Tempo

Free Video

Optionales Upgrade verfügbar

Übersicht

Explore sequential prediction in stochastic settings with adversarial interference. Learn strategies for handling distribution shifts and making confident predictions while abstaining from uncertain cases.

Lehrplan

  • Introduction to Sequential Prediction
  • Basics of sequential prediction models
    Stochastic settings overview
  • Understanding Adversarial Interference
  • Types and sources of adversarial interference
    Impact of adversarial settings on predictions
  • Handling Distribution Shifts
  • Identifying distribution shifts
    Strategies to adapt to distribution shifts
  • Confident Predictions with Abstention
  • Concept of abstaining in uncertain scenarios
    Metrics for confidence estimation
    Techniques to integrate abstention in prediction models
  • Strategies for Robust Sequential Prediction
  • Defensive modeling approaches
    Incorporating redundancy and diversity
  • Evaluating Model Performance with Adversarial Data
  • Benchmarking techniques
    Case studies and real-world examples
  • Advanced Topics
  • Theoretical foundations of adversarial robustness
    Recent advancements in adversarial training
  • Practical Applications and Tools
  • Common tools and libraries for handling adversarial data
    Building and testing models with abstention mechanisms
  • Conclusion and Future Directions
  • Emerging trends in adversarial data handling
    Ethical considerations in abstaining from uncertain predictions

Fachgebiete

Data Science