Identification
- Label (rdfs)
- Adversarial Machine Learning
- Preferred Label
- None
- Alternative Labels
- Adversarial AI, Adversarial Attack Techniques, Defensive Machine Learning
- Identifier
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Definition and Examples
- Definition
- Adversarial Machine Learning refers to the study and design of algorithms that can withstand intentional manipulation or adversarial attacks. These attacks aim to deceive machine learning models by supplying deceptive inputs, highlighting vulnerabilities and the need for robust defenses in AI systems.
- Examples
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Translations
Class Relationships
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- Parent Class Of
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- Is Defined By
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- See Also
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Additional Information
- Comment
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- Description
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- Notes
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- Deprecated
- False
Metadata
- History Note
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- Editorial Note
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- In Scheme
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