5min chapter

AI Safety Fundamentals: Alignment cover image

High-Stakes Alignment via Adversarial Training [Redwood Research Report]

AI Safety Fundamentals: Alignment

CHAPTER

How to Train a Classifier to Generate Adversarial Examples

We let our adversarial attacks contain arbitrary completions, even once that the generator would not have been likely to produce. By requiring adversaries to come up with specific failing examples, adversarial training might place too high a burden on them. We expect deceptively aligned agents would behave very differently in rare or hard-to-construct situations that trigger a treacherous turn. Since we might not be able to identify every possible trigger of treacherous behavior, we will try to make our classifier reliable in diverse types of unusual situations. There are various directions one could imagine. More tools to assist humans, strong active learning, or mostly automated attacks. Better ways to measure reliability. Stronger and better characterized advers

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