CYAIAug 9, 2023

Where's the Liability in Harmful AI Speech?

arXiv:2308.04635v224 citationsh-index: 29
Originality Synthesis-oriented
AI Analysis

This addresses legal and safety challenges for AI developers, policymakers, and society, but is incremental as it builds on existing liability analyses.

The paper examines whether generative AI models that produce harmful speech, such as defamation or criminal instructions, create liability risks for creators and deployers under U.S. law, finding that current legal frameworks present many roadblocks to holding them accountable.

Generative AI, in particular text-based "foundation models" (large models trained on a huge variety of information including the internet), can generate speech that could be problematic under a wide range of liability regimes. Machine learning practitioners regularly "red team" models to identify and mitigate such problematic speech: from "hallucinations" falsely accusing people of serious misconduct to recipes for constructing an atomic bomb. A key question is whether these red-teamed behaviors actually present any liability risk for model creators and deployers under U.S. law, incentivizing investments in safety mechanisms. We examine three liability regimes, tying them to common examples of red-teamed model behaviors: defamation, speech integral to criminal conduct, and wrongful death. We find that any Section 230 immunity analysis or downstream liability analysis is intimately wrapped up in the technical details of algorithm design. And there are many roadblocks to truly finding models (and their associated parties) liable for generated speech. We argue that AI should not be categorically immune from liability in these scenarios and that as courts grapple with the already fine-grained complexities of platform algorithms, the technical details of generative AI loom above with thornier questions. Courts and policymakers should think carefully about what technical design incentives they create as they evaluate these issues.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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