![]() Product teams to quickly develop effective policy violation detectors. Based on our technical results, we identify a simple workflow for Predictions of that class, and separately, the effects of tokenization on Instance, adding an example from a specific class can actually reduce Way, we identify several unintuitive aspects of foundation models. Supervision only acts on the classifications, we find that the modifiedĮxplanations remain consistent with the (tuned) model's response. Supervision the same classifier also produces explanations. To produce a classifier that attains high accuracy with very little We compose the hard-prompts with soft prompt tuning Policy violation classifications, along with extractive explanations that ![]() Our contributions are: We identify a hard prompt that adaptsĬhain-of-thought prompting to policy violation tasks. We seek to leverage their capabilities to detect policy ( arXiv:2104.08691)) - this technique is called ( arXiv:2005.14165)) - this is called hard prompting - and they can be tuned large neural networks pre-trained on large textĬorpora, have revolutionized NLP. Experience tons of improvements with the massive 5. Fly every ship, EXPLORE space or manage an empire TRADE, FIGHT, BUILD and THINK carefully, while you embark on an epic journey. Download a PDF of the paper titled Using Foundation Models to Detect Policy Violations with Minimal Supervision, by Sid Mittal and 3 other authors Download PDF Abstract: Foundation models, i.e. X4 Foundations brings our most sophisticated universe SIMULATION ever. ![]()
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