DiscoverDeep PapersThe Geometry of Truth: Emergent Linear Structure in LLM Representation of True/False Datasets
The Geometry of Truth: Emergent Linear Structure in LLM Representation of True/False Datasets

The Geometry of Truth: Emergent Linear Structure in LLM Representation of True/False Datasets

Update: 2023-11-30
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For this paper read, we’re joined by Samuel Marks, Postdoctoral Research Associate at Northeastern University, to discuss his paper, “The Geometry of Truth: Emergent Linear Structure in LLM Representation of True/False Datasets.” Samuel and his team curated high-quality datasets of true/false statements and used them to study in detail the structure of LLM representations of truth. Overall, they present evidence that language models linearly represent the truth or falsehood of factual statements and also introduce a novel technique, mass-mean probing, which generalizes better and is more causally implicated in model outputs than other probing techniques.

Find the transcript and read more here: https://arize.com/blog/the-geometry-of-truth-emergent-linear-structure-in-llm-representation-of-true-false-datasets-paper-reading/

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The Geometry of Truth: Emergent Linear Structure in LLM Representation of True/False Datasets

The Geometry of Truth: Emergent Linear Structure in LLM Representation of True/False Datasets

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