Categories: FAANG

Improving Language Model Personas via Rationalization with Psychological Scaffolds

Language models prompted with a user description or persona are being used to predict the user’s preferences and opinions. However, existing approaches to building personas mostly rely on a user’s demographic attributes and/or prior judgments, but not on any underlying reasoning behind a user’s judgments. We introduce PB&J (Psychology of Behavior and Judgments), a framework that improves LM personas by incorporating potential rationales for why the user could have made a certain judgment. Our rationales are generated by a language model to explicitly reason about a user’s behavior on the…
AI Generated Robotic Content

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what ai tool and prompts they using to get this level of perfection?

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3 hours ago

The Complete Guide to Model Context Protocol

Language models can generate text and reason impressively, yet they remain isolated by default.

3 hours ago

AI Infrastructure and Ontology

Under the Hood of NVIDIA and PalantirTurning Enterprise Data into Decision IntelligenceOn Tuesday, October 28 in…

3 hours ago

Hosting NVIDIA speech NIM models on Amazon SageMaker AI: Parakeet ASR

This post was written with NVIDIA and the authors would like to thank Adi Margolin,…

3 hours ago

The Blueprint: How Giles AI transforms medical research with conversational AI

Welcome to The Blueprint, a new feature where we highlight how Google Cloud customers are…

3 hours ago

IBM’s open source Granite 4.0 Nano AI models are small enough to run locally directly in your browser

In an industry where model size is often seen as a proxy for intelligence, IBM…

4 hours ago