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

Recent Posts

Target Darts Omni Auto Scoring System Hits the Mark

Step up to the oche and hit the bull’s-eye with this automatic darts scoring system…

8 hours ago

Deni Avdija in Space Jam with LTX-2 I2V + iCloRA. Flow included

made a short video with LTX-2 using an iCloRA Flow to recreate a Space Jam…

1 day ago

How PARTs Assemble into Wholes: Learning the Relative Composition of Images

The composition of objects and their parts, along with object-object positional relationships, provides a rich…

1 day ago

Structured outputs on Amazon Bedrock: Schema-compliant AI responses

Today, we’re announcing structured outputs on Amazon Bedrock—a capability that fundamentally transforms how you can…

1 day ago

How we cut Vertex AI latency by 35% with GKE Inference Gateway

As generative AI moves from experimentation to production, platform engineers face a universal challenge for…

1 day ago