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…
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stay away from higgsfield ai. total predatory bs with their refunds.

edit/fyi: i originally posted this on their official sub, but they literally locked the thread…

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Build Semantic Search with LLM Embeddings

Traditional search engines have historically relied on keyword search.

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Optimizing Recommendation Systems with JDK’s Vector API

By Harshad SaneRanker is one of the largest and most complex services at Netflix. Among many…

16 hours ago

Building specialized AI without sacrificing intelligence: Nova Forge data mixing in action

Large language models (LLMs) perform well on general tasks but struggle with specialized work that…

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Designing private network connectivity for RAG-capable gen AI apps

The flexibility of Google Cloud allows enterprises to build secure and reliable architecture for their…

16 hours ago

What Is That Mysterious Metallic Device US Chief Design Officer Joe Gebbia Is Using?

Gebbia was reportedly spotted at a San Francisco coffee shop using an unidentified pair of…

17 hours ago