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Monica Lam | Stanford HAI

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peopleFaculty

Monica Lam

Professor of Computer Science, and, by courtesy, of Electrical Engineering

External Bio
Latest Work
A Trustworthy AI Assistant for Investigative Journalists
Dylan Walsh
Dec 01
news
journalist holds pen and paper taking notes at a press conference

Gathering and analyzing data require time and expertise — two resources that cash-strapped newspapers often don’t have. Can AI help?

WikiChat: Stopping the Hallucination of Large Language Model Chatbots by Few-Shot Grounding on Wikipedia
Sina Semnani, Violet Yao, Monica Lam, Heidi Zhang
Dec 01
Research
Your browser does not support the video tag.

This paper presents the first few-shot LLM-based chatbot that almost never hallucinates and has high conversationality and low latency. WikiChat is grounded on the English Wikipedia, the largest curated free-text corpus. WikiChat generates a response from an LLM, retains only the grounded facts, and combines them with additional information it retrieves from the corpus to form factual and engaging responses. We distill WikiChat based on GPT-4 into a 7B-parameter LLaMA model with minimal loss of quality, to significantly improve its latency, cost and privacy, and facilitate research and deployment. Using a novel hybrid human-and-LLM evaluation methodology, we show that our best system achieves 97.3% factual accuracy in simulated conversations. It significantly outperforms all retrieval-based and LLM-based baselines, and by 3.9%, 38.6% and 51.0% on head, tail and recent knowledge compared to GPT-4. Compared to previous state-of-the-art retrieval-based chatbots, WikiChat is also significantly more informative and engaging, just like an LLM. WikiChat achieves 97.9% factual accuracy in conversations with human users about recent topics, 55.0% better than GPT-4, while receiving significantly higher user ratings and more favorable comments.

Podcast: Monica Lam from Stanford University's Open Virtual Assistant Lab
Monica Lam
Jul 29
media mention

Mark Dalton from the United Nations speaks with Monica Lam, Professor and Faculty Director of Stanford University's Open Virtual Assistant Lab (OVAL) and HAI Faculty Affiliate, about her team's work and the importance of voice technology to the humanitarian community.

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