Close Menu

    Subscribe to Updates

    Get the latest creative news from infofortech

    What's Hot

    Mirai-Based xlabs_v1 Botnet Exploits ADB to Hijack IoT Devices for DDoS Attacks

    May 6, 2026

    How Predictive Demand Generation Leverages Data Signals

    May 6, 2026

    Web Application Firewalls Are Broken, and Everyone Knows It

    May 6, 2026
    Facebook X (Twitter) Instagram
    InfoForTech
    • Home
    • Latest in Tech
    • Artificial Intelligence
    • Cybersecurity
    • Innovation
    Facebook X (Twitter) Instagram
    InfoForTech
    Home»Artificial Intelligence»A better method for identifying overconfident large language models | MIT News
    Artificial Intelligence

    A better method for identifying overconfident large language models | MIT News

    InfoForTechBy InfoForTechMarch 19, 2026No Comments5 Mins Read
    Facebook Twitter Pinterest Telegram LinkedIn Tumblr WhatsApp Email
    A better method for identifying overconfident large language models | MIT News
    Share
    Facebook Twitter LinkedIn Pinterest Telegram Email



    Large language models (LLMs) can generate credible but inaccurate responses, so researchers have developed uncertainty quantification methods to check the reliability of predictions. One popular method involves submitting the same prompt multiple times to see if the model generates the same answer.

    But this method measures self-confidence, and even the most impressive LLM might be confidently wrong. Overconfidence can mislead users about the accuracy of a prediction, which might result in devastating consequences in high-stakes settings like health care or finance.   

    To address this shortcoming, MIT researchers introduced a new method for measuring a different type of uncertainty that more reliably identifies confident but incorrect LLM responses.

    Their method involves comparing a target model’s response to responses from a group of similar LLMs. They found that measuring cross-model disagreement more accurately captures this type of uncertainty than traditional approaches.

    They combined their approach with a measure of LLM self-consistency to create a total uncertainty metric, and evaluated it on 10 realistic tasks, such as question-answering and math reasoning. This total uncertainty metric consistently outperformed other measures and was better at identifying unreliable predictions.

    “Self-consistency is being used in a lot of different approaches for uncertainty quantification, but if your estimate of uncertainty only relies on a single model’s outcome, it is not necessarily trustable. We went back to the beginning to understand the limitations of current approaches and used those as a starting point to design a complementary method that can empirically improve the results,” says Kimia Hamidieh, an electrical engineering and computer science (EECS) graduate student at MIT and lead author of a paper on this technique.

    She is joined on the paper by Veronika Thost, a research scientist at the MIT-IBM Watson AI Lab; Walter Gerych, a former MIT postdoc who is now an assistant professor at Worcester Polytechnic Institute; Mikhail Yurochkin, a staff research scientist at the MIT-IBM Watson AI Lab; and senior author Marzyeh Ghassemi, an associate professor in EECS and a member of the Institute of Medical Engineering Sciences and the Laboratory for Information and Decision Systems.

    Understanding overconfidence

    Many popular methods for uncertainty quantification involve asking a model for a confidence score or testing the consistency of its responses to the same prompt. These methods estimate aleatoric uncertainty, or how internally confident a model is in its own prediction.

    However, LLMs can be confident when they are completely wrong. Research has shown that epistemic uncertainty, or uncertainty about whether one is using the right model, can be a better way to assess true uncertainty when a model is overconfident.

    The MIT researchers estimate epistemic uncertainty by measuring disagreement across a similar group of LLMs.    

    “If I ask ChatGPT the same question multiple times and it gives me the same answer over and over again, that doesn’t mean the answer is necessarily correct. If I switch to Claude or Gemini and ask them the same question, and I get a different answer, that is going to give me a sense of the epistemic uncertainty,” Hamidieh explains.

    Epistemic uncertainty attempts to capture how far a target model diverges from the ideal model for that task. But since it is impossible to build an ideal model, researchers use surrogates or approximations that often rely on faulty assumptions.

    To improve uncertainty quantification, the MIT researchers needed a more accurate way to estimate epistemic uncertainty.

    An ensemble approach

    The method they developed involves measuring the divergence between the target model and a small ensemble of models with similar size and architecture. They found that comparing semantic similarity, or how closely the meanings of the responses match, could provide a better estimate of epistemic uncertainty.

    To achieve the most accurate estimate, the researchers needed a set of LLMs that covered diverse responses, weren’t too similar to the target model, and were weighted based on credibility.

    “We found that the easiest way to satisfy all these properties is to take models that are trained by different companies. We tried many different approaches that were more complex, but this very simple approach ended up working best,” Hamidieh says.

    Once they had developed this method for estimating epistemic uncertainty, they combined it with a standard approach that measures aleatoric uncertainty. This total uncertainty metric (TU) offered the most accurate reflection of whether a model’s confidence level is trustworthy.

    “Uncertainty depends on the uncertainty of the given prompt as well as how close our model is to the optimal model. This is why summing up these two uncertainty metrics is going to give us the best estimate,” Hamidieh says.

    TU could more effectively identify situations where an LLM is hallucinating, since epistemic uncertainty can flag confidently wrong outputs that aleatoric uncertainty might miss. It could also enable researchers to reinforce an LLM’s confidently correct answers during training, which may improve performance.

    They tested TU using multiple LLMs on 10 common tasks, such as question-answering, summarization, translation, and math reasoning. Their method more effectively identified unreliable predictions than either measure on its own.

    Measuring total uncertainty often required fewer queries than calculating aleatoric uncertainty, which could reduce computational costs and save energy.

    Their experiments also revealed that epistemic uncertainty is most effective on tasks with a unique correct answer, like factual question-answering, but may underperform on more open-ended tasks.

    In the future, the researchers could adapt their technique to improve its performance on open-ended queries. They may also build on this work by exploring other forms of aleatoric uncertainty.

    This work is funded, in part, by the MIT-IBM Watson AI Lab.

    Share. Facebook Twitter Pinterest LinkedIn Tumblr Email
    InfoForTech
    • Website

    Related Posts

    Web Application Firewalls Are Broken, and Everyone Knows It

    May 6, 2026

    U.S. Officials Want Early Access to Advanced AI, and the Big Companies Have Agreed

    May 6, 2026

    Games people — and machines — play: Untangling strategic reasoning to advance AI | MIT News

    May 6, 2026

    The Coming AI Storm and Why AMD’s coming July Event Is the New Industry North Star

    May 6, 2026

    White House Weighs AI Checks Before Public Release, Silicon Valley Warned

    May 5, 2026

    You’re allowed to use AI to help make a movie, but you’re not allowed to use AI actors or writers

    May 3, 2026
    Leave A Reply Cancel Reply

    Advertisement
    Top Posts

    DoJ Disrupts 3 Million-Device IoT Botnets Behind Record 31.4 Tbps Global DDoS Attacks

    March 20, 202638 Views

    Microsoft is bringing an AI helper to Xbox consoles

    March 14, 202615 Views

    We’re Tracking Streaming Price Hikes in 2026: Spotify, Paramount Plus, Crunchyroll and Others

    February 15, 202615 Views

    This is the tech that makes Volvo’s latest EV a major step forward

    January 24, 202615 Views
    Stay In Touch
    • Facebook
    • Twitter
    • Pinterest
    • Instagram
    • YouTube
    • Vimeo
    Advertisement
    About Us
    About Us

    Our mission is to deliver clear, reliable, and up-to-date information about the technologies shaping the modern world. We focus on breaking down complex topics into easy-to-understand insights for professionals, enthusiasts, and everyday readers alike.

    We're accepting new partnerships right now.

    Facebook X (Twitter) YouTube
    Most Popular

    DoJ Disrupts 3 Million-Device IoT Botnets Behind Record 31.4 Tbps Global DDoS Attacks

    March 20, 202638 Views

    Microsoft is bringing an AI helper to Xbox consoles

    March 14, 202615 Views

    We’re Tracking Streaming Price Hikes in 2026: Spotify, Paramount Plus, Crunchyroll and Others

    February 15, 202615 Views
    Categories
    • Artificial Intelligence
    • Cybersecurity
    • Innovation
    • Latest in Tech
    © 2026 All Rights Reserved InfoForTech.
    • Home
    • About Us
    • Contact Us
    • Privacy Policy

    Type above and press Enter to search. Press Esc to cancel.

    Ad Blocker Enabled!
    Ad Blocker Enabled!
    Our website is made possible by displaying online advertisements to our visitors. Please support us by disabling your Ad Blocker.