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      It’s remarkably easy to inject new medical misinformation into LLMs

      news.movim.eu / ArsTechnica • 8 January 2025

    It's pretty easy to see the problem here: The Internet is brimming with misinformation, and most large language models are trained on a massive body of text obtained from the Internet.

    Ideally, having substantially higher volumes of accurate information might overwhelm the lies. But is that really the case? A new study by researchers at New York University examines how much medical information can be included in a large language model (LLM) training set before it spits out inaccurate answers. While the study doesn't identify a lower bound, it does show that by the time misinformation accounts for 0.001 percent of the training data, the resulting LLM is compromised.

    While the paper is focused on the intentional "poisoning" of an LLM during training, it also has implications for the body of misinformation that's already online and part of the training set for existing LLMs, as well as the persistence of out-of-date information in validated medical databases.

    Read full article

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    • tagai tagai tagai taghealth taghealth taghealth tagscience tagscience tagscience tagcomputer science tagcomputer science tagcomputer science tagllms tagllms tagllms tagmedical information tagmedical information tagmedical information tagmedicine tagmedicine tagmedicine tagmisinformation tagmisinformation tagmisinformation tagai tagai tagai taghealth taghealth taghealth tagscience tagscience tagscience tagcomputer science tagcomputer science tagcomputer science tagllms tagllms tagllms tagmedical information tagmedical information tagmedical information tagmedicine tagmedicine tagmedicine tagmisinformation tagmisinformation tagmisinformation tagai tagai tagai taghealth taghealth taghealth tagscience tagscience tagscience tagcomputer science tagcomputer science tagcomputer science tagllms tagllms tagllms tagmedical information tagmedical information tagmedical information tagmedicine tagmedicine tagmedicine tagmisinformation tagmisinformation tagmisinformation

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    • Ar chevron_right

      It’s remarkably easy to inject new medical misinformation into LLMs

      news.movim.eu / ArsTechnica • 8 January 2025

    It's pretty easy to see the problem here: The Internet is brimming with misinformation, and most large language models are trained on a massive body of text obtained from the Internet.

    Ideally, having substantially higher volumes of accurate information might overwhelm the lies. But is that really the case? A new study by researchers at New York University examines how much medical information can be included in a large language model (LLM) training set before it spits out inaccurate answers. While the study doesn't identify a lower bound, it does show that by the time misinformation accounts for 0.001 percent of the training data, the resulting LLM is compromised.

    While the paper is focused on the intentional "poisoning" of an LLM during training, it also has implications for the body of misinformation that's already online and part of the training set for existing LLMs, as well as the persistence of out-of-date information in validated medical databases.

    Read full article

    Comments

    • tagai tagai tagai taghealth taghealth taghealth tagscience tagscience tagscience tagcomputer science tagcomputer science tagcomputer science tagllms tagllms tagllms tagmedical information tagmedical information tagmedical information tagmedicine tagmedicine tagmedicine tagmisinformation tagmisinformation tagmisinformation tagai tagai tagai taghealth taghealth taghealth tagscience tagscience tagscience tagcomputer science tagcomputer science tagcomputer science tagllms tagllms tagllms tagmedical information tagmedical information tagmedical information tagmedicine tagmedicine tagmedicine tagmisinformation tagmisinformation tagmisinformation tagai tagai tagai taghealth taghealth taghealth tagscience tagscience tagscience tagcomputer science tagcomputer science tagcomputer science tagllms tagllms tagllms tagmedical information tagmedical information tagmedical information tagmedicine tagmedicine tagmedicine tagmisinformation tagmisinformation tagmisinformation

    • Pictures 3 image

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    • Ar chevron_right

      It’s remarkably easy to inject new medical misinformation into LLMs

      news.movim.eu / ArsTechnica • 8 January 2025

    It's pretty easy to see the problem here: The Internet is brimming with misinformation, and most large language models are trained on a massive body of text obtained from the Internet.

    Ideally, having substantially higher volumes of accurate information might overwhelm the lies. But is that really the case? A new study by researchers at New York University examines how much medical information can be included in a large language model (LLM) training set before it spits out inaccurate answers. While the study doesn't identify a lower bound, it does show that by the time misinformation accounts for 0.001 percent of the training data, the resulting LLM is compromised.

    While the paper is focused on the intentional "poisoning" of an LLM during training, it also has implications for the body of misinformation that's already online and part of the training set for existing LLMs, as well as the persistence of out-of-date information in validated medical databases.

    Read full article

    Comments

    • tagai tagai tagai taghealth taghealth taghealth tagscience tagscience tagscience tagcomputer science tagcomputer science tagcomputer science tagllms tagllms tagllms tagmedical information tagmedical information tagmedical information tagmedicine tagmedicine tagmedicine tagmisinformation tagmisinformation tagmisinformation tagai tagai tagai taghealth taghealth taghealth tagscience tagscience tagscience tagcomputer science tagcomputer science tagcomputer science tagllms tagllms tagllms tagmedical information tagmedical information tagmedical information tagmedicine tagmedicine tagmedicine tagmisinformation tagmisinformation tagmisinformation tagai tagai tagai taghealth taghealth taghealth tagscience tagscience tagscience tagcomputer science tagcomputer science tagcomputer science tagllms tagllms tagllms tagmedical information tagmedical information tagmedical information tagmedicine tagmedicine tagmedicine tagmisinformation tagmisinformation tagmisinformation

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