• @[email protected]
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    8 months ago

    Actually it’s the opposite, you need to train a network not to reveal its training data.

    “Using only $200 USD worth of queries to ChatGPT (gpt-3.5- turbo), we are able to extract over 10,000 unique verbatim memorized training examples,” the researchers wrote in their paper, which was published online to the arXiv preprint server on Tuesday. “Our extrapolation to larger budgets (see below) suggests that dedicated adversaries could extract far more data.”

    The memorized data extracted by the researchers included academic papers and boilerplate text from websites, but also personal information from dozens of real individuals. “In total, 16.9% of generations we tested contained memorized PII [Personally Identifying Information], and 85.8% of generations that contained potential PII were actual PII.” The researchers confirmed the information is authentic by compiling their own dataset of text pulled from the internet.

    • BoscoBear
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      38 months ago

      Interesting article. It seems to be about a bug, not a designed behavior. It also says it exposes random excerpts from books and other training data.

      • @[email protected]
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        18 months ago

        It’s not designed to do that because they don’t want to reveal the training data. But factually all neural networks are a combination of their training data encoded into neurons.

        When given the right prompt (or image generation question) they will exactly replicate it. Because that’s how they have been trained in the first place. Replicating their source images with as little neurons as possible, and tweaking them when it’s not correct.

        • BoscoBear
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          48 months ago

          That is a little like saying every photograph is a copy of the thing. That is just factually incorrect. I have many three layer networks that are not the thing they were trained on. As a compression method they can be very lossy and in fact that is often the point.