Large language models (LLMs) like GPT-4 can identify a person’s age, location, gender and income with up to 85 per cent accuracy simply by analysing their posts on social media.

But the AIs also picked up on subtler cues, like location-specific slang, and could estimate a salary range from a user’s profession and location.

Reference:

arXiv DOI: 10.48550/arXiv.2310.07298

  • Kalash
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    461 year ago

    You can also do that without AI. We’ve had metadata analysis for a while now.

    • @[email protected]
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      331 year ago

      Sure, but AI is the hot buzzword right now, so it’s got to be shoehorned into every discussion about technology!

      • lemmyvore
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        121 year ago

        I think it’s overall a good thing if it helps laymen understand just how much privacy matters and how much can be gleaned from seemingly innocuous data online. If an “AI” label makes it hit home, cool. As long as they get it.

    • @[email protected]
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      101 year ago

      As is typical, this science reporting isn’t great. It’s not only that AI can do it effectively, but that it can do it at scale. To quote the paper:

      “Despite these models achieving near-expert human performance, they come at a fraction of the cost, requiring 100× less financial and 240× lower time investment than human labelers—making such privacy violations at scale possible for the first time.”

      They also demonstrate how interacting with an AI model can quickly extract more private info without looking like it is. A game of 20 questions, except you don’t realize you’re playing.

    • @[email protected]
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      51 year ago

      Yup, and plenty of people have no issues posting about local events or joining region/city specific groups, so it’s not exactly hard to put two and two together.

      I don’t have much issue posting about the city I grew up in or former jobs, but generally work at being fairly vague about anything current