• Kethal@lemmy.world
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    5 months ago

    “such as neatly interpretable parameters”

    Hahaha, hahahahahaha.

    Hahahahaha.

    • magic_lobster_party@kbin.run
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      5 months ago

      If parameters aren’t neatly interpretable then it’s bad statistics. You’ve learned nothing about the general structure of the data.

      Linear regression models are often great tools for explaining the structure of the data. You can directly see which parts of the input are more important for determining the output. You have very little of that when using neural networks with more than 1 hidden layer.

      • Kethal@lemmy.world
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        5 months ago

        “If parameters aren’t neatly interpretable then it’s bad statistics.”

        Haha, keep going guys. You obviously know a lot about statistics.

        • magic_lobster_party@kbin.run
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          5 months ago

          https://www.nature.com/articles/nmeth.4642

          This article use different wording than me, but in essence: Statistics is mostly about using a known model to explain the data. Machine Learning is mostly about finding any model that predicts the data well. Different purposes with some overlap. Some statistical methods are used in Machine Learning, but that doesn’t necessarily mean all of Machine Learning is statistics.

          The boundary between statistical inference and ML is subject to debate—some methods fall squarely into one or the other domain, but many are used in both. […] Statistics requires us to choose a model that incorporates our knowledge of the system, and ML requires us to choose a predictive algorithm by relying on its empirical capabilities.

          Another (potentially lower quality) article that is not from Nature, but discusses the meme in particular:

          https://www.datarobot.com/blog/statistics-and-machine-learning-whats-the-difference/

          Because of the large number of variables in machine learning datasets, the models developed from them can be simultaneously extremely accurate and almost impossible to understand. Statistical models, on the other hand are typically easier to understand because they are based on fewer variables, and the accuracy of relationships is supported by tests of statistical significance.

          • Kethal@lemmy.world
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            5 months ago

            Seeing your comment I wondered how someone publishing in Nature could have possibly left out the use of statistics for prediction. That would be a wild oversight that only someone with little knowledge of the topic would make, and surely not something that the editors of Nature would miss. Upon clicking the link I see that they mentioned it in the very first sentence and apparently ignore it if someone happens to call the prediction model a machine learning model. Using statistical models for prediction has been used since the start of the field, and renaming things that have been used for decades as “machine learning” doesn’t suddenly make them not statistics.

            Artificial neural networks are statistical models, with numerous statistical approaches associated with their use, development and interpretation.