Proponents of AI and other optimists are often ready to acknowledge the numerous problems, threats, dangers, and downright murders enabled by these systems to date. But they also dismiss critique and assuage skepticism with the promise that these casualties are themselves outliers — exceptions, flukes — or, if not, they are imminently fixable with the right methodological tweaks.

Common practices of technology development can produce this kind of naivete. Alberto Toscano calls this a “Culture of Abstraction.” He argues that logical abstraction, core to computer science and other scientific analysis, influences how we perceive real-world phenomena. This abstraction away from the particular and toward idealized representations produces and sustains apolitical conceits in science and technology. We are led to believe that if we can just “de-bias” the data and build in logical controls for “non-discrimination,” the techno-utopia will arrive, and the returns will come pouring in. The argument here is that these adverse consequences are unintended. The assumption is that the intention of algorithmic inference systems is always good — beneficial, benevolent, innovative, progressive.

Stafford Beer gave us an effective analytical tool to evaluate a system without getting sidetracked arguments about intent rather than its real impact. This tool is called POSIWID and it stands for “The Purpose of a System Is What It Does.” This analytical frame provides “a better starting point for understanding a system than a focus on designers’ or users’ intention or expectations.”

  • ozymandias117@lemmy.world
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    6 months ago

    I understand this is partially because I have the mindset of the programmer they’re referring to, but this sounds really interesting

    Rather than looking to big data for solutions to hegemonically defined problems, what if we used it to find the catalysts of inequality themselves

    What are the conditions in which the outlier is culled? What if we used AI to identify the pruning mechanism and dismantle it?

    Using more in depth analysis of what gets pruned to understand why it’s being pruned is a very interesting concept to find marginalized groups

    I don’t know how to fix those underlying problems, but identifying them and showing that data to leaders seems like a really good endeavor