Longreads + Open Thread

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Longreads

  • Scholia Pugillātōria is a wonderful independent academic journal detailing the history and sociology of boxing. Start here and read on. This newsletter writes a bit about economics and a bit about laws, both of which are ways for people to settle otherwise intractable disputes about who is entitled to have what, and who is entitled to do what. But these disciplines are at least partly descended from older ways of settling disputes.
  • Murray Shanahan has a nice little paper called "Talking About Large Language Models," which is a great overview of how they work: "a great many tasks that demand intelligence in humans can be reduced to next token prediction with a sufficiently performant model." It's an important reminder that while the output feels like what a human would do in response to a similar question, the process is not really humanoid—it's a statistical model guessing what the next token from a stream of tokens looks like. In many cases, this corresponds to the output of a knowledgeable person answering a factual question, but that's only true to the extent that the LLM's training data has mostly truthful statements in it. The article also has a fun riff on the question of whether LLMs can reason, separately from whether or not they can believe.
  • Noah Smith of Noahpinion has a roundup of pieces on NEPA, which is, depending on who you ask, either an essential tool for protecting the environment from disruption or a set of rules that pathologically hold back investment in clean energy and mass transit.
  • Patrick McKenzie (patio110 has a long and wonderful retrospective on VaccinateCA, a project he worked on to improve vaccine access. This is, in part, a story about stereotype inversion—the tech people were the ones who realized that vaccine distribution was hard to automate and would require lots of repetitive phone-banking, while the policy solution was a set of if/then statements that were trusted to reliably produce the correct output. This piece has a lot of horror stories about inefficiency, and a lot of the-opposite-of-horror stories about imposing a working system on a broken process.
  • Once again relevant given current events, this 2001 Michael Lewis profile of teenage market manipulator Jonathan Lebed is a good look at what's changed and what hasn't in the decades since. Lewis is a bit sympathetic to his subject—most notably, when describing how Lebed hyped up stocks, what he omits (but what the complaint he's citing notes!) is that Lebed also bought share aggressively late in the day, so the stock would look like it was moving. Market manipulation will always be with us, because while it's hard to be the first person to spot a unique opportunity, it's incredibly tempting to feel like you're one of the first few to jump on something that's about to get very popular, and good manipulators tap into this desire.

    (This piece is also funny for one bit of long-distance foreshadowing. Casting about for examples of big companies, Lewis says " Xerox and AT&T and the rest needed to put the right spin on their quarterly earnings. The goal at the end of every quarter was for the newspapers and the cable television shows and the rest to announce that they had 'exceeded analysts' expectations.'" AT&T just agreed to pay a fine for telling analysts to lower their estimates so it could beat them.)

Books

  • Napoleon: A Life: midway through this book, I realized that Napoleon, if he were alive today, would have been an absolutely fanatical user of Superhuman. Napoleon's life is well-documented partly because he spent so much of it dictating letters to people, and loved micromanagement—there are moments in the book where he's simultaneously planning a military campaign and suggesting that the government set up a formal pan-French horse-racing contest. This book uses written records in another helpful way, with the price of French bonds providing a periodic quantitative sentiment check. Well worth reading, and well worth thinking about: Napoleon was a singular figure, but one reason he advanced so quickly (army captain at 23, ruler of France at 30) is that older institutions were falling fast at the same time.

Books of the Year

It's been a great year for reading. Some of the best books I found this year (many are recent, some are timeless):

Thanks to Jordan at ChinaTalk for suggesting the end-of-year book recommendation post.

Open Thread

  • Drop in any links or comments of interest to Diff readers.
  • What's everyone's candidate for Black Swan of the Year in 2023?

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Diff Jobs

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