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Pedro Domingos

The Master Algorithm

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  • Maureen -membuat kutipan5 tahun yang lalu
    every 1 percent improvement in click prediction potentially means another half billion dollars in the bank, every year,
  • Григорий Бmembuat kutipan6 tahun yang lalu
    Minsky’s theory of intelligence, as expressed in his book The Society of Mind, could be unkindly characterized as “the mind is just one damn thing after another.” The Society of Mind is a laundry list of hundreds of separate ideas, each with its own vignette. The problem with this approach to AI is that it doesn’t work; it’s stamp collecting by computer. Without machine learning, the number of ideas needed to build an intelligent agent is infinite. If a robot had all the same capabilities as a human except learning, the human would soon leave it in the dust.
  • Григорий Бmembuat kutipan6 tahun yang lalu
    In the early days of AI, machine learning seemed like the obvious path to computers with humanlike intelligence; Turing and others thought it was the only plausible path. But then the knowledge engineers struck back, and by 1970 machine learning was firmly on the back burner.
  • Григорий Бmembuat kutipan6 tahun yang lalu
    is not the hardest class of problems in computer science, but it’s arguably the hardest “realistic” class: if you can’t even check a problem’s solution before the universe ends, what’s the point of trying to solve it?
  • Григорий Бmembuat kutipan6 tahun yang lalu
    Little did I know that this was my introduction to NP-completeness, the most important problem in theoretical computer science. Turns out that, far from an idle pursuit, mastering Tetris—really mastering it—is one of the most useful things you could ever do.
  • Григорий Бmembuat kutipan6 tahun yang lalu
    Bayes’ theorem is a machine that turns data into knowledge. According to Bayesian statisticians, it’s the only correct way to turn data into knowledge. If they’re right, either Bayes’ theorem is the Master Algorithm or it’s the engine that drives it. Other statisticians have serious reservations about the way Bayes’ theorem is used and prefer different ways to learn from data. In the days before computers, Bayes’ theorem could only be applied to very simple problems, and the idea of it as a universal learner would have seemed far-fetched. With big data and big computing to go with it, however, Bayes can find its way in vast hypothesis spaces and has spread to every conceivable field of knowledge. If there’s a limit to what Bayes can learn, we haven’t found it yet.
  • Григорий Бmembuat kutipan6 tahun yang lalu
    Each field optimizes within the constraints defined by optimizations in other fields. We try to maximize our happiness within economic constraints, which are firms’ best solutions within the constraints of the available technology—which in turn consists of the best solutions we could find within the constraints of biology and physics.
  • Григорий Бmembuat kutipan6 tahun yang lalu
    Most of the brain’s hardware (or rather, wetware) is devoted to sensing and moving, and to do math we have to borrow parts of it that evolved for language.
  • Григорий Бmembuat kutipan6 tahun yang lalu
    How much of the character of physical law percolates up to higher domains like biology and sociology remains to be seen, but the study of chaos provides many tantalizing examples of very different systems with similar behavior, and the theory of universality explains them.
  • Григорий Бmembuat kutipan6 tahun yang lalu
    By what miracle do laws induced from scant observations turn out to apply far beyond them? How can the laws be many orders of magnitude more precise than the data they are based on? Most of all, why is it that the simple, abstract language of mathematics can accurately capture so much of our infinitely complex world?
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