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Algorithm Predicts US Supreme Court Decisions 70% of Time

stephendavion writes A legal scholar says he and colleagues have developed an algorithm that can predict, with 70 percent accuracy, whether the US Supreme Court will uphold or reverse the lower-court decision before it. "Using only data available prior to the date of decision, our model correctly identifies 69.7 percent of the Court's overall affirm and reverse decisions and correctly forecasts 70.9% of the votes of individual justices across 7,700 cases and more than 68,000 justice votes," Josh Blackman, a South Texas College of Law scholar, wrote on his blog Tuesday.

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  1. biased algorith by Dthief · · Score: 5, Insightful

    I (read: anyone) can make an algorithm that fits any previous data (even only using data that precedes the "prediction")......testing future predictability is the only way this means anything.

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    1. Re:biased algorith by Anonymous Coward · · Score: 5, Informative

      Yes, and then when the algorithm doesn't work you finetune it a bit and test again and suddenly you end up with an algorithm that has been trained on all data without actually training it against all data.

      One should be very skeptical against future predicting algorithms. Until they have been released in the wild for a while without the developer tampering with it it is pretty safe to guess that it more or less is another version of the Turk, even if its inventor doesn't realize it.

      The same principle can be applied to market research or climate studies. If the algorithm used is tampered with to produce more accurate results one can assume that it is useless.

    2. Re:biased algorith by Euler · · Score: 4, Insightful

      You could train it with 80% of the historical data and see if it predicts the next 20% of historical data.

  2. Useless by Jiro · · Score: 5, Insightful

    According to http://www.scotusblog.com/stat... the Supreme Court recently affirmed 27% of lower court decisions and reversed 73%. This means that if you guess that the Supreme Court reverses the lower court every time, you'll be 73% accurate. 70% accuracy is ridiculously low if you can get 73% accuracy *without* taking into consideration the records of each justice or any other kind of details.

    1. Re:Useless by AthanasiusKircher · · Score: 4, Informative

      70% accuracy is ridiculously low if you can get 73% accuracy *without* taking into consideration the records of each justice or any other kind of details.

      First, your link only deals with the past court term. TFA deals with predicting cases back to 1953. Is your 73% stat valid for the entire past half century?

      And even if it were, the algorithm is much more granular than that, predicting the way individual justices will vote. From TFA:

      69.7% of the Courtâ(TM)s overall affirm and reverse decisions and correctly forecasts 70.9% of the votes of individual justices across 7,700 cases and more than 68,000 justice votes. Also, before someone objects, please note that (contrary to popular belief) SCOTUS does not always vote 5-4 according to party lines. For instance, your own link notes that 2/3 of last year's opinions were UNANIMOUS. 5-4 decisions usually amount for only 25% of cases or so in recent years, and of those, usually a 1/3 or so don't divide up according to supposed "party line" votes.

      So, I agree with you that simply predicting reverse/affirm at 70% accuracy may be easy, but predicting 68000 individual justice votes with similar accuracy might be a significantly greater challenge.

  3. Re:is it better than random? by mrvan · · Score: 5, Informative

    That is correct, but not what the GP meant. If you can model the distribution (e.g. you 'know' that B is 90%) then you can weigh your random guessing such that it is correct in >50% of the cases, even without looking at the case itself (it is still 'random' in that sense)

    Extreme case: I can predict whether someone has Ebola without even looking at them with >99.99% accuracy by just guessing "no" every time, since the prevalence of Ebola is >.001%.

    Suppose the supreme court has 70% chance of overturning (e.g. because they choose to hear cases that have 'merit'), then an algorithm that guesses 'overturn' 100% will have a 70% accuracy. A random guess that follows the marginal of the target distribution (e.g. guess 70% overturn) also scores >50% (58% to be precise).

  4. Re:Algorithm based on bias by AthanasiusKircher · · Score: 4, Informative

    I wouldn't be surprised if the primary predictive trait used is simply to check the biases of each judge and then assume they will vote along those biases. Assuming conservative judges will vote conservative and liberal judges will vote liberal should give you a pretty good score right off the bat.

    Only in a small minority of cases. Contrary to popular belief, most SCOTUS cases aren't highly politicized cases with a clear conservative/liberal divide. Most cases deal with rather technical issues of law which are much less susceptible to this sort of political analysis.

    The Roberts Court, for example, has averaged 40-50% unanimous rulings in recent years (last year about 2/3 of rulings were unanimous). So, your idea of "assume conservative vote conservative, liberal vote liberal" would tell you nothing about maybe half of the cases that have come before the court in recent years. (Historically, I believe about 1/3 or so of rulings tend to be unanimous.)

    And even with the closely divided cases, you have a problem. Of the 5-4 rulings (which in recent years have been only about 20-30% of the total rulings), about 1/4 to 1/3 of them don't divide up according to supposed "party lines."

    In sum, I don't know what factors this model ends up using, but "conservative vs. liberal" is way too simplistic to predict the vast majority of SCOTUS rulings. If you could factor in detailed perspectives on law (which often have little to do with the stereotyped political spectrum), you might have something... but that would require a lot more work, particularly over the 50 years of rulings TFA deals with.

  5. Re:Replace them by Impy+the+Impiuos+Imp · · Score: 5, Insightful

    Lawyers: We want people to carry their rights with them, even when operating as a group of people Congress defined as a "corporation" because Congress cannot force them to give up their First Amendment rights.

    Scotus (in the voice of Nomad): Logic correct. Opposing lawyers are in error. Must sterilize.

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  6. Re:Simplified algorithm by swillden · · Score: 4, Insightful

    my algorithm is even better, and even more accurate. its simple: What is the worst possible outcome for the citizenry?

    I don't know about the accuracy of your SCOTUS result-picking algorithm, but you and mwvdlee have a good algorithm to get modded up on slashdot: Just express deep cynicism about the system. Doesn't have to be true in the slightest.

    FWIW, I watch SCOTUS pretty closely, and I'd say their bad decisions are fairly rare. I'm unhappy with the outcome in a larger minority of cases, but it's not very common that upon reading the opinions and dissents that I find myself ultimately in disagreement with their conclusions. And in most cases I think they not only make the right legal call, but the right call for the citizenry (though that isn't, and shouldn't be, their primary focus).

    Of course, you and I may well disagree about some of the decisions.

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