Day 4: Restroom Redoubt

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FAQ

  • gedhrel@lemmy.world
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    5 hours ago

    Haskell, alternative approach

    The x and y coordinates of robots are independent. 101 and 103 are prime. So, the pattern of x coordinates will repeat every 101 ticks, and the pattern of y coordinates every 103 ticks.

    For the first 101 ticks, take the histogram of x-coordinates and test it to see if it’s roughly randomly scattered by performing a chi-squared test using a uniform distrobution as the basis. [That code’s not given below, but it’s a trivial transliteration of the formula on wikipedia, for instance.] In my case I found a massive peak at t=99.

    Same for the first 103 ticks and y coordinates. Mine showed up at t=58.

    You’re then just looking for solutions of t = 101m + 99, t = 103n + 58 [in this case]. I’ve a library function, maybeCombineDiophantine, which computes the intersection of these things if any exist; again, this is basic wikipedia stuff.

    day14b ls =
      let
        rs = parse ls
        size = (101, 103)
        positions = map (\t -> process size t rs) [0..]
    
        -- analyse x coordinates. These should have period 101
        xs = zip [0..(fst size)] $ map (\rs -> map (\(p,_) -> fst p) rs & C.count & chi_squared (fst size)) positions
        xMax = xs & sortOn snd & last & fst
    
        -- analyse y coordinates. These should have period 103
        ys = zip [0..(snd size)] $ map (\rs -> map (\(p,_) -> snd p) rs & C.count & chi_squared (snd size)) positions
        yMax = ys & sortOn snd & last & fst
    
        -- Find intersections of: t = 101 m + xMax, t = 103 n + yMax
        ans = do
          (s,t) <- maybeCombineDiophantine (fromIntegral (fst size), fromIntegral xMax)
                                           (fromIntegral (snd size), fromIntegral yMax)
          pure $ minNonNegative s t
      in
        trace ("xs distributions: " ++ show (sortOn snd xs)) $
        trace ("ys distributions: " ++ show (sortOn snd ys)) $
        trace ("xMax = " ++ show xMax ++ ", yMax = " ++ show yMax) $
        trace ("answer could be " ++ show ans) $
        ans
    
    • Gobbel2000
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      44 minutes ago

      Very cool, taking a statistical approach to discern random noise from picture.

    • gedhrel@lemmy.world
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      4 hours ago

      I should add - it’s perfectly possible to draw pictures which won’t be spotted by this test, but in this case as it happens the distributions are exceedingly nonuniform at the critical point.