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    ".. [1] D. Bilkova. \"L-Moments and TL-Moments as an Alternative Tool of",
    "       Statistical Data Analysis\". Journal of Applied Mathematics and",
    "       Physics. 2014. :doi:`10.4236/jamp.2014.210104`",
    ".. [2] J. R. M. Hosking. \"L-Moments: Analysis and Estimation of Distributions",
    "       Using Linear Combinations of Order Statistics\". Journal of the Royal",
    "       Statistical Society. 1990. :doi:`10.1111/j.2517-6161.1990.tb01775.x`",
    ".. [3] \"L-moment\". *Wikipedia*. https://en.wikipedia.org/wiki/L-moment."
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