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    ".. [1] Wikipedia, \"Normal distribution\",",
    "       https://en.wikipedia.org/wiki/Normal_distribution",
    ".. [2] P. R. Peebles Jr., \"Central Limit Theorem\" in \"Probability,",
    "       Random Variables and Random Signal Principles\", 4th ed., 2001,",
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