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    ".. [1] https://www.itl.nist.gov/div898/handbook/eda/section3/eda35a.htm",
    ".. [2] Levene, H. (1960). In Contributions to Probability and Statistics:",
    "       Essays in Honor of Harold Hotelling, I. Olkin et al. eds.,",
    "       Stanford University Press, pp. 278-292.",
    ".. [3] Brown, M. B. and Forsythe, A. B. (1974), Journal of the American",
    "       Statistical Association, 69, 364-367"
  ],
  "qa": "scipy.stats._morestats:levene",
  "arbitrary": [],
  "local_refs": [
    "...",
    "axis",
    "center",
    "keepdims",
    "nan_policy",
    "proportiontocut",
    "pvalue",
    "sample1",
    "sample2",
    "statistic"
  ]
}