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Published online by Cambridge University Press:  02 March 2023

Kimberly F. Sellers
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Georgetown University, Washington DC
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References

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  • References
  • Kimberly F. Sellers, Georgetown University, Washington DC
  • Book: The Conway–Maxwell–Poisson Distribution
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