Improved inference of time-varying reproduction numbers during infectious disease outbreaks
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R N Thompson | J E Stockwin | R D van Gaalen | J A Polonsky | Z N Kamvar | P A Demarsh | E Dahlqwist | S Li | E Miguel | T Jombart | J Lessler | S Cauchemez | A Cori | Zhian N. Kamvar | Robin N. Thompson | J. Lessler | A. Cori | S. Cauchemez | T. Jombart | J. Polonsky | Z. Kamvar | R. Thompson | E. Dahlqwist | R. V. van Gaalen | J.E. Stockwin | P. deMarsh | S. Li | E. Miguel | P. A. Demarsh | Elisabeth Dahlqwist | J. E. Stockwin | R. D. Gaalen
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