On the Dimension of the Group of Projective Transformations of Closed Randers and Riemannian Manifolds
نویسنده
چکیده
We construct a counterexample to Theorem 2 of [Rafie-Rad M., Rezaei B., SIGMA 7 (2011), 085, 12 pages].
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