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A conformal geometric point of view on the Caffarelli-Kohn-Nirenberg inequality (2111.15383v2)

Published 30 Nov 2021 in math.AP

Abstract: We are interested in the Caffarelli-Kohn-Nirenberg inequality (CKN in short), introduced by these authors in 1984. We explain why the CKN inequality can be viewed as a Sobolev inequality on a weighted Riemannian manifold. More precisely, we prove that the CKN inequality can be interpreted in this way on three different and equivalent models, obtained as weighted versions of the standard Euclidean space, round sphere and hyperbolic space. This result can be viewed as an extension of conformal invariance to the weighted setting. Since the spherical CKN model we introduce has finite measure, the $\Gamma$-calculus introduced by Bakry and Emery provides an easy way to prove the Sobolev inequalities. This method allows us to recover the optimality of the region of parameters describing symmetry-breaking of minimizers of the CKN inequality, introduced by Felli and Schneider and proved by Dolbeault, Esteban and Loss in 2016. Finally, we develop the notion of n-conformal invariants, exhibiting a way to extend the notion of scalar curvature to weighted manifolds such as the CKN models.

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