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Improvements for eigenfunction averages: An application of geodesic beams (1809.06296v5)

Published 17 Sep 2018 in math.AP and math.SP

Abstract: Let $(M,g)$ be a smooth, compact Riemannian manifold and ${\phi_\lambda }$ an $L2$-normalized sequence of Laplace eigenfunctions, $-\Delta_g\phi_\lambda =\lambda2 \phi_\lambda$. Given a smooth submanifold $H \subset M$ of codimension $k\geq 1$, we find conditions on the pair $(M,H)$, even when $H={x}$, for which $$ \Big|\int_H\phi_\lambda d\sigma_H\Big|=O\Big(\frac{\lambda{\frac{k-1}{2}}}{\sqrt{\log \lambda}}\Big)\qquad \text{or}\qquad |\phi_\lambda(x)|=O\Big(\frac{\lambda {\frac{n-1}{2}}}{\sqrt{\log \lambda}}\Big), $$ as $\lambda\to \infty$. These conditions require no global assumption on the manifold $M$ and instead relate to the structure of the set of recurrent directions in the unit normal bundle to $H$. Our results extend all previously known conditions guaranteeing improvements on averages, including those on sup-norms. For example, we show that if $(M,g)$ is a surface with Anosov geodesic flow, then there are logarithmically improved averages for any $H\subset M$. We also find weaker conditions than having no conjugate points which guarantee $\sqrt{\log \lambda}$ improvements for the $L\infty$ norm of eigenfunctions. Our results are obtained using geodesic beam techniques, which yield a mechanism for obtaining general quantitative improvements for averages and sup-norms.

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