{ "id": "1906.03208", "version": "v1", "published": "2019-06-07T16:16:36.000Z", "updated": "2019-06-07T16:16:36.000Z", "title": "Hypercontractivity, and Lower Deviation Estimates in Normed Spaces", "authors": [ "Grigoris Paouris", "Konstantin Tikhomirov", "Petros Valettas" ], "comment": "36 pages", "categories": [ "math.FA", "math.MG", "math.PR" ], "abstract": "We consider the problem of estimating probabilities of lower deviation $\\mathbb P\\{\\|G\\| \\leqslant \\delta \\mathbb E\\|G\\|\\}$ in normed spaces with respect to the Gaussian measure. These estimates occupy central role in the probabilistic study of high-dimensional structures. It has been confirmed in several concrete situations, using ad hoc methods, that lower deviations exhibit very different and more complex behavior than the corresponding upper estimates. A characteristic example of this diverse behavior is $\\|G\\|_\\infty = \\max_{i\\leqslant n}|g_i|$, where $g_i$ are i.i.d. standard normals. In this work we develop a general method for proving small ball lower deviation estimates for norms. In the case of $1$--unconditional norms we show that under certain balancing conditions, which are fulfilled in many classical situations, our bounds are best possible up to numerical constants. We also study the lower small deviation estimates for both $1$-unconditional and general norms and we obtain optimal results. In all regimes, $\\|G\\|_\\infty$ arises (at the computational level) as an extremal case in the problem. The proofs exploit the convexity and hypercontractive properties of the Gaussian measure.", "revisions": [ { "version": "v1", "updated": "2019-06-07T16:16:36.000Z" } ], "analyses": { "keywords": [ "normed spaces", "small ball lower deviation estimates", "hypercontractivity", "gaussian measure", "estimates occupy central role" ], "note": { "typesetting": "TeX", "pages": 36, "language": "en", "license": "arXiv", "status": "editable" } } }