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Classical and New Inequalities in Analysis
TLDR
In this article, the authors present an organization of the book notations, including the following: Convex Functions and Jensen's Inequality, Cauchy's and Related Inequalities, Generalized Hoelder and Minkowski Inequality, and Connections between general inequalities.Abstract:
Preface Organization of the Book Notations I Convex Functions and Jensen's Inequality II Some Recent Results Involving Means III Bernoulli's Inequality IV Cauchy's and Related Inequalities V Hoelder and Minkowski Inequalities VI Generalized Hoelder and Minkowski Inequalities VII Connections Between General Inequalities VIII Some Determinantal and Matrix Inequalities IX Cebysev's Inequality X Gruss' Inequality XI Steffensen's Inequality XII Abel's and Related Inequalities XIII Some Inequalities for Monotone Functions XIV Young's Inequality XV Bessel's Inequality XVI Cyclic Inequations XVII The Centroid Method in Inequalities XVII Triangle Inequalities XVIII Norm Inequalities XIX More on Norm Inequalities XX Gram's Inequality XXI Frejer-Jackson's Inequalities and Related Results XXII Mathieu's Inequality XXIII Shannon's Inequality XXIV Turan's Inequality from the Power Sum Theory XXV Continued Fractions and Pade Approximation Method XXVI Quasilinearization Methods for Proving Inequalities XXVIII Dynamic Programming and Functional Equation Approaches to Inequalities XXIX Interpolation Inequalities XXX Minimax Inequalities Name Indexread more
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