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Interpolation of Operators With Trace Inequalities Related To The Positive Weighted Geometric Mean (1906.07833v4)

Published 18 Jun 2019 in math-ph and math.MP

Abstract: There are various generalizations of the geometric mean $(a,b)\mapsto a{1/2}b{1/2}$ for $a,b\in \mathbb{R}+$ to positive matrices, and we consider the standard positive geometric mean $(X,Y)\mapsto X{1/2}(X{-1/2}YX{-1/2}){1/2}X{1/2}$. Much research in recent years has been devoted to relating the weighted version of this mean $X#_{t}Y:=X{1/2}(X{-1/2}YX{-1/2}){t}X{1/2}$ for $t\in [0, 1]$ with operators $e{(1-t)X+tY}$ and $e{(1-t)X/2}e{tY}e{(1-t)X/2}$ in Golden-Thompson-like inequalities. These inequalities are of interest to mathematical physicists for their relationship to quantum entropy, relative quantum entropy, and R\'{e}nyi divergences. However, the weighted mean is well-defined for the full range of $t\in\mathbb{R}$. In this paper we examine the value of $|||eH#_teK|||$ and variations thereof in comparison to $|||e{(1-t)H+tK}|||$ and $|||e{(1-t)H}e{tK}|||$ for any unitarily invariant norm $|||\cdot|||$ and in particular the trace norm, creating for the first time the full picture of interpolation of the weighted geometric mean with the Golden-Thompson Inequality. We expand inequalities known for $|||(e{rH}#_te{rK}){1/r}|||$ with $r>0$, $t\in [0,1]$ to the entire real line, and comment on how the exterior inequalities can be used to provide elegant proofs of the known inequalities for $t\in [0,1]$. We also characterize the equality cases for strictly increasing unitarily invariant norms.

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