In this article, Convex measure will be analyzed from different angles with the aim of delving into its relevance and impact today. Different aspects related to Convex measure will be addressed, exploring its influence on society, economy, politics, culture or any other area of interest. In addition, various points of view and opinions of experts on the subject will be presented, as well as relevant data that will allow us to understand its importance and the scope of its influence. Likewise, possible challenges or controversies associated with Convex measure will be discussed, examining the possible short- and long-term implications. Through this article, we seek to provide a comprehensive and balanced vision that allows the reader to acquire solid knowledge about Convex measure and its relevance today.
In measure and probability theory in mathematics, a convex measure is a probability measure that — loosely put — does not assign more mass to any intermediate set "between" two measurable sets A and B than it does to A or B individually. There are multiple ways in which the comparison between the probabilities of A and B and the intermediate set can be made, leading to multiple definitions of convexity, such as log-concavity, harmonic convexity, and so on. The mathematician Christer Borell was a pioneer of the detailed study of convex measures on locally convex spaces in the 1970s.[1][2]
Let X be a locally convex Hausdorff vector space, and consider a probability measure μ on the Borel σ-algebra of X. Fix −∞ ≤ s ≤ 0, and define, for u, v ≥ 0 and 0 ≤ λ ≤ 1,
For subsets A and B of X, we write
for their Minkowski sum. With this notation, the measure μ is said to be s-convex[1] if, for all Borel-measurable subsets A and B of X and all 0 ≤ λ ≤ 1,
The special case s = 0 is the inequality
i.e.
Thus, a measure being 0-convex is the same thing as it being a logarithmically concave measure.
The classes of s-convex measures form a nested increasing family as s decreases to −∞"
or, equivalently
Thus, the collection of −∞-convex measures is the largest such class, whereas the 0-convex measures (the logarithmically concave measures) are the smallest class.
The convexity of a measure μ on n-dimensional Euclidean space Rn in the sense above is closely related to the convexity of its probability density function.[2] Indeed, μ is s-convex if and only if there is an absolutely continuous measure ν with probability density function ρ on some Rk so that μ is the push-forward on ν under a linear or affine map and is a convex function, where
Convex measures also satisfy a zero-one law: if G is a measurable additive subgroup of the vector space X (i.e. a measurable linear subspace), then the inner measure of G under μ,
must be 0 or 1. (In the case that μ is a Radon measure, and hence inner regular, the measure μ and its inner measure coincide, so the μ-measure of G is then 0 or 1.)[1]