In this work, we investigate the question of how knowledge about expectations $\mathbb{E}(f_i(X))$ of a random vector $X$ translate into inequalities for $\mathbb{E}(g(X))$ for given functions $f_i$, $g$ and a random vector $X$ whose support is contained in some set $S\subseteq \mathbb{R}^n$. We show that there is a connection between the problem of obtaining tight expectation inequalities in this context and properties of convex hulls, allowing us to rewrite it as an optimization problem. The results of these optimization problems not only arrive at sharp bounds for $\mathbb{E}(g(X))$ but in some cases also yield discrete probability measures where equality holds. We develop an analytical approach that is particularly suited for studying the Jensen gap problem when the known information are the average and variance, as well as a numerical approach for the general case, that reduces the problem to a convex optimization; which in a sense extends known results about the moment problem.
翻译:在这项工作中,我们调查了这样一个问题,即对随机矢量美元(f_i(X))的预期值($mathbb{E})(g(X))美元(美元)的认识如何转化为对美元(mathbb{E})(f_i(X))美元(美元)的不平等,而对于特定函数美元(f_美元),g(X)美元(美元)和随机矢量美元(美元)的预期值($S\subseteq \mathbb{R ⁇ n$(美元),其支持包含在某一套标准($S\subseteq)中,g(g(X)美元)美元(美元)和随机矢量美元(美元)。我们发现,在这一背景下获得强烈的预期值不平等的问题与 convex 壳体的特性之间存在联系,从而使我们能够把它改写成一个优化问题。这些优化问题的结果不仅达到$\\mathbbb{E}(g(g(X)美元)美元)美元,而且在某些情况下还产生独立的概率衡量标准。我们开发了一种分析方法特别适合研究杰森差距问题,当下的问题,当已知的资料为平均和差异时,以及一般的数值方法将问题缩小问题。