Uncertainty is prevalent in engineering design, statistical learning, and decision making broadly. Due to inherent risk-averseness and ambiguity about assumptions, it is common to address uncertainty by formulating and solving conservative optimization models expressed using measure of risk and related concepts. We survey the rapid development of risk measures over the last quarter century. From its beginning in financial engineering, we recount their spread to nearly all areas of engineering and applied mathematics. Solidly rooted in convex analysis, risk measures furnish a general framework for handling uncertainty with significant computational and theoretical advantages. We describe the key facts, list several concrete algorithms, and provide an extensive list of references for further reading. The survey recalls connections with utility theory and distributionally robust optimization, points to emerging applications areas such as fair machine learning, and defines measures of reliability.
翻译:在工程设计、统计学习和广泛决策中普遍存在不确定性。由于固有的风险偏向性和假设的模糊性,通过制定和解决使用风险计量和相关概念表示的保守优化模式来解决不确定性问题十分常见。我们调查了过去25世纪风险计量的快速发展。我们从金融工程开始,就将其推广到几乎所有工程和应用数学领域。在对曲线的分析中,风险计量提供了处理不确定性的一般框架,并具有重要的计算和理论优势。我们描述了关键事实,列出了若干具体的算法,并提供了广泛的参考清单供进一步阅读。调查回顾了与实用理论和分布稳健优化的关联,指出了公平机器学习等新兴应用领域,并界定了可靠性计量。