Random embeddings project high-dimensional spaces to low-dimensional ones; they are careful constructions which allow the approximate preservation of key properties, such as the pair-wise distances between points. Often in the field of optimisation, one needs to explore high-dimensional spaces representing the problem data or its parameters and thus the computational cost of solving an optimisation problem is connected to the size of the data/variables. This thesis studies the theoretical properties of norm-preserving random embeddings, and their application to several classes of optimisation problems.
翻译:随机嵌入工程将高维空间与低维空间相匹配; 它们是谨慎的构造, 使得关键属性的大致保存, 比如点之间的对称距离。 通常在优化领域, 人们需要探索代表问题数据或其参数的高维空间, 从而解决优化问题的计算成本与数据/变量的大小相关。 此论文研究随机保存规范嵌入的理论特性, 以及将其应用于若干类型的优化问题 。