On random embeddings and their application to optimisation
Reviewed by Pithpith:26WCZUQZopen to challenge →
classification
math.OC
cs.DScs.NAmath.NA
keywords
optimisationembeddingsrandomapplicationdatahigh-dimensionalproblemproperties
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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.
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