7,388 research outputs found
Optimistic Robust Optimization With Applications To Machine Learning
Robust Optimization has traditionally taken a pessimistic, or worst-case
viewpoint of uncertainty which is motivated by a desire to find sets of optimal
policies that maintain feasibility under a variety of operating conditions. In
this paper, we explore an optimistic, or best-case view of uncertainty and show
that it can be a fruitful approach. We show that these techniques can be used
to address a wide variety of problems. First, we apply our methods in the
context of robust linear programming, providing a method for reducing
conservatism in intuitive ways that encode economically realistic modeling
assumptions. Second, we look at problems in machine learning and find that this
approach is strongly connected to the existing literature. Specifically, we
provide a new interpretation for popular sparsity inducing non-convex
regularization schemes. Additionally, we show that successful approaches for
dealing with outliers and noise can be interpreted as optimistic robust
optimization problems. Although many of the problems resulting from our
approach are non-convex, we find that DCA or DCA-like optimization approaches
can be intuitive and efficient
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An LFT/SDP approach to the uncertainty analysis for state
A state estimator is an algorithm that computes the current state of a time-varying system from on-line measurements. Physical quantities such as measurements and parameters are characterised by uncertainty. Understanding how uncertainty affects the accuracy of state estimates is therefore a pre-requisite to the application of such techniques to real systems. In this paper we develop a method of uncertainty analysis based on linear fractional transformations (LFT) and obtain ellipsoid-of-confidence bounds by recasting the LFT problem into a semidefinite programming problem (SDP). The ideas are illustrated by applying them to a simple water distribution network
Algorithm Engineering in Robust Optimization
Robust optimization is a young and emerging field of research having received
a considerable increase of interest over the last decade. In this paper, we
argue that the the algorithm engineering methodology fits very well to the
field of robust optimization and yields a rewarding new perspective on both the
current state of research and open research directions.
To this end we go through the algorithm engineering cycle of design and
analysis of concepts, development and implementation of algorithms, and
theoretical and experimental evaluation. We show that many ideas of algorithm
engineering have already been applied in publications on robust optimization.
Most work on robust optimization is devoted to analysis of the concepts and the
development of algorithms, some papers deal with the evaluation of a particular
concept in case studies, and work on comparison of concepts just starts. What
is still a drawback in many papers on robustness is the missing link to include
the results of the experiments again in the design
Theory and Applications of Robust Optimization
In this paper we survey the primary research, both theoretical and applied,
in the area of Robust Optimization (RO). Our focus is on the computational
attractiveness of RO approaches, as well as the modeling power and broad
applicability of the methodology. In addition to surveying prominent
theoretical results of RO, we also present some recent results linking RO to
adaptable models for multi-stage decision-making problems. Finally, we
highlight applications of RO across a wide spectrum of domains, including
finance, statistics, learning, and various areas of engineering.Comment: 50 page
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