Recognizing that robust decision making is vital in risk
management, this book provides concepts and algorithms for
computing the best decision in view of the worst-case scenario. The
main tool used is minimax, which ensures robust policies with
guaranteed optimal performance that will improve further if the
worst case is not realized. The applications considered are drawn
from finance, but the design and algorithms presented are equally
applicable to problems of economic policy, engineering design, and
other areas of decision making.
Critically, worst-case design addresses not only Armageddon-type
uncertainty. Indeed, the determination of the worst case becomes
nontrivial when faced with numerous--possibly infinite--and
reasonably likely rival scenarios. Optimality does not depend on
any single scenario but on all the scenarios under consideration.
Worst-case optimal decisions provide guaranteed optimal performance
for systems operating within the specified scenario range
indicating the uncertainty. The noninferiority of minimax
solutions--which also offer the possibility of multiple
maxima--ensures this optimality.
Worst-case design is not intended to necessarily replace
expected value optimization when the underlying uncertainty is
stochastic. However, wise decision making requires the
justification of policies based on expected value optimization in
view of the worst-case scenario. Conversely, the cost of the
assured performance provided by robust worst-case decision making
needs to be evaluated relative to optimal expected values.
Written for postgraduate students and researchers engaged in
optimization, engineering design, economics, and finance, this book
will also be invaluable to practitioners in risk management.
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