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The First Collection That Covers This Field at the Dynamic
Strategic and One-Period Tactical Levels Addressing the imbalance
between research and practice, Quantitative Fund Management
presents leading-edge theory and methods, along with their
application in practical problems encountered in the fund
management industry. A Current Snapshot of State-of-the-Art
Applications of Dynamic Stochastic Optimization Techniques to
Long-Term Financial Planning The first part of the book initially
looks at how the quantitative techniques of the equity industry are
shifting from basic Markowitz mean-variance portfolio optimization
to risk management and trading applications. This section also
explores novel aspects of lifetime individual consumption
investment problems, fixed-mix portfolio rebalancing allocation
strategies, debt management for funding mortgages and national
debt, and guaranteed return fund construction. Up-to-Date Overview
of Tactical Financial Planning and Risk Management The second
section covers nontrivial computational approaches to tactical fund
management. This part focuses on portfolio construction and risk
management at the individual security or fund manager level over
the period up to the next portfolio rebalance. It discusses
non-Gaussian returns, new risk-return tradeoffs, and the robustness
of benchmarks and portfolio decisions. The Future Use of
Quantitative Techniques in Fund Management With contributions from
well-known academics and practitioners, this volume will
undoubtedly foster the recognition and wider acceptance of
stochastic optimization techniques in financial practice.
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Operations Research Proceedings 2015 - Selected Papers of the International Conference of the German, Austrian and Swiss Operations Research Societies (GOR, OEGOR, SVOR/ASRO), University of Vienna, Austria, September 1-4, 2015 (Paperback, 1st ed. 2017)
Karl Franz Doerner, Ivana Ljubic, Georg Pflug, Gernot Tragler
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R4,707
Discovery Miles 47 070
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Ships in 10 - 15 working days
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This book gathers a selection of refereed papers presented at the
"International Conference on Operations Research OR2015," which was
held at the University of Vienna, Austria, September 1-4, 2015.
Over 900 scientists and students from 50 countries attended this
conference and presented more than 600 papers in parallel topic
streams as well as special award sessions. Though the guiding theme
of the conference was "Optimal Decision and Big Data," this volume
also includes papers addressing practically all aspects of modern
Operations Research.
The First Collection That Covers This Field at the Dynamic
Strategic and One-Period Tactical Levels Addressing the imbalance
between research and practice, Quantitative Fund Management
presents leading-edge theory and methods, along with their
application in practical problems encountered in the fund
management industry. A Current Snapshot of State-of-the-Art
Applications of Dynamic Stochastic Optimization Techniques to
Long-Term Financial Planning The first part of the book initially
looks at how the quantitative techniques of the equity industry are
shifting from basic Markowitz mean-variance portfolio optimization
to risk management and trading applications. This section also
explores novel aspects of lifetime individual consumption
investment problems, fixed-mix portfolio rebalancing allocation
strategies, debt management for funding mortgages and national
debt, and guaranteed return fund construction. Up-to-Date Overview
of Tactical Financial Planning and Risk Management The second
section covers nontrivial computational approaches to tactical fund
management. This part focuses on portfolio construction and risk
management at the individual security or fund manager level over
the period up to the next portfolio rebalance. It discusses
non-Gaussian returns, new risk-return tradeoffs, and the robustness
of benchmarks and portfolio decisions. The Future Use of
Quantitative Techniques in Fund Management With contributions from
well-known academics and practitioners, this volume will
undoubtedly foster the recognition and wider acceptance of
stochastic optimization techniques in financial practice.
Stefan Hochrainer develops a catastrophe risk management model. It
illustrates which trade-offs and choices a country must make in
managing economic risks due to natural disasters. Budgetary
resources are allocated to pre-disaster risk management strategies
to reduce the probability of financing gaps. The framework and
model approach allows cross country comparisons as well as the
assessment of financial vulnerability, macroeconomic risk, and risk
management strategies. Three case studies demonstrate its
flexibility and coherent approach.
Ongoing global changes bring fundamentally new scientific problems
requiring
new concepts and tools. A key issue concerns a vast variety of
practically
irreducible uncertainties, which challenge our traditional models
and require
new concepts and analytical tools. The uncertainty critically
dominates, e.g.,
the climate change debates. In short, the dilemma is concerned with
enormous
costs vs. massive uncertainties of potential extreme impacts.
Traditional scientific approaches usually rely on real observations
and
experiments. Yet no sufficient observations exist for new problems,
and "pure"
experiments and learning by doing may be very expensive, dangerous,
or
simply impossible. In addition, available historical observations
are contaminated
by actions, policies. The complexity of new problems does not allow
to achieve
enough certainty by increasing the resolution of models or by
bringing in more links.
Hence, new tools for modeling and management of uncertainty are
needed, as given
in this book which was prepared for an interdisciplinary audience,
and addresses open
problems, limitations of known approaches, novel methods and
techniques, or lessons
from the applications of various approaches. Thus, the book
contributes to a better
understanding between practitioners dealing with the management of
uncertainty, and
scientists working on either corresponding modeling approaches that
can be applied for
improving understanding or management of uncertainty.
This volume contains selected papers presented at the
"International Workshop on Computationally Intensive Methods in
Simulation and Op th th timization" held from 23 to 25 August 1990
at the International Institute for Applied Systems Analysis (nASA)
in La~enburg, Austria. The purpose of this workshop was to evaluate
and to compare recently developed methods dealing with optimization
in uncertain environments. It is one of the nASA's activities to
study optimal decisions for uncertain systems and to make the
result usable in economic, financial, ecological and resource
planning. Over 40 participants from 12 different countries
contributed to the success of the workshop, 12 papers were selected
for this volume. Prof. A. Kurzhanskii Chairman of the Systems and
Decision Sciences Program nASA Preface Optimization in an random
environment has become an important branch of Applied Mathematics
and Operations Research. It deals with optimal de cisions when only
incomplete information of t.he future is available. Consider the
following example: you have to make the decision about the amount
of production although the future demand is unknown. If the size of
the de mand can be described by a probability distribution, the
problem is called a stochastic optimization problem.
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