Robustness

Robustness
Author: Lars Peter Hansen
Publisher: Princeton University Press
Total Pages: 453
Release: 2016-06-28
Genre: Business & Economics
ISBN: 0691170975

Download Robustness Book in PDF, Epub and Kindle

The standard theory of decision making under uncertainty advises the decision maker to form a statistical model linking outcomes to decisions and then to choose the optimal distribution of outcomes. This assumes that the decision maker trusts the model completely. But what should a decision maker do if the model cannot be trusted? Lars Hansen and Thomas Sargent, two leading macroeconomists, push the field forward as they set about answering this question. They adapt robust control techniques and apply them to economics. By using this theory to let decision makers acknowledge misspecification in economic modeling, the authors develop applications to a variety of problems in dynamic macroeconomics. Technical, rigorous, and self-contained, this book will be useful for macroeconomists who seek to improve the robustness of decision-making processes.

Uncertainty Within Economic Models

Uncertainty Within Economic Models
Author: Lars Peter Hansen
Publisher: World Scientific
Total Pages: 483
Release: 2014-09-09
Genre: Business & Economics
ISBN: 9814578134

Download Uncertainty Within Economic Models Book in PDF, Epub and Kindle

Written by Lars Peter Hansen (Nobel Laureate in Economics, 2013) and Thomas Sargent (Nobel Laureate in Economics, 2011), Uncertainty within Economic Models includes articles adapting and applying robust control theory to problems in economics and finance. This book extends rational expectations models by including agents who doubt their models and adopt precautionary decisions designed to protect themselves from adverse consequences of model misspecification. This behavior has consequences for what are ordinarily interpreted as market prices of risk, but big parts of which should actually be interpreted as market prices of model uncertainty. The chapters discuss ways of calibrating agents' fears of model misspecification in quantitative contexts.

Robust Expectations and Uncertain Models

Robust Expectations and Uncertain Models
Author: Juha Kilponen
Publisher:
Total Pages: 43
Release: 2004
Genre:
ISBN: 9789524621236

Download Robust Expectations and Uncertain Models Book in PDF, Epub and Kindle

Tiivistelmä: Odotusten muodostus ja malliepävarmuus robustin säätöteorian valossa : sovellus uuskeynesiläiseen makromalliin.

Nonlinear Expectations and Stochastic Calculus under Uncertainty

Nonlinear Expectations and Stochastic Calculus under Uncertainty
Author: Shige Peng
Publisher: Springer
Total Pages: 212
Release: 2020-09-19
Genre: Mathematics
ISBN: 9783662599051

Download Nonlinear Expectations and Stochastic Calculus under Uncertainty Book in PDF, Epub and Kindle

This book is focused on the recent developments on problems of probability model uncertainty by using the notion of nonlinear expectations and, in particular, sublinear expectations. It provides a gentle coverage of the theory of nonlinear expectations and related stochastic analysis. Many notions and results, for example, G-normal distribution, G-Brownian motion, G-Martingale representation theorem, and related stochastic calculus are first introduced or obtained by the author. This book is based on Shige Peng’s lecture notes for a series of lectures given at summer schools and universities worldwide. It starts with basic definitions of nonlinear expectations and their relation to coherent measures of risk, law of large numbers and central limit theorems under nonlinear expectations, and develops into stochastic integral and stochastic calculus under G-expectations. It ends with recent research topic on G-Martingale representation theorem and G-stochastic integral for locally integrable processes. With exercises to practice at the end of each chapter, this book can be used as a graduate textbook for students in probability theory and mathematical finance. Each chapter also concludes with a section Notes and Comments, which gives history and further references on the material covered in that chapter. Researchers and graduate students interested in probability theory and mathematical finance will find this book very useful.

Robust Control Design Using H-8 Methods

Robust Control Design Using H-8 Methods
Author: Ian R. Petersen
Publisher: Springer Science & Business Media
Total Pages: 478
Release: 2000-09-22
Genre: Computers
ISBN: 9781852331719

Download Robust Control Design Using H-8 Methods Book in PDF, Epub and Kindle

This book provides a unified collection of important, recent results for the design of robust controllers for uncertain systems. Most of the results presented are based on H? control theory, or its stochastic counterpart, risk sensitive control theory.Central to the philosophy of the book is the notion of an uncertain system. Uncertain systems are considered using several different uncertainty modeling schemes. These include norm bounded uncertainty, integral quadratic constraint (IQC) uncertainty and a number of stochastic uncertainty descriptions. In particular, the authors examine stochastic uncertain systems in which the uncertainty is outlined by a stochastic version of the IQC uncertainty description.For each class of uncertain systems covered in the book, corresponding robust control problems are defined and solutions discussed.

Nonlinear Expectations and Stochastic Calculus Under Uncertainty

Nonlinear Expectations and Stochastic Calculus Under Uncertainty
Author: Shige Peng
Publisher:
Total Pages: 212
Release: 2019
Genre: Distribution (Probability theory)
ISBN: 9783662599044

Download Nonlinear Expectations and Stochastic Calculus Under Uncertainty Book in PDF, Epub and Kindle

This book is focused on the recent developments on problems of probability model uncertainty by using the notion of nonlinear expectations and, in particular, sublinear expectations. It provides a gentle coverage of the theory of nonlinear expectations and related stochastic analysis. Many notions and results, for example, G-normal distribution, G-Brownian motion, G-Martingale representation theorem, and related stochastic calculus are first introduced or obtained by the author. This book is based on Shige Peng's lecture notes for a series of lectures given at summer schools and universities worldwide. It starts with basic definitions of nonlinear expectations and their relation to coherent measures of risk, law of large numbers and central limit theorems under nonlinear expectations, and develops into stochastic integral and stochastic calculus under G-expectations. It ends with recent research topic on G-Martingale representation theorem and G-stochastic integral for locally integrable processes. With exercises to practice at the end of each chapter, this book can be used as a graduate textbook for students in probability theory and mathematical finance. Each chapter also concludes with a section Notes and Comments, which gives history and further references on the material covered in that chapter. Researchers and graduate students interested in probability theory and mathematical finance will find this book very useful.

Modelling Under Risk and Uncertainty

Modelling Under Risk and Uncertainty
Author: Etienne de Rocquigny
Publisher: John Wiley & Sons
Total Pages: 483
Release: 2012-04-30
Genre: Mathematics
ISBN: 0470695145

Download Modelling Under Risk and Uncertainty Book in PDF, Epub and Kindle

Modelling has permeated virtually all areas of industrial, environmental, economic, bio-medical or civil engineering: yet the use of models for decision-making raises a number of issues to which this book is dedicated: How uncertain is my model ? Is it truly valuable to support decision-making ? What kind of decision can be truly supported and how can I handle residual uncertainty ? How much refined should the mathematical description be, given the true data limitations ? Could the uncertainty be reduced through more data, increased modeling investment or computational budget ? Should it be reduced now or later ? How robust is the analysis or the computational methods involved ? Should / could those methods be more robust ? Does it make sense to handle uncertainty, risk, lack of knowledge, variability or errors altogether ? How reasonable is the choice of probabilistic modeling for rare events ? How rare are the events to be considered ? How far does it make sense to handle extreme events and elaborate confidence figures ? Can I take advantage of expert / phenomenological knowledge to tighten the probabilistic figures ? Are there connex domains that could provide models or inspiration for my problem ? Written by a leader at the crossroads of industry, academia and engineering, and based on decades of multi-disciplinary field experience, Modelling Under Risk and Uncertainty gives a self-consistent introduction to the methods involved by any type of modeling development acknowledging the inevitable uncertainty and associated risks. It goes beyond the “black-box” view that some analysts, modelers, risk experts or statisticians develop on the underlying phenomenology of the environmental or industrial processes, without valuing enough their physical properties and inner modelling potential nor challenging the practical plausibility of mathematical hypotheses; conversely it is also to attract environmental or engineering modellers to better handle model confidence issues through finer statistical and risk analysis material taking advantage of advanced scientific computing, to face new regulations departing from deterministic design or support robust decision-making. Modelling Under Risk and Uncertainty: Addresses a concern of growing interest for large industries, environmentalists or analysts: robust modeling for decision-making in complex systems. Gives new insights into the peculiar mathematical and computational challenges generated by recent industrial safety or environmental control analysis for rare events. Implements decision theory choices differentiating or aggregating the dimensions of risk/aleatory and epistemic uncertainty through a consistent multi-disciplinary set of statistical estimation, physical modelling, robust computation and risk analysis. Provides an original review of the advanced inverse probabilistic approaches for model identification, calibration or data assimilation, key to digest fast-growing multi-physical data acquisition. Illustrated with one favourite pedagogical example crossing natural risk, engineering and economics, developed throughout the book to facilitate the reading and understanding. Supports Master/PhD-level course as well as advanced tutorials for professional training Analysts and researchers in numerical modeling, applied statistics, scientific computing, reliability, advanced engineering, natural risk or environmental science will benefit from this book.

Learning and Expectational Stability under Robust Monetary Policy

Learning and Expectational Stability under Robust Monetary Policy
Author: Sohei Kaihatsu
Publisher:
Total Pages: 59
Release: 2009
Genre:
ISBN:

Download Learning and Expectational Stability under Robust Monetary Policy Book in PDF, Epub and Kindle

In the last few years, several articles have been devoted to the study of model uncertainty in the New Keynesian model using robust control methods. Most studies have focused on how to design a robust monetary policy to take model uncertainty more seriously. Little attention has, however, been given to expectation formation under such a robust monetary policy. The purpose of this study is to explore the expectational stability under robust monetary policy when private expectations are formed by the adaptive learning technology. We find that the economy is determinate and stable under learning if (i) private agents' expectations are observable to the central bank and appropriately incorporated into its optimal policy rules, and (ii) the central bank's preference for robustness is sufficiently weak. It follows that it is important for the central bank to consider expectational stability when it implements a robust monetary policy.

Uncertainty Within Economic Models

Uncertainty Within Economic Models
Author: Lars Peter Hansen
Publisher: World Scientific Publishing Company Incorporated
Total Pages: 454
Release: 2014
Genre: Business & Economics
ISBN: 9789814578110

Download Uncertainty Within Economic Models Book in PDF, Epub and Kindle

"Studying this work in real time taught me a lot, but seeing it laid out in conceptual, rather than chronological, order provides even clearer insights into the evolution of this provocative line of research. Hansen and Sargent are two of the best economists of our time, they are also among the most dedicated teachers in our profession. They have once again moved the research frontier, and with this book provide a roadmap for the rest of us to follow. This is a must-have for anyone interested in modeling uncertainty, ambiguity and robustness."Stanley E ZinWilliam R Berkley Professor of Economics and BusinessLeonard N Stern School of BusinessNew York UniversityWritten by Lars Peter Hansen (Nobel Laureate in Economics, 2013) and Thomas Sargent (Nobel Laureate in Economics, 2011), Uncertainty within Economic Models includes articles adapting and applying robust control theory to problems in economics and finance. This book extends rational expectations models by including agents who doubt their models and adopt precautionary decisions designed to protect themselves from adverse consequences of model misspecification. This behavior has consequences for what are ordinarily interpreted as market prices of risk, but big parts of which should actually be interpreted as market prices of model uncertainty. The chapters discuss ways of calibrating agents' fears of model misspecification in quantitative contexts.