High Dimensionality In Statistics And Portfolio Optimization


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High-dimensionality in Statistics and Portfolio Optimization


High-dimensionality in Statistics and Portfolio Optimization

Author: Konstantin Glombek

language: en

Publisher: BoD – Books on Demand

Release Date: 2012


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Statistical Portfolio Estimation


Statistical Portfolio Estimation

Author: Masanobu Taniguchi

language: en

Publisher: CRC Press

Release Date: 2017-09-01


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The composition of portfolios is one of the most fundamental and important methods in financial engineering, used to control the risk of investments. This book provides a comprehensive overview of statistical inference for portfolios and their various applications. A variety of asset processes are introduced, including non-Gaussian stationary processes, nonlinear processes, non-stationary processes, and the book provides a framework for statistical inference using local asymptotic normality (LAN). The approach is generalized for portfolio estimation, so that many important problems can be covered. This book can primarily be used as a reference by researchers from statistics, mathematics, finance, econometrics, and genomics. It can also be used as a textbook by senior undergraduate and graduate students in these fields.

Modern Nonparametric, Robust and Multivariate Methods


Modern Nonparametric, Robust and Multivariate Methods

Author: Klaus Nordhausen

language: en

Publisher: Springer

Release Date: 2015-10-05


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Written by leading experts in the field, this edited volume brings together the latest findings in the area of nonparametric, robust and multivariate statistical methods. The individual contributions cover a wide variety of topics ranging from univariate nonparametric methods to robust methods for complex data structures. Some examples from statistical signal processing are also given. The volume is dedicated to Hannu Oja on the occasion of his 65th birthday and is intended for researchers as well as PhD students with a good knowledge of statistics.