Statistical Analysis of Financial Data

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A01=James Gentle
advanced financial data modelling
asset portfolio modelling
Author_James Gentle
Category=KFF
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Exploratory Data Analysis
exploratory data visualisation
futures and derivatives analysis
Half Normal Plot
Kernel Density Estimation
Ks Package
Lorenz Curve
Multivariate Kernel Density Estimation
nonparametric smoothing
Normal Reference Distribution
pattern recognition finance
portfolio theory
pricing of derivatives
quantitative finance methods
R software
Reference Distribution
Sample Quantiles
Smoothing Matrix
smoothing of financial data
Smoothing Parameter

Product details

  • ISBN 9781032173467
  • Weight: 1220g
  • Dimensions: 156 x 234mm
  • Publication Date: 30 Sep 2021
  • Publisher: Taylor & Francis Ltd
  • Publication City/Country: GB
  • Product Form: Paperback
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Statistical Analysis of Financial Data covers the use of statistical analysis and the methods of data science to model and analyze financial data. The first chapter is an overview of financial markets, describing the market operations and using exploratory data analysis to illustrate the nature of financial data. The software used to obtain the data for the examples in the first chapter and for all computations and to produce the graphs is R. However discussion of R is deferred to an appendix to the first chapter, where the basics of R, especially those most relevant in financial applications, are presented and illustrated. The appendix also describes how to use R to obtain current financial data from the internet.

Chapter 2 describes the methods of exploratory data analysis, especially graphical methods, and illustrates them on real financial data. Chapter 3 covers probability distributions useful in financial analysis, especially heavy-tailed distributions, and describes methods of computer simulation of financial data. Chapter 4 covers basic methods of statistical inference, especially the use of linear models in analysis, and Chapter 5 describes methods of time series with special emphasis on models and methods applicable to analysis of financial data.

Features

* Covers statistical methods for analyzing models appropriate for financial data, especially models with outliers or heavy-tailed distributions.

* Describes both the basics of R and advanced techniques useful in financial data analysis.

* Driven by real, current financial data, not just stale data deposited on some static website.

* Includes a large number of exercises, many requiring the use of open-source software to acquire real financial data from the internet and to analyze it.

James E. Gentle is University Professor Emeritus at George Mason University. He is a Fellow of the American Statistical Association (ASA) and of the American Association for the Advancement of Science. He is author of Random Number Generation and Monte Carlo Methods and Matrix Algebra.

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