31 results on '"Statistics"'
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2. Applied Spatial Statistics and Econometrics : Data Analysis in R
- Author
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Katarzyna Kopczewska and Katarzyna Kopczewska
- Subjects
- Spatial analysis (Statistics), Econometrics, R (Computer program language)
- Abstract
This textbook is a comprehensive introduction to applied spatial data analysis using R. Each chapter walks the reader through a different method, explaining how to interpret the results and what conclusions can be drawn. The author team showcases key topics, including unsupervised learning, causal inference, spatial weight matrices, spatial econometrics, heterogeneity and bootstrapping. It is accompanied by a suite of data and R code on Github to help readers practise techniques via replication and exercises. This text will be a valuable resource for advanced students of econometrics, spatial planning and regional science. It will also be suitable for researchers and data scientists working with spatial data.
- Published
- 2021
3. Classification and Data Analysis : Theory and Applications
- Author
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Krzysztof Jajuga, Jacek Batóg, Marek Walesiak, Krzysztof Jajuga, Jacek Batóg, and Marek Walesiak
- Subjects
- Statistics, Data mining, Social sciences—Statistical methods, Econometrics, Mathematical statistics—Data processing
- Abstract
This volume gathers peer-reviewed contributions on data analysis, classification and related areas presented at the 28th Conference of the Section on Classification and Data Analysis of the Polish Statistical Association, SKAD 2019, held in Szczecin, Poland, on September 18–20, 2019. Providing a balance between theoretical and methodological contributions and empirical papers, it covers a broad variety of topics, ranging from multivariate data analysis, classification and regression, symbolic (and other) data analysis, visualization, data mining, and computer methods to composite measures, and numerous applications of data analysis methods in economics, finance and other social sciences. The book is intended for a wide audience, including researchers at universities and research institutions, graduate and doctoral students, practitioners, data scientists and employees in public statistical institutions.
- Published
- 2020
4. Multivariate Time Series With Linear State Space Structure
- Author
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Víctor Gómez and Víctor Gómez
- Subjects
- Linear time invariant systems, Variate difference method, Orthographic projection, Linear models (Statistics)
- Abstract
This book presents a comprehensive study of multivariate time series with linear state space structure. The emphasis is put on both the clarity of the theoretical concepts and on efficient algorithms for implementing the theory. In particular, it investigates the relationship between VARMA and state space models, including canonical forms. It also highlights the relationship between Wiener-Kolmogorov and Kalman filtering both with an infinite and a finite sample. The strength of the book also lies in the numerous algorithms included for state space models that take advantage of the recursive nature of the models. Many of these algorithms can be made robust, fast, reliable and efficient. The book is accompanied by a MATLAB package called SSMMATLAB and a webpage presenting implemented algorithms with many examples and case studies. Though it lays a solid theoretical foundation, the book also focuses on practical application, and includes exercises in each chapter. It is intendedfor researchers and students working with linear state space models, and who are familiar with linear algebra and possess some knowledge of statistics.
- Published
- 2016
5. Model Choice in Nonnested Families
- Author
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Basilio de Bragança Pereira, Carlos Alberto de Bragança Pereira, Basilio de Bragança Pereira, and Carlos Alberto de Bragança Pereira
- Subjects
- Bayesian statistical decision theory, Mathematical statistics
- Abstract
This book discusses the problem of model choice when the statistical models are separate, also called nonnested. Chapter 1 provides an introduction, motivating examples and a general overview of the problem. Chapter 2 presents the classical or frequentist approach to the problem as well as several alternative procedures and their properties. Chapter 3 explores the Bayesian approach, the limitations of the classical Bayes factors and the proposed alternative Bayes factors to overcome these limitations. It also discusses a significance Bayesian procedure. Lastly, Chapter 4 examines the pure likelihood approach. Various real-data examples and computer simulations are provided throughout the text.
- Published
- 2016
6. Applied Time Series Analysis and Forecasting with Python
- Author
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Changquan Huang, Alla Petukhina, Changquan Huang, and Alla Petukhina
- Subjects
- Python (Computer program language), Time-series analysis, Time-series analysis--Forecasting, Time-series analysis--Computer programs
- Abstract
This textbook presents methods and techniques for time series analysis and forecasting and shows how to use Python to implement them and solve data science problems. It covers not only common statistical approaches and time series models, including ARMA, SARIMA, VAR, GARCH and state space and Markov switching models for (non)stationary, multivariate and financial time series, but also modern machine learning procedures and challenges for time series forecasting. Providing an organic combination of the principles of time series analysis and Python programming, it enables the reader to study methods and techniques and practice writing and running Python code at the same time. Its data-driven approach to analyzing and modeling time series data helps new learners to visualize and interpret both the raw data and its computed results. Primarily intended for students of statistics, economics and data science with an undergraduate knowledge of probability and statistics, the book will equallyappeal to industry professionals in the fields of artificial intelligence and data science, and anyone interested in using Python to solve time series problems.
- Published
- 2022
7. New Perspectives in Statistical Modeling and Data Analysis : Proceedings of the 7th Conference of the Classification and Data Analysis Group of the Italian Statistical Society, Catania, September 9 - 11, 2009
- Author
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Salvatore Ingrassia, Roberto Rocci, Maurizio Vichi, Salvatore Ingrassia, Roberto Rocci, and Maurizio Vichi
- Subjects
- Statistics, Mathematical statistics—Data processing, Social sciences—Statistical methods, Econometrics
- Abstract
This volume provides recent research results in data analysis, classification and multivariate statistics and highlights perspectives for new scientific developments within these areas. Particular attention is devoted to methodological issues in clustering, statistical modeling and data mining. The volume also contains significant contributions to a wide range of applications such as finance, marketing, and social sciences. The papers in this volume were first presented at the 7th Conference of the Classification and Data Analysis Group (ClaDAG) of the Italian Statistical Society, held at the University of Catania, Italy.
- Published
- 2011
8. XploRe® - Application Guide
- Author
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W. Härdle, Z. Hlavka, S. Klinke, W. Härdle, Z. Hlavka, and S. Klinke
- Subjects
- XploRe, Mathematical statistics--Data processing
- Abstract
Most statistical applications involve computational work with data stored on a computer. The mechanics of interaction with the data is a function of the sta tistical computing environment. This application guide is intended for slightly experienced statisticians in computer-aided data analysis who desire to learn advanced applications in various fields of statistics. The prerequisities for XploRe-the statistic computing environment-are an introductory course in statistics or mathematics. This book is designed as an e-book which means that the text contained in here is also available as an integrated document in HTML and PDF format. The reader of this application guide should therefore be familiar with the basics of Acrobat Reader and of HTML browsers in order to profit from direct computing possibilities within this document. The quantlets presented here may be used together with the academic edi tion of XploRe (http://www.i-xplore.de) or via the XploRe Quantlet Client (XQC) on http://www.xplore-stat.de. The book comes together with a CD Rom that contains the XploRe Quantlet Server (XQS) and the full Auto Pilot Support System (APSS). With this e-book bundle one may directly try the application without being dependent on a specific software version. The quantlets described in the book can be accessed via the links included All executable quantlets are denoted by the symbol. Some in the text.
- Published
- 2012
9. The Art of Semiparametrics
- Author
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Stefan Sperlich, Gökhan Aydinli, Stefan Sperlich, and Gökhan Aydinli
- Subjects
- Econometrics--Congresses, Mathematical statistics--Congresses, Commercial statistics--Congresses
- Abstract
This selection of articles has emerged from different works presented at the conference'The Art of Semiparametrics'celebrated in 2003 in Berlin. The idea was to bring together junior and senior researchers but also practitioners working on semiparametric statistics in rather different fields. The meeting succeeded in welcoming a group that presents a broad range of areas where research on, respectively with, semiparametric methods is going on. It contains mathematical statistics, econometrics, finance, business statistics, etc. and thus combines theoretical contributions with more applied and partly even empirical studies. Although each article represents an original contribution to its own field, they all are written in a self-contained way to be read also by non-experts of the particular topic. This volume therefore offers a collection of individual works that together show the actual large spectrum of semiparametric statistics.
- Published
- 2006
10. Numerical Analysis for Statisticians
- Author
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Kenneth Lange and Kenneth Lange
- Subjects
- Econometrics, Probabilities, Mathematical statistics—Data processing
- Abstract
Every advance in computer architecture and software tempts statisticians to tackle numerically harder problems. To do so intelligently requires a good working knowledge of numerical analysis. This book equips students to craft their own software and to understand the advantages and disadvantages of different numerical methods. Issues of numerical stability, accurate approximation, computational complexity, and mathematical modeling share the limelight in a broad yet rigorous overview of those parts of numerical analysis most relevant to statisticians. In this second edition, the material on optimization has been completely rewritten. There is now an entire chapter on the MM algorithm in addition to more comprehensive treatments of constrained optimization, penalty and barrier methods, and model selection via the lasso. There is also new material on the Cholesky decomposition, Gram-Schmidt orthogonalization, the QR decomposition, the singular value decomposition, and reproducing kernel Hilbert spaces. The discussions of the bootstrap, permutation testing, independent Monte Carlo, and hidden Markov chains are updated, and a new chapter on advanced MCMC topics introduces students to Markov random fields, reversible jump MCMC, and convergence analysis in Gibbs sampling. Numerical Analysis for Statisticians can serve as a graduate text for a course surveying computational statistics. With a careful selection of topics and appropriate supplementation, it can be used at the undergraduate level. It contains enough material for a graduate course on optimization theory. Because many chapters are nearly self-contained, professional statisticians will also find the book useful as a reference.
- Published
- 2010
11. Statistical Analysis of Extreme Values : With Applications to Insurance, Finance, Hydrology and Other Fields
- Author
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Rolf-Dieter Reiss, Michael Thomas, Rolf-Dieter Reiss, and Michael Thomas
- Subjects
- Probabilities, Econometrics, Statistics, Mathematical statistics—Data processing
- Abstract
The statistical analysis of extreme data is important for various disciplines, including hydrology, insurance, finance, engineering and environmental sciences. This book provides a self-contained introduction to the parametric modeling, exploratory analysis and statistical interference for extreme values.The entire text of this third edition has been thoroughly updated and rearranged to meet the new requirements. Additional sections and chapters, elaborated on more than 100 pages, are particularly concerned with topics like dependencies, the conditional analysis and the multivariate modeling of extreme data. Parts I–III about the basic extreme value methodology remain unchanged to some larger extent, yet notable are, e.g., the new sections about'An Overview of Reduced-Bias Estimation'(co-authored by M.I. Gomes),'The Spectral Decomposition Methodology', and'About Tail Independence'(co-authored by M. Frick), and the new chapter about'Extreme Value Statistics of Dependent Random Variables'(co-authored by H. Drees). Other new topics, e.g., a chapter about'Environmental Sciences', (co--authored by R.W. Katz), are collected within Parts IV–VI.Related software is available for free download on extras.springer.com.
- Published
- 2007
12. Modeling Financial Time Series with S-PLUS
- Author
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Eric Zivot, Jiahui Wang, Eric Zivot, and Jiahui Wang
- Subjects
- Econometrics, Computer software, Compilers (Computer programs), Statistics, Social sciences—Mathematics
- Published
- 2013
13. Partial Least Squares Path Modeling : Basic Concepts, Methodological Issues and Applications
- Author
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Hengky Latan, Joseph F. Hair, Jr, Richard Noonan, Hengky Latan, Joseph F. Hair, Jr, and Richard Noonan
- Subjects
- Least squares
- Abstract
Now in its second edition, this edited book presents recent progress and techniques in partial least squares path modeling (PLS-PM), and provides a comprehensive overview of the current state-of-the-art in PLS-PM research. Like the previous edition, the book is divided into three parts: the first part emphasizes the basic concepts and extensions of the PLS-PM method; the second part discusses the methodological issues that have been the focus of recent developments, and the last part deals with real-world applications of the PLS-PM method in various disciplines.This new edition broadens the scope of the first edition and consists of entirely new original contributions, again written by expert authors in the field, on a wide range of topics, including: how to perform quantile composite path modeling with R; the rationale and justification for using PLS-PM in top-tier journals; psychometric properties of three weighting schemes and why PLS-PM is a better fit to mode B; a comprehensive review of PLS software; how to perform out-of-sample predictions with ordinal consistent partial least squares; multicollinearity issues in PLS-PM using ridge regression; theorizing and testing specific indirect effects in PLS and considering their effect size; how to run hierarchical models and available approaches; and how to apply necessary condition analysis (NCA) in PLS-PM.This book will appeal to researchers interested in the latest advances in PLS-PM as well as masters and Ph.D. students in a variety of disciplines who use PLS-PM methods. With clear guidelines on selecting and using PLS-PM, especially those related to composite models, readers will be brought up to date on recent debates in the field.
- Published
- 2023
14. Linear Time Series with MATLAB and OCTAVE
- Author
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Víctor Gómez and Víctor Gómez
- Subjects
- Time-series analysis
- Abstract
This book presents an introduction to linear univariate and multivariate time series analysis, providing brief theoretical insights into each topic, and from the beginning illustrating the theory with software examples. As such, it quickly introduces readers to the peculiarities of each subject from both theoretical and the practical points of view. It also includes numerous examples and real-world applications that demonstrate how to handle different types of time series data. The associated software package, SSMMATLAB, is written in MATLAB and also runs on the free OCTAVE platform. The book focuses on linear time series models using a state space approach, with the Kalman filter and smoother as the main tools for model estimation, prediction and signal extraction. A chapter on state space models describes these tools and provides examples of their use with general state space models. Other topics discussed in the book include ARIMA; and transfer function and structural models; as well as signal extraction using the canonical decomposition in the univariate case, and VAR, VARMA, cointegrated VARMA, VARX, VARMAX, and multivariate structural models in the multivariate case. It also addresses spectral analysis, the use of fixed filters in a model-based approach, and automatic model identification procedures for ARIMA and transfer function models in the presence of outliers, interventions, complex seasonal patterns and other effects like Easter, trading day, etc. This book is intended for both students and researchers in various fields dealing with time series. The software provides numerous automatic procedures to handle common practical situations, but at the same time, readers with programming skills can write their own programs to deal with specific problems. Although the theoretical introduction to each topic is kept to a minimum, readers can consult the companion book ‘Multivariate Time Series With Linear State Space Structure', by the sameauthor, if they require more details.
- Published
- 2019
15. Time Series Analysis for the State-Space Model with R/Stan
- Author
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Junichiro Hagiwara and Junichiro Hagiwara
- Subjects
- State-space methods, Time-series analysis
- Abstract
This book provides a comprehensive and concrete illustration of time series analysis focusing on the state-space model, which has recently attracted increasing attention in a broad range of fields. The major feature of the book lies in its consistent Bayesian treatment regarding whole combinations of batch and sequential solutions for linear Gaussian and general state-space models: MCMC and Kalman/particle filter. The reader is given insight on flexible modeling in modern time series analysis. The main topics of the book deal with the state-space model, covering extensively, from introductory and exploratory methods to the latest advanced topics such as real-time structural change detection. Additionally, a practical exercise using R/Stan based on real data promotes understanding and enhances the reader's analytical capability.
- Published
- 2021
16. The Basics of S-PLUS
- Author
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Andreas Krause, Melvin Olson, Andreas Krause, and Melvin Olson
- Subjects
- Programming languages (Electronic computers), Mathematical statistics--Data processing
- Abstract
Thisisnowthefourtheditionof“TheBasicsofS-Plus”since1997.S-Plus saw a steady growth in popularity, and it established itself in many edu- tional and business places as a major data analysis tool.S-Plus is valued for its modern, interactive data analysis environment, whether it is the p- mary system or a complement to other standards like SAS (the latter is in particular true for the industry we work in, pharmaceuticals). We have followed the various releases with new editions of our book, introducing over time major changes like the incorporation of S Version 4 (the underlying language), Trellis graphs, a graphical user interface, in particular for the Windows operating system, and a chapter on R and its di?erencestoS-Plus(thatareminorforthematerialcoveredinthisbook). Thiseditionisanupdatefromedition3tocovernewfunctionsandfeatures ofS-Plus Version 7.0 (working from the beta release for MS Windows and Linux), adding more practical tips and examples, and correcting a few mistakes. We are very grateful to all our readers, in particular those sending us suggestions, comments, and any other kind of feedback. You will see some of these re?ected in the book.
- Published
- 2005
17. Statistische Datenanalyse mit SPSS : Eine anwendungsorientierte Einführung in das Basissystem und das Modul Exakte Tests
- Author
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Jürgen Janssen, Wilfried Laatz, Jürgen Janssen, and Wilfried Laatz
- Subjects
- Datenanalyse--SPSS 15.0 f¨ur WINDOWS
- Abstract
Dieses Buch liefert Anfängern einen leichten Einstieg in SPSS und dient erfahrenen Nutzern (auch früherer Programmversionen) zugleich als hervorragendes Nachschlagewerk. Die Nutzung des Buchs ist dabei weitgehend ohne mathematische Vorkenntnisse möglich. Die Methoden und deren Anwendung mit SPSS werden anschaulich anhand von Beispielen aus der Praxis erläutert. Auf der Internetseite zum Buch sind alle Datensätze, ergänzende Texte, Übungsaufgaben mit ihren Lösungen sowie weitere Informationen verfügbar.Die 9. Auflage dieses Buchs basiert auf IBM SPSS Statistics 24 (Base und Exact Tests). Im Rahmen der Neuauflage wurden etliche Kapitel überarbeitet. Hinzugekommen sind Kapitel zu neuen statistischen Verfahren sowie ein Übersichtskapitel zu Signifikanztests: Letzteres erleichtert es dem SPSS-Nutzer, aus der Vielzahl der in SPSS verfügbaren Tests den für seine Aufgabenstellung richtigen zu wählen.
- Published
- 2016
18. Seasonal Adjustment with the X-11 Method
- Author
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Dominique Ladiray, Benoit Quenneville, Dominique Ladiray, and Benoit Quenneville
- Subjects
- Seasonal variations (Economics)--Statistical met
- Abstract
The authors, Dominique Ladiray and Benoit Quenneville, provide a unique and comprehensive r~view of the X-11 Method of seasonal adjustment. They review the original X-11 Method developed at the US Bureau of the Census in the mid-1960's, the X-ll core of the X-ll-ARTMA Method developed at Statistics Canada in the 1970's, and the X-11 module in the X- 12-ARTMA Method developed more recently at the Bureau of the Census. The review will prove extremely useful to anyone working in the field of seasonal adjustment who wants to understand the X-11 Method and how it fits into the broader picture of seasonal adjustment. What the authors designate as the X-11 Method was originally desig nated the X-11 Variant of the Census Method IT Seasonal Adjustment Program. It was the culmination of the pioneering work undertaken at the Bureau of the Census by Julius Shiskin in the 1950's. Shiskin introduced the Census Method T Seasonal Adjustment Program in 1954 and soon followed it with the introduction of Method TT in 1957.
- Published
- 2012
19. Partial Least Squares Path Modeling : Basic Concepts, Methodological Issues and Applications
- Author
-
Hengky Latan, Richard Noonan, Hengky Latan, and Richard Noonan
- Subjects
- Least squares
- Abstract
This edited book presents the recent developments in partial least squares-path modeling (PLS-PM) and provides a comprehensive overview of the current state of the most advanced research related to PLS-PM. The first section of this book emphasizes the basic concepts and extensions of the PLS-PM method. The second section discusses the methodological issues that are the focus of the recent development of the PLS-PM method. The third part discusses the real world application of the PLS-PM method in various disciplines. The contributions from expert authors in the field of PLS focus on topics such as the factor-based PLS-PM, the perfect match between a model and a mode, quantile composite-based path modeling (QC-PM), ordinal consistent partial least squares (OrdPLSc), non-symmetrical composite-based path modeling (NSCPM), modern view for mediation analysis in PLS-PM, a multi-method approach for identifying and treating unobserved heterogeneity, multigroup analysis (PLS-MGA), the assessment of the common method bias, non-metric PLS with categorical indicators, evaluation of the efficiency and accuracy of model misspecification and bootstrap parameter recovery in PLS-PM, CB-SEM, and the Bollen-Stine methods and importance-performance map analysis (IPMA) for nonlinear relationships. This book will be useful for researchers and practitioners interested in the latest advances in PLS-PM as well as master and Ph.D. students in a variety of disciplines using the PLS-PM method for their projects.
- Published
- 2017
20. Quantile Regression for Cross-Sectional and Time Series Data : Applications in Energy Markets Using R
- Author
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Jorge M. Uribe, Montserrat Guillen, Jorge M. Uribe, and Montserrat Guillen
- Subjects
- R (Computer program language), Time-series analysis, Quantile regression
- Abstract
This brief addresses the estimation of quantile regression models from a practical perspective, which will support researchers who need to use conditional quantile regression to measure economic relationships among a set of variables. It will also benefit students using the methodology for the first time, and practitioners at private or public organizations who are interested in modeling different fragments of the conditional distribution of a given variable. The book pursues a practical approach with reference to energy markets, helping readers learn the main features of the technique more quickly. Emphasis is placed on the implementation details and the correct interpretation of the quantile regression coefficients rather than on the technicalities of the method, unlike the approach used in the majority of the literature. All applications are illustrated with R.
- Published
- 2020
21. Analyzing Financial Data and Implementing Financial Models Using R
- Author
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Clifford S. Ang and Clifford S. Ang
- Subjects
- R (Computer program language), Mathematical statistics, Finance--Mathematical models
- Abstract
This book is a comprehensive introduction to financial modeling that teaches advanced undergraduate and graduate students in finance and economics how to use R to analyze financial data and implement financial models. This text will show students how to obtain publicly available data, manipulate such data, implement the models, and generate typical output expected for a particular analysis.This text aims to overcome several common obstacles in teaching financial modeling. First, most texts do not provide students with enough information to allow them to implement models from start to finish. In this book, we walk through each step in relatively more detail and show intermediate R output to help students make sure they are implementing the analyses correctly. Second, most books deal with sanitized or clean data that have been organized to suit a particular analysis. Consequently, many students do not know how to deal with real-world data or know how to apply simple data manipulation techniques to get the real-world data into a usable form. This book will expose students to the notion of data checking and make them aware of problems that exist when using real-world data. Third, most classes or texts use expensive commercial software or toolboxes. In this text, we use R to analyze financial data and implement models. R and the accompanying packages used in the text are freely available; therefore, any code or models we implement do not require any additional expenditure on the part of the student.Demonstrating rigorous techniques applied to real-world data, this text covers a wide spectrum of timely and practical issues in financial modeling, including return and risk measurement, portfolio management, options pricing, and fixed income analysis.
- Published
- 2015
22. An Introduction to R for Quantitative Economics : Graphing, Simulating and Computing
- Author
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Vikram Dayal and Vikram Dayal
- Subjects
- Economics--Data processing, R (Computer program language)
- Abstract
This book gives an introduction to R to build up graphing, simulating and computing skills to enable one to see theoretical and statistical models in economics in a unified way. The great advantage of R is that it is free, extremely flexible and extensible. The book addresses the specific needs of economists, and helps them move up the R learning curve. It covers some mathematical topics such as, graphing the Cobb-Douglas function, using R to study the Solow growth model, in addition to statistical topics, from drawing statistical graphs to doing linear and logistic regression. It uses data that can be downloaded from the internet, and which is also available in different R packages. With some treatment of basic econometrics, the book discusses quantitative economics broadly and simply, looking at models in the light of data. Students of economics or economists keen to learn how to use R would find this book very useful.
- Published
- 2015
23. Sampling Spatial Units for Agricultural Surveys
- Author
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Roberto Benedetti, Federica Piersimoni, Paolo Postiglione, Roberto Benedetti, Federica Piersimoni, and Paolo Postiglione
- Subjects
- Spatial data infrastructures, Agricultural surveys--Methodology
- Abstract
The research and its outcomes presented here focus on spatial sampling of agricultural resources. The authors introduce sampling designs and methods for producing accurate estimates of crop production for harvests across different regions and countries. With the help of real and simulated examples performed with the open-source software R, readers will learn about the different phases of spatial data collection. The agricultural data analyzed in this book help policymakers and market stakeholders to monitor the production of agricultural goods and its effects on environment and food safety.
- Published
- 2015
24. Modeling Financial Time Series with S-PLUS®
- Author
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Eric Zivot, Jiahui Wang, Eric Zivot, and Jiahui Wang
- Subjects
- Finance--Mathematical models, Time-series analysis, Finance--Econometric models
- Abstract
The field of financial econometrics has exploded over the last decade. This book represents an integration of theory, methods, and examples using the S-PLUS statistical modeling language and the S+FinMetrics module to facilitate the practice of financial econometrics. This is the first book to show the power of S-PLUS for the analysis of time series data. It is written for researchers and practitioners in the finance industry, academic researchers in economics and finance, and advanced MBA and graduate students in economics and finance. Readers are assumed to have a basic knowledge of S-PLUS and a solid grounding in basic statistics and time series concepts. This second edition is updated to cover S+FinMetrics 2.0 and includes new chapters on copulas, nonlinear regime switching models, continuous-time financial models, generalized method of moments, semi-nonparametric conditional density models, and the efficient method of moments. From the reviews of the second edition:'It provides theoretical and empirical discussions on exhaustive topics in modern financial econometrics, statistics and time series. … it is definitely a good reference book for use in studying and/or researching in modern empirical finance ….'(T. S. Wirjanto, Short Book Reviews, Vol. 26 (1), 2006)'...It is a pleasure to strongly recommend this text, and to include statisticians such as myself among the pleased audience.'(Thomas L. Burr for Techommetrics, Vol. 49, No. 1, February 2007)
- Published
- 2006
25. Introduction to Time Series and Forecasting
- Author
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Peter J. Brockwell, Richard A. Davis, Peter J. Brockwell, and Richard A. Davis
- Subjects
- Time-series analysis
- Abstract
Some of the key mathematical results are stated without proof in order to make the underlying theory accessible to a wider audience. The book assumes a knowledge only of basic calculus, matrix algebra, and elementary statistics. The emphasis is on methods and the analysis of data sets. The logic and tools of model-building for stationary and nonstationary time series are developed in detail and numerous exercises, many of which make use of the included computer package, provide the reader with ample opportunity to develop skills in this area. The core of the book covers stationary processes, ARMA and ARIMA processes, multivariate time series and state-space models, with an optional chapter on spectral analysis. Additional topics include harmonic regression, the Burg and Hannan-Rissanen algorithms, unit roots, regression with ARMA errors, structural models, the EM algorithm, generalized state-space models with applications to time series of count data, exponential smoothing, the Holt-Winters and ARAR forecasting algorithms, transfer function models and intervention analysis. Brief introductions are also given to cointegration and to nonlinear, continuous-time and long-memory models. The time series package included in the back of the book is a slightly modified version of the package ITSM, published separately as ITSM for Windows, by Springer-Verlag, 1994. It does not handle such large data sets as ITSM for Windows, but like the latter, runs on IBM-PC compatible computers under either DOS or Windows (version 3.1 or later). The programs are all menu-driven so that the reader can immediately apply the techniques in the book to time series data, with a minimal investment of time in the computational and algorithmic aspects of the analysis.
- Published
- 2002
26. Handbook of Financial Time Series
- Author
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Torben Gustav Andersen, Richard A. Davis, Jens-Peter Kreiß, Thomas V. Mikosch, Torben Gustav Andersen, Richard A. Davis, Jens-Peter Kreiß, and Thomas V. Mikosch
- Subjects
- Time-series analysis, Finance--Statistical methods
- Abstract
This handbook presents a collection of survey articles from a statistical as well as an econometric point of view on the broad and still rapidly developing field of financial time series. It includes most of the relevant topics in the field, from fundamental probabilistic properties of financial time series models to estimation, forecasting, model fitting, extreme value behavior and multivariate modeling for a wide range of GARCH, stochastic volatility, and continuous-time models. The latter are especially important for modeling high frequency and irregularly observed financial time series and provide the foundation for estimating realized volatility. Cointegration and unit roots, which are extremely important concepts for understanding and modeling nonstationary time series, and several further relevant topics in the field of financial time series (i.e. nonparametric methods, copulas, structural breaks, high frequency data, resampling and bootstrap methods, and model selection for financial time series among others) are included in detail. All contributions are clearly written and provide, in a pedagogical manner, a broad and detailed overview of the major topics within financial time series.
- Published
- 2009
27. Simulation and Inference for Stochastic Differential Equations : With R Examples
- Author
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Stefano M. Iacus and Stefano M. Iacus
- Subjects
- Finance, Stochastic differential equations, Stochastic processes, Distribution (Probability theory)
- Abstract
Stochastic di?erential equations model stochastic evolution as time evolves. These models have a variety of applications in many disciplines and emerge naturally in the study of many phenomena. Examples of these applications are physics (see, e. g., [176] for a review), astronomy [202], mechanics [147], economics [26], mathematical?nance [115], geology [69], genetic analysis (see, e. g., [110], [132], and [155]), ecology [111], cognitive psychology (see, e. g., [102], and [221]), neurology [109], biology [194], biomedical sciences [20], epidemi- ogy [17], political analysis and social processes [55], and many other?elds of science and engineering. Although stochastic di?erential equations are quite popular models in the above-mentioned disciplines, there is a lot of mathem- ics behind them that is usually not trivial and for which details are not known to practitioners or experts of other?elds. In order to make this book useful to a wider audience, we decided to keep the mathematical level of the book su?ciently low and often rely on heuristic arguments to stress the underlying ideas of the concepts introduced rather than insist on technical details. Ma- ematically oriented readers may?nd this approach inconvenient, but detailed references are always given in the text. As the title of the book mentions, the aim of the book is twofold.
- Published
- 2008
28. Applied Data Mining for Forecasting Using SAS
- Author
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Tim Rey, Arthur Kordon, Chip Wells, Tim Rey, Arthur Kordon, and Chip Wells
- Subjects
- Forecasting, Data mining
- Abstract
Applied Data Mining for Forecasting Using SAS, by Tim Rey, Arthur Kordon, and Chip Wells, introduces and describes approaches for mining large time series data sets. Written for forecasting practitioners, engineers, statisticians, and economists, the book details how to select useful candidate input variables for time series regression models in environments when the number of candidates is large, and identifies the correlation structure between selected candidate inputs and the forecast variable.
- Published
- 2012
29. Statistische Datenanalyse mit SPSS für Windows : Eine anwendungsorientierte Einführung in das Basissystem und das Modul Exakte Tests
- Author
-
Jürgen Janssen, Wilfried Laatz, Jürgen Janssen, and Wilfried Laatz
- Subjects
- Social sciences--Statistical methods--Computer programs
- Abstract
Die 6. Auflage basiert auf Programmversion 15. Die Autoren demonstrieren mit möglichst wenig Mathematik, detailliert und anschaulich anhand von Beispielen aus der Praxis die statistischen Methoden und deren Anwendungen. Der Anfänger findet für das Selbststudium einen sehr leichten Einstieg in das Programmsystem, für den erfahrenen SPSS-Anwender (auch früherer Versionen) ist das Buch ein hervorragendes Nachschlagewerk. Auf den zum Buch gehörenden Internetseiten sind alle Datendateien sowie weitere Informationen verfügbar. Aus Besprechungen zu den Vorauflagen:'Im Gegensatz zur Masse der SPSS-Bücher ist dieses Werk erfreulich verständlich und anwendungsorientiert geschrieben... Viele Screenshots und gute Beispiele erleichtern sowohl die Anwendung von SPSS als auch das Verständnis der einzelnen Verfahren... Sowohl für Praktiker als auch anwendungsorientierte Wissenschaftler und Studenten vorbehaltlos zu empfehlen. Im Doppelpack mit den Multivariaten von Backhaus et. al. in Breite und Tiefe nicht zu toppen.'(amazon.de)
- Published
- 2007
30. Time Series Analysis Using SAS Enterprise Guide
- Author
-
Timina Liu, Shuangzhe Liu, Lei Shi, Timina Liu, Shuangzhe Liu, and Lei Shi
- Subjects
- Time-series analysis
- Abstract
This is the first book to present time series analysis using the SAS Enterprise Guide software. It includes some starting background and theory to various time series analysis techniques, and demonstrates the data analysis process and the final results via step-by-step extensive illustrations of the SAS Enterprise Guide software. This book is a practical guide to time series analyses in SAS Enterprise Guide, and is valuable resource that benefits a wide variety of sectors.
- Published
- 2020
31. Economic Modeling Using Artificial Intelligence Methods
- Author
-
Tshilidzi Marwala and Tshilidzi Marwala
- Subjects
- Artificial intelligence, Economics--Computer simulation, Economics--Data processing
- Abstract
Economic Modeling Using Artificial Intelligence Methods examines the application of artificial intelligence methods to model economic data. Traditionally, economic modeling has been modeled in the linear domain where the principles of superposition are valid. The application of artificial intelligence for economic modeling allows for a flexible multi-order non-linear modeling. In addition, game theory has largely been applied in economic modeling. However, the inherent limitation of game theory when dealing with many player games encourages the use of multi-agent systems for modeling economic phenomena.The artificial intelligence techniques used to model economic data include:multi-layer perceptron neural networksradial basis functionssupport vector machinesrough setsgenetic algorithmparticle swarm optimizationsimulated annealingmulti-agent systemincremental learningfuzzy networksSignal processing techniques are explored to analyze economic data, and these techniques are the time domain methods, time-frequency domain methods and fractals dimension approaches. Interesting economic problems such as causality versus correlation, simulating the stock market, modeling and controling inflation, option pricing, modeling economic growth as well as portfolio optimization are examined. The relationship between economic dependency and interstate conflict is explored, and knowledge on how economics is useful to foster peace – and vice versa – is investigated. Economic Modeling Using Artificial Intelligence Methods deals with the issue of causality in the non-linear domain and applies the automatic relevance determination, the evidence framework, Bayesian approach and Granger causality to understand causality and correlation.Economic Modeling Using Artificial Intelligence Methods makes an important contribution to the area of econometrics,and is a valuable source of reference for graduate students, researchers and financial practitioners.
- Published
- 2013
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