Time Series Analysis and Its Applications

Time Series Analysis and Its Applications pdf epub mobi txt 电子书 下载 2025

出版者:Springer
作者:Robert H. Shumway
出品人:
页数:610
译者:
出版时间:2010-11-1
价格:USD 99.00
装帧:Paperback
isbn号码:9781441978646
丛书系列:
图书标签:
  • R
  • 时间序列
  • Statistics
  • 时间序列分析
  • Time_Series
  • 统计
  • 数学
  • 数据挖掘
  • Time Series Analysis
  • Applications
  • Statistics
  • Data Analysis
  • Forecasting
  • Modeling
  • Econometrics
  • Machine Learning
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具体描述

Time Series Analysis and Its Applications presents a balanced and comprehensive treatment of both time and frequency domain methods with accompanying theory. Numerous examples using non-trivial data illustrate solutions to problems such as evaluating pain perception experiments using magnetic resonance imaging or monitoring a nuclear test ban treaty. The book is designed to be useful as a text for graduate level students in the physical, biological and social sciences and as a graduate level text in statistics. Some parts may also serve as an undergraduate introductory course. Theory and methodology are separated to allow presentations on different levels. Material from the earlier 1988 Prentice-Hall text Applied Statistical Time Series Analysis has been updated by adding modern developments involving categorical time sries analysis and the spectral envelope, multivariate spectral methods, long memory series, nonlinear models, longitudinal data analysis, resampling techniques, ARCH models, stochastic volatility, wavelets and Monte Carlo Markov chain integration methods. These add to a classical coverage of time series regression, univariate and multivariate ARIMA models, spectral analysis and state-space models. The book is complemented by ofering accessibility, via the World Wide Web, to the data and an exploratory time series analysis program ASTSA for Windows that can be downloaded as Freeware. Robert H. Shumway is Professor of Statistics at the University of California, Davis. He is a Fellow of the American Statistical Association and a member of the Inernational Statistical Institute. He won the 1986 American Statistical Association Award for Outstanding Statistical Application and the 1992 Communicable Diseases Center Statistics Award; both awards were for joint papers on time series applications. He is the author of a previous 1988 Prentice-Hall text on applied time series analysis and is currenlty a Departmental Editor for the Journal of Forecasting. David S. Stoffer is Professor of Statistics at the University of Pittsburgh. He has made seminal contributions to the analysis of categorical time series and won the 1989 American Statistical Association Award for Outstanding Statistical Application in a joint paper analyzing categorical time series arising in infant sleep-state cycling. He is currently an Associate Editor of the Journal of Forecasting and has served as an Associate Editor for the Journal fo the American Statistical Association. --This text refers to an alternate Hardcover edition.

作者简介

目录信息

Contents
1 Characteristics of Time Series 1
1.1 Introduction 1
1.2 The Nature of Time Series Data 3
1.3 Time Series Statistical Models 11
1.4 Measures of Dependence: Autocorrelation and Cross-Correlation 17
1.5 Stationary Time Series 22
1.6 Estimation of Correlation 28
1.7 Vector-Valued and Multidimensional Series 33
2 Time Series Regression and Exploratory Data Analysis 47
2.1 Introduction 47
2.2 Classical Regression in the Time Series Context 48
2.3 Exploratory Data Analysis 57
2.4 Smoothing in the Time Series Context 70
3 ARIMA Models 83
3.1 Introduction 83
3.2 Autoregressive Moving Average Models 84
3.3 Difference Equations 97
3.4 Autocorrelation and Partial Autocorrelation 102
3.5 Forecasting 108
3.6 Estimation 121
3.7 Integrated Models for Nonstationary Data 141
3.8 Building ARIMA Models 144
3.9 Multiplicative Seasonal ARIMA Models 154
4 Spectral Analysis and Filtering 173
4.1 Introduction 173
4.2 Cyclical Behavior and Periodicity 175
4.3 The Spectral Density 180
4.4 Periodogram and Discrete Fourier Transform 187
4.5 Nonparametric Spectral Estimation 196
4.6 Parametric Spectral Estimation 212
4.7 Multiple Series and Cross-Spectra 216
4.8 Linear Filters 221
4.9 Dynamic Fourier Analysis and Wavelets 228
4.10 Lagged Regression Models 242
4.11 Signal Extraction and Optimum Filtering 247
4.12 Spectral Analysis of Multidimensional Series 252
5 Additional Time Domain Topics 267
5.1 Introduction 267
5.2 Long Memory ARMA and Fractional Differencing 267
5.3 Unit Root Testing 277
5.4 GARCH Models 280
5.5 Threshold Models 289
5.6 Regression with Autocorrelated Errors 293
5.7 Lagged Regression: Transfer Function Modeling 296
5.8 Multivariate ARMAX Models 301
6 State-Space Models 319
6.1 Introduction 319
6.2 Filtering, Smoothing, and Forecasting 325
6.3 Maximum Likelihood Estimation 335
6.4 Missing Data Modifications 344
6.5 Structural Models: Signal Extraction and Forecasting 350
6.6 State-Space Models with Correlated Errors 354
6.6.1 ARMAX Models 355
6.6.2 Multivariate Regression with Autocorrelated Errors 356
6.7 Bootstrapping State-Space Models 359
6.8 Dynamic Linear Models with Switching 365
6.9 Stochastic Volatility 378
6.10 Nonlinear and Non-normal State-Space Models Using Monte Carlo Methods 387
7 Statistical Methods in the Frequency Domain 405
7.1 Introduction 405
7.2 Spectral Matrices and Likelihood Functions 409
7.3 Regression for Jointly Stationary Series 410
7.4 Regression with Deterministic Inputs 420
7.5 Random Coefficient Regression 429
7.6 Analysis of Designed Experiments 434
7.7 Discrimination and Cluster Analysis 450
7.8 Principal Components and Factor Analysis 468
7.9 The Spectral Envelope 485
Appendix A: Large Sample Theory 507
A.1 Convergence Modes 507
A.2 Central Limit Theorems 515
A.3 The Mean and Autocorrelation Functions 518
Appendix B: Time Domain Theory 527
B.1 Hilbert Spaces and the Projection Theorem 527
B.2 Causal Conditions for ARMA Models 531
B.3 Large Sample Distribution of the AR(p) Conditional Least Squares Estimators 533
B.4 The Wold Decomposition 537
Appendix C: Spectral Domain Theory 539
C.1 Spectral Representation Theorem 539
C.2 Large Sample Distribution of the DFT and Smoothed Periodogram 543
C.3 The Complex Multivariate Normal Distribution 554
Appendix R: R Supplement 559
R.1 First Things First 559
R.1.1 Included Data Sets 560
R.1.2 Included Scripts 562
R.2 Getting Started 567
R.3 Time Series Primer 571
· · · · · · (收起)

读后感

评分

硕士期间学过时间序列分析,重点在于希尔伯特空间视角下的时间序列,需要比较强的泛函水平,学的一塌糊涂。近日因为工作愿意,需要利用时间序列分析进行一些分析建模,在quick R的主页上链接到了本书的页面,随即在互联网上下到这本书的电子版,读了一下导读和要用到的几个例子...  

评分

此书内容全面且比较新,除了传统内容(ARIMA,spectral analysis,state-space models)以外,还介绍了不少该领域中其他一些重要的topics或者新近的发展,诸如:GARCH,long-run memory process,threshold等。个人认为本书对ARIMA的介绍很好,第三章最后两节用几个例子介绍了Box-J...  

评分

硕士期间学过时间序列分析,重点在于希尔伯特空间视角下的时间序列,需要比较强的泛函水平,学的一塌糊涂。近日因为工作愿意,需要利用时间序列分析进行一些分析建模,在quick R的主页上链接到了本书的页面,随即在互联网上下到这本书的电子版,读了一下导读和要用到的几个例子...  

评分

硕士期间学过时间序列分析,重点在于希尔伯特空间视角下的时间序列,需要比较强的泛函水平,学的一塌糊涂。近日因为工作愿意,需要利用时间序列分析进行一些分析建模,在quick R的主页上链接到了本书的页面,随即在互联网上下到这本书的电子版,读了一下导读和要用到的几个例子...  

评分

此书内容全面且比较新,除了传统内容(ARIMA,spectral analysis,state-space models)以外,还介绍了不少该领域中其他一些重要的topics或者新近的发展,诸如:GARCH,long-run memory process,threshold等。个人认为本书对ARIMA的介绍很好,第三章最后两节用几个例子介绍了Box-J...  

用户评价

评分

一般

评分

我真的是好讨厌证明啊

评分

今天整理文件忽然看到这本书的PDF,之前学Macroeconometric主要参考的就是这本和Hamilton的那本,不过个人更喜欢后者,只是当时因为Hamilton的那本版本太老又没有R的代码演示才看的这本,不过这本框架很棒,循序渐进,最后几章难度跨越有点大。打四星是因为这是我唯一只得了A的课。

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我觉得这辈子都不会再看这本书了

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也许会看- -

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