This course introduces basic time series analysis and forecasting methods. Topics include stationary processes, ARMA models, modeling and forecasting using ARMA models, nonstationary and seasonal time series models, state-space models, and forecasting techniques.
By the end of this course, students will be able to:
- Describe important time series models and their applications in various fields.
- Formulate real life problems using time series models.
- Use statistical software to estimate models from real data and draw conclusions and develop solutions from the estimated models.
- Use visual and numerical diagnostics to assess the soundness of their models.
- Communicate the statistical analyses of substantial data sets through explanatory text, tables, and graphs.
- Combine and adapt different statistical models to analyze larger and more complex data.
Welcome to Introduction to Time Series! In this module we'll define time series and time series models, and we'll develop some intuition for the fundamental concept of stationarity, and why it's useful.
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8个视频5篇阅读材料4个作业1个讨论话题
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8个视频•总计52分钟
Course Overview•1分钟
Instructor Introduction•1分钟
Module 1 Introduction•1分钟
What are Time Series, and How are They Used? •10分钟
Getting Started with R•11分钟
A Gentle Introduction to Stationarity - Part 1•7分钟
A Gentle Introduction to Stationarity - Part 2•8分钟
A Gentle Introduction to Stationarity - Part 3•13分钟
5篇阅读材料•总计200分钟
Syllabus•10分钟
What Are Time Series?•60分钟
Intro to R•60分钟
Stationarity•60分钟
Module 1 Summary•10分钟
4个作业•总计165分钟
What Are Time Series, and How Are They Used Quiz•15分钟
Getting Started with R Quiz•15分钟
A Gentle Introduction to Stationarity Quiz•15分钟
Module 1 Summative Assessment•120分钟
1个讨论话题•总计10分钟
Meet and Greet Discussion•10分钟
Module 2: Basic Analysis of Stationary Processes
第 2 单元•小时 后完成
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In this module, we'll discuss stationarity in more detail. We'll learn the technical definitions of weak and strong stationarity, and explain why the weaker version is more practical to use. We'll discuss the autocovariance and autocorrelation functions for stationary processes---concepts that will be with us for the rest of the course. And finally, we'll see some examples of ARMA processes, which we'll treat more deeply in the coming modules.
涵盖的内容
9个视频3篇阅读材料3个作业
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9个视频•总计92分钟
Module 2 Introduction•1分钟
Weak and Strong Stationarity - Part 1•6分钟
Weak and Strong Stationarity - Part 2•11分钟
Weak and Strong Stationarity - Part 3•14分钟
Weak and Strong Stationarity - Part 4•10分钟
Introduction to Linear Processes - Part 1•12分钟
Introduction to Linear Processes - Part 2•15分钟
Introduction to Linear Processes - Part 3•10分钟
Introduction to Linear Processes - Part 4•14分钟
3篇阅读材料•总计130分钟
Weak and Strong Stationarity•60分钟
Linear Processes•60分钟
Module 2 Summary•10分钟
3个作业•总计150分钟
Weak and Strong Stationarity Quiz•15分钟
Introduction to Linear Processes Quiz•15分钟
Module 2 Summative Assessment•120分钟
Module 3: ARMA processes and their Autocorrelation Functions
第 3 单元•小时 后完成
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In this module, we'll focus on ARMA processes, and what is arguably their most important feature, namely their autocorrelation structure. We'll see how to compute these "from scratch" (with a little help from R for the computations), and look at plots of the autocorrelation function (ACF) to get some intuition for how the ACF of an ARMA process behaves and what it can tell us.
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10个视频4篇阅读材料3个作业
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10个视频•总计60分钟
Module 3 Introduction•1分钟
Understanding ARMA (p, q) Processes - Part 1•6分钟
Understanding ARMA (p, q) Processes - Part 2•5分钟
Understanding ARMA (p, q) Processes - Part 3•5分钟
Understanding ARMA (p, q) Processes - Part 4•8分钟
Computing ACF's of AR (2) Processes Using Difference Equations - Part 1•8分钟
Computing ACF's of AR (2) Processes Using Difference Equations - Part 2•10分钟
Computing ACF's of AR (2) Processes Using Difference Equations - Part 3•7分钟
Computing ACF's of AR (2) Processes Using Difference Equations - Part 4•3分钟
Computing ACF's of AR (2) Processes Using Difference Equations - Part 5•6分钟
4篇阅读材料•总计140分钟
Understanding ARMA processes•60分钟
Computing ACF's Using Difference Equations•60分钟
Module 3 Summary•10分钟
Insights from an Industry Leader: Learn More About Our Program•10分钟
3个作业•总计150分钟
Understanding ARMA(p,q) Processes Quiz•15分钟
Computing ACF's of AR(2) Processes Using Difference Equations Quiz•15分钟
Module 3 Summative Assessment•120分钟
Module 4: More About the ACF; Best Linear Predictors, Autocorrelation, and Partial Autocorrelation
第 4 单元•小时 后完成
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In this module, we begin by discussing the ACF's of more complicated ARMA processes. Our main focus, though, is on one-step-ahead forecasts. We learn about the best linear predictor: both how it is defined and how to use it. Finally, we use what we have learned in order to define the Partial Autocorrelation Function (PACF), which is another fundamental tool in the study of stationary processes.
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10个视频3篇阅读材料3个作业
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10个视频•总计68分钟
Module 4 Introduction•1分钟
ACF's and Difference Equations - Part 1•10分钟
ACF's and Difference Equations - Part 2•6分钟
ACF's and Difference Equations - Part 3•5分钟
ACF's and Difference Equations - Part 3 (Cont.)•8分钟
Best Linear Predictors, Principles of Forecasting, and the Partial Autocorrelation Function - Part 1•9分钟
Best Linear Predictors, Principles of Forecasting, and the Partial Autocorrelation Function - Part 2•7分钟
Best Linear Predictors, Principles of Forecasting, and the Partial Autocorrelation Function - Part 2 (Cont.)•7分钟
Best Linear Predictors, Principles of Forecasting, and the Partial Autocorrelation Function - Part 3•9分钟
Best Linear Predictors, Principles of Forecasting, and the Partial Autocorrelation Function - Part 4•5分钟
3篇阅读材料•总计130分钟
ACF's and difference equations, continued•60分钟
Best Linear Predictor of a Stationary Process: Principles of Forecasting and the Partial Autocorrelation Function•60分钟
Module 4 Summary•10分钟
3个作业•总计150分钟
ACF’s and Difference Equations, continued Quiz•15分钟
Best Linear Predictors, Principles of Forecasting, and the Partial Autocorrelation Quiz•15分钟
Module 4 Summative Assessment•120分钟
Module 5: Fitting Data to ARMA models
第 5 单元•小时 后完成
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In this module, we learn about fitting a stationary time series model to data. The fitting process involves determining what values of the parameters to use. We discuss preliminary estimation and maximum likelihood estimation of these parameters.
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9个视频4篇阅读材料4个作业
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9个视频•总计52分钟
Module 5 Introduction•1分钟
The Sample ACF and Sample PACF - Part 1•10分钟
The Sample ACF and Sample PACF - Part 2•7分钟
Preliminary Estimation and the Yule-Walker Equations - Part 1•7分钟
Preliminary Estimation and the Yule-Walker Equations - Part 1 (Cont.)•6分钟
Maximum Likelihood Estimators for ARMA Processes - Part 1•6分钟
Maximum Likelihood Estimators for ARMA Processes - Part 2•4分钟
Maximum Likelihood Estimators for ARMA Processes - Part 3•6分钟
Maximum Likelihood Estimators for ARMA Processes - Part 4•5分钟
4篇阅读材料•总计190分钟
The sample ACF and sample PACF•60分钟
Preliminary estimation and the Yule-Walker equations•60分钟
Maximum likelihood estimators for ARMA processes•60分钟
Module 5 Summary•10分钟
4个作业•总计165分钟
The Sample ACF and Sample PACF Quiz•15分钟
Preliminary Estimation and the Yule-Walker equations Quiz•15分钟
Maximum likelihood estimation for ARMA processes Quiz•15分钟
Module 5 Summative Assessment•120分钟
Module 6: Diagnostics and Order Selection
第 6 单元•小时 后完成
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In this module, we discuss model diagnostics and order selection. Given an ARMA order, we've already seen how to best fit the parameters of the associated model. Given several different fitted models, the tools we develop in this module will allow us to make an intelligent choice about which one to use.
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7个视频3篇阅读材料3个作业
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7个视频•总计53分钟
Module 6 Introduction•1分钟
Model Diagnostics - Part 1•10分钟
Model Diagnostics - Part 2•10分钟
Model Diagnostics - Part 3•8分钟
Order Selection and the AICC - Part 1•8分钟
Order Selection and the AICC - Part 2•5分钟
Order Selection and the AICC - Part 3•11分钟
3篇阅读材料•总计130分钟
Diagnostics•60分钟
Order Selection•60分钟
Module 6 Summary•10分钟
3个作业•总计150分钟
Diagnostics Quiz•15分钟
Order Selection and the AICC Quiz•15分钟
Module 6 Summative Assessment•120分钟
Module 7: Nonstationary processes: ARIMA and SARIMA Models
第 7 单元•小时 后完成
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This module introduces students to ARIMA and SARIMA modeling techniques, essential for analyzing non-stationary and seasonal time series data. In the first lesson, students will learn to define ARIMA processes, use the Dickey-Fuller test to determine the need for differencing, and fit ARIMA models using R. The second lesson extends these skills to SARIMA models, focusing on identifying seasonality and fitting these models to capture seasonal patterns in data.
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9个视频3篇阅读材料3个作业
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9个视频•总计62分钟
Module 7 Introduction•1分钟
ARIMA Models - Part 1•7分钟
ARIMA Models - Part 1 (Cont.)•5分钟
ARIMA Models - Part 2•7分钟
ARIMA Models - Part 2 (Cont.)•6分钟
ARIMA Models - Part 3•10分钟
ARIMA Models - Part 4•9分钟
SARIMA Models - Part 1•9分钟
SARIMA Models - Part 2•9分钟
3篇阅读材料•总计130分钟
ARIMA Models•60分钟
SARIMA Models•60分钟
Module 7 Summary•10分钟
3个作业•总计150分钟
ARIMA Models Quiz•15分钟
SARIMA Models Quiz•15分钟
Module 7 Summative Assessment•120分钟
Module 8: More on Forecasting
第 8 单元•小时 后完成
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This module equips students with more sophisticated forecasting techniques beyond one-step-ahead predictions. We treat both (S)ARIMA models and exponential smoothing models and show how to handle forecasts in R. For the simplest of these models, we look inside the "black box" a little bit and demonstrate how these forecasts are generated.
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9个视频3篇阅读材料3个作业
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9个视频•总计60分钟
Module 8 Introduction•1分钟
Beyond One-Step-Ahead Prediction - Part 1•8分钟
Beyond One-Step-Ahead Prediction - Part 1 (Cont.)•6分钟
Beyond One-Step-Ahead Prediction - Part 2•9分钟
Beyond One-Step-Ahead Prediction - Part 3•9分钟
Beyond One-Step-Ahead Prediction - Part 3 (Cont.)•8分钟
Beyond One-Step-Ahead Prediction - Part 4•2分钟
Exponential Smoothing - Part 1•10分钟
Exponential Smoothing - Part 2•8分钟
3篇阅读材料•总计130分钟
Beyond One-Step Ahead Predictions•60分钟
Exponential Smoothing Models•60分钟
Module 8 Summary•10分钟
3个作业•总计150分钟
Beyond One-Step-Ahead Prediction Quiz•15分钟
Exponential Smoothing Quiz•15分钟
Module 8 Summative Assessment•120分钟
Summative Course Assessment
第 9 单元•小时 后完成
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This module contains the summative course assessment that has been designed to evaluate your understanding of the course material and assess your ability to apply the knowledge you have acquired throughout the course.
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