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.

推荐体验
推荐体验
中级
Basic Probability/Statistics; Multivariable Calculus; Proficiency w/complex numbers, matrices and some Linear Algebra; some programming experience
推荐体验
推荐体验
中级
Basic Probability/Statistics; Multivariable Calculus; Proficiency w/complex numbers, matrices and some Linear Algebra; some programming experience
您将获得的技能
要了解的详细信息

添加到您的领英档案
27 项作业
了解顶级公司的员工如何掌握热门技能

积累特定领域的专业知识
- 向行业专家学习新概念
- 获得对主题或工具的基础理解
- 通过实践项目培养工作相关技能
- 获得可共享的职业证书

该课程共有9个模块
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.
涵盖的内容
8个视频5篇阅读材料4个作业1个讨论话题
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
- Module 1 Summative Assessment• 120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
1个讨论话题• 总计10分钟
- Meet and Greet Discussion• 10分钟
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
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
- Module 2 Summative Assessment• 120分钟
- Weak and Strong Stationarity Quiz• 15分钟
- Introduction to Linear Processes Quiz• 15分钟
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.
涵盖的内容
10个视频4篇阅读材料3个作业
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
- Module 3 Summative Assessment• 120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
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.
涵盖的内容
10个视频3篇阅读材料3个作业
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
- Module 4 Summative Assessment• 120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
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.
涵盖的内容
9个视频4篇阅读材料4个作业
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
- Module 5 Summative Assessment• 120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
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.
涵盖的内容
7个视频3篇阅读材料3个作业
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
- Module 6 Summative Assessment• 120分钟
- Diagnostics Quiz• 15分钟
- Order Selection and the AICC Quiz• 15分钟
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.
涵盖的内容
9个视频3篇阅读材料3个作业
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
- Module 7 Summative Assessment• 120分钟
- ARIMA Models Quiz• 15分钟
- SARIMA Models Quiz• 15分钟
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.
涵盖的内容
9个视频3篇阅读材料3个作业
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
- Module 8 Summative Assessment• 120分钟
- Beyond One-Step-Ahead Prediction Quiz• 15分钟
- Exponential Smoothing Quiz• 15分钟
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.
涵盖的内容
1个作业
1个作业• 总计180分钟
- Course Summative Assessment• 180分钟
获得职业证书
将此证书添加到您的 LinkedIn 个人资料、简历或履历中。在社交媒体和绩效考核中分享。
攻读学位
课程 是 Illinois Tech提供的以下学位课程的一部分。如果您被录取并注册,您已完成的课程可计入您的学位学习,您的学习进度也可随之转移。
攻读学位
课程 是 Illinois Tech提供的以下学位课程的一部分。如果您被录取并注册,您已完成的课程可计入您的学位学习,您的学习进度也可随之转移。
Illinois Tech
Master of Data Science
学位 · 12-15 months
必须成功申请并注册。资格要求适用。各院校会根据您现有的学分情况,确定完成本课程后可计入学位要求的学分。单击特定课程了解更多信息。
位教师

提供方

提供方

Illinois Tech is a top-tier, nationally ranked, private research university with programs in engineering, computer science, architecture, design, science, business, human sciences, and law. The university offers bachelor of science, master of science, professional master’s, and Ph.D. degrees—as well as certificates for in-demand STEM fields and other areas of innovation. Talented students from around the world choose to study at Illinois Tech because of the access to real-world opportunities, renowned academic programs, high value, and career prospects of graduates.
人们为什么选择 Coursera 来帮助自己实现职业发展

Felipe M.

Jennifer J.

Larry W.

Chaitanya A.
从 Data Science 浏览更多内容
UUniversity of California, Santa Cruz
课程



