Back to Specialized Models: Time Series and Survival Analysis
IBM

Specialized Models: Time Series and Survival Analysis

This course introduces you to additional topics in Machine Learning that complement essential tasks, including forecasting and analyzing censored data. You will learn how to find analyze data with a time component and censored data that needs outcome inference. You will learn a few techniques for Time Series Analysis and Survival Analysis. The hands-on section of this course focuses on using best practices and verifying assumptions derived from Statistical Learning. By the end of this course you should be able to: Identify common modeling challenges with time series data Explain how to decompose Time Series data: trend, seasonality, and residuals Explain how autoregressive, moving average, and ARIMA models work Understand how to select and implement various Time Series models Describe hazard and survival modeling approaches Identify types of problems suitable for survival analysis Who should take this course? This course targets aspiring data scientists interested in acquiring hands-on experience with Time Series Analysis and Survival Analysis.   What skills should you have? To make the most out of this course, you should have familiarity with programming on a Python development environment, as well as fundamental understanding of Data Cleaning, Exploratory Data Analysis, Calculus, Linear Algebra, Supervised Machine Learning, Unsupervised Machine Learning, Probability, and Statistics.

Status: Forecasting
Status: Predictive Modeling
IntermediateCourse12 hours

Featured reviews

SD

5.0Reviewed Nov 23, 2021

This is an excellent course covering large areas of Time Series analysis and is a must for any one intending to learn the topics with some detail.

PC

5.0Reviewed Sep 23, 2021

this is one the great course i learned. both theoritical and practical went parrallely that made the course much more reliable.

KP

5.0Reviewed Apr 7, 2022

excellent and well explained course, especially for SARIMAX models.

MH

4.0Reviewed Feb 25, 2021

Not much details but good as an overview on the topic

MG

5.0Reviewed Dec 16, 2021

I liked this course. It gives all the necessary information about classical machine learning algorithms as well as deep learning techniques

MB

5.0Reviewed May 6, 2021

A very well-structured course with useful techniques and detail guidelines. The Python code templates are also really useful when bringing into real-life problems.

SS

4.0Reviewed Aug 15, 2025

A little outdated, but fundamentally sound nonetheless.

JM

5.0Reviewed Jul 23, 2021

Great course, very well taught and topics are useful for future applications

YC

5.0Reviewed Apr 30, 2022

Excellenct course.I could experience so many methodologies.So tough to finish each project.I really thank IBM and Coursera for this great course with just so small tuition fee.

GS

5.0Reviewed May 15, 2021

It is a good course to build foundation on the modeling of timerseries data. It will be good to add other lessons for anomaly detection on timeseries.

RT

4.0Reviewed Apr 7, 2021

Good course with some useful tips, the Survival part of the course was particularly interesting.

All reviews

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Ashish Pandey
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Reviewed Apr 9, 2021
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Reviewed Oct 10, 2020
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