Time Series Stationarity: KPSS and Phillips-Perron Tests in Python
Learn how to detect and handle non-stationary time series data using KPSS and Phillips-Perron tests in Python to build reliable forecasting models.
About this course
Raw time series data often exhibits trends and seasonality that can skew your forecasting models and lead to spurious statistical results. To build reliable predictive models, you must first master the mathematical foundations and practical application of stationarity testing. This text-only course guides you through the essential concepts of stationarity, focusing on two critical statistical methods: the KPSS and Phillips-Perron tests.
By completing this program, you will understand how to formulate hypotheses, interpret test statistics, and confidently apply these tests to prepare your datasets for downstream machine learning and econometric forecasting models.
What you'll learn:
- Understand the fundamental concept of stationarity and why it is crucial for time series analysis.
- Formulate and interpret the null and alternative hypotheses for both the KPSS and Phillips-Perron tests.
- Compare the strengths and limitations of KPSS and Phillips-Perron tests against traditional unit root tests.
- Implement statistical tests in Python using modern libraries like pandas and statsmodels.
- Analyze test outputs, including test statistics, critical values, and p-values, to make confident data decisions.
- Apply differencing and transformation techniques to convert non-stationary data into stationary series.
The course begins with core definitions and the theoretical foundations of stationarity before moving on to clear, step-by-step code demonstrations and written exercises. You will walk through real-world scenarios, learning how to combine multiple tests to resolve conflicting statistical results.
This course is designed for beginner data analysts, aspiring data scientists, and programmers who want to strengthen their time series analysis skills. A basic familiarity with Python is helpful, but no prior background in advanced econometrics is required.
Start reading today to master the essential testing techniques for robust time series forecasting.
What you'll get
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Certificate of completion
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Personal AI tutor
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Audio version included
Learn on the go โ no screen needed -
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Lifetime access
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Phone or computer
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30-day refund
No questions asked -
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Short & focused
43 min of practical content
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Frequently asked
What do I need to take this course? +
Just a phone or computer with internet. No installs, no special hardware.
How do I pay? +
By card via Stripe, or with cryptocurrency. We do not store card details โ Stripe handles them securely.
Can I get a refund? +
Yes โ full refund within 30 days, no questions asked.
How long will I have access? +
Forever. Once you purchase, the course is yours to revisit anytime.
Will I get a certificate? +
Yes. On completion you'll receive a certificate you can add to your LinkedIn profile.
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