Notice: This page requires JavaScript to function properly.
Please enable JavaScript in your browser settings or update your browser.
Oppiskele Challenge: Visualizing Time Series Components | Foundations of Time Series Analysis
Time Series Forecasting with ARIMA

bookChallenge: Visualizing Time Series Components

Tehtävä

Swipe to start coding

Your goal is to decompose a time series into its componentstrend, seasonality, and residuals — using the seasonal_decompose() function from statsmodels.

  1. Load the built-in "flights" dataset from seaborn.
  2. Extract the "passengers" column as your target time series.
  3. Apply seasonal_decompose() with an additive model and a period of 12 (months).
  4. Store the result in a variable called decomposition.
  5. Plot the original series, trend, seasonal, and residual components.

seasonal_decompose(series, model="additive", period=12) automatically splits the time series into four parts:

  • trend → long-term movement;
  • seasonal → repeating patterns;
  • resid → random noise;
  • observed → original data.

Each component can be accessed with attributes like .trend, .seasonal, .resid.

Ratkaisu

Oliko kaikki selvää?

Miten voimme parantaa sitä?

Kiitos palautteestasi!

Osio 1. Luku 4
single

single

Kysy tekoälyä

expand

Kysy tekoälyä

ChatGPT

Kysy mitä tahansa tai kokeile jotakin ehdotetuista kysymyksistä aloittaaksesi keskustelumme

close

Awesome!

Completion rate improved to 6.67

bookChallenge: Visualizing Time Series Components

Pyyhkäise näyttääksesi valikon

Tehtävä

Swipe to start coding

Your goal is to decompose a time series into its componentstrend, seasonality, and residuals — using the seasonal_decompose() function from statsmodels.

  1. Load the built-in "flights" dataset from seaborn.
  2. Extract the "passengers" column as your target time series.
  3. Apply seasonal_decompose() with an additive model and a period of 12 (months).
  4. Store the result in a variable called decomposition.
  5. Plot the original series, trend, seasonal, and residual components.

seasonal_decompose(series, model="additive", period=12) automatically splits the time series into four parts:

  • trend → long-term movement;
  • seasonal → repeating patterns;
  • resid → random noise;
  • observed → original data.

Each component can be accessed with attributes like .trend, .seasonal, .resid.

Ratkaisu

Switch to desktopVaihda työpöytään todellista harjoitusta vartenJatka siitä, missä olet käyttämällä jotakin alla olevista vaihtoehdoista
Oliko kaikki selvää?

Miten voimme parantaa sitä?

Kiitos palautteestasi!

Osio 1. Luku 4
single

single

some-alt