Notice: This page requires JavaScript to function properly.
Please enable JavaScript in your browser settings or update your browser.
Lære Mean Yearly Temperatures Across Clusters | K-Medoids Algorithm
Cluster Analysis in Python
course content

Kursusindhold

Cluster Analysis in Python

Cluster Analysis in Python

1. K-Means Algorithm
2. K-Medoids Algorithm
3. Hierarchical Clustering
4. Spectral Clustering

book
Mean Yearly Temperatures Across Clusters

The last chart we got was even harder to interpret than two chapters ago. But if we are talking about 'peeks', the number 4 best fits it.

Let's compare the yearly average temperatures across 4 predicted clusters.

Opgave

Swipe to start coding

Calculate the yearly average temperatures across each cluster. The structure of data is shown below. Table

Follow the next steps:

  1. Create a KMedoids model with 4 clusters named model.
  2. Fit the 3-15 (these are positions, not indices) columns of data to model.
  3. Add the 'prediction' column to data with predicted by model labels.
  4. Group the data DataFrame by the prediction column, then apply the .mean() function twice: the first call will calculate the monthly means, the second one (with axis = 1) will calculate the yearly averages.

Løsning

Switch to desktopSkift til skrivebord for at øve i den virkelige verdenFortsæt der, hvor du er, med en af nedenstående muligheder
Var alt klart?

Hvordan kan vi forbedre det?

Tak for dine kommentarer!

Sektion 2. Kapitel 5
toggle bottom row

book
Mean Yearly Temperatures Across Clusters

The last chart we got was even harder to interpret than two chapters ago. But if we are talking about 'peeks', the number 4 best fits it.

Let's compare the yearly average temperatures across 4 predicted clusters.

Opgave

Swipe to start coding

Calculate the yearly average temperatures across each cluster. The structure of data is shown below. Table

Follow the next steps:

  1. Create a KMedoids model with 4 clusters named model.
  2. Fit the 3-15 (these are positions, not indices) columns of data to model.
  3. Add the 'prediction' column to data with predicted by model labels.
  4. Group the data DataFrame by the prediction column, then apply the .mean() function twice: the first call will calculate the monthly means, the second one (with axis = 1) will calculate the yearly averages.

Løsning

Switch to desktopSkift til skrivebord for at øve i den virkelige verdenFortsæt der, hvor du er, med en af nedenstående muligheder
Var alt klart?

Hvordan kan vi forbedre det?

Tak for dine kommentarer!

Sektion 2. Kapitel 5
Switch to desktopSkift til skrivebord for at øve i den virkelige verdenFortsæt der, hvor du er, med en af nedenstående muligheder
Vi beklager, at noget gik galt. Hvad skete der?
some-alt