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学ぶ Comparing the Dynamics | K-Medoids Algorithm
Cluster Analysis in Python
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bookComparing the Dynamics

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That's an interesting result! The yearly average temperatures across clusters significantly differ for 3 of them (47.3, 60.9, and 79.24). It seems like a good split.

Now let's visualize the monthly dynamics of average temperatures across clusters, and compare the result with the 5 clusters by the K-Means algorithm. The respective line plot is below.

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Visualize the monthly temperature dynamics across clusters. Follow the next steps:

  1. Import KMedoids function from sklearn_extra.cluster.
  2. Create a KMedoids object named model with 4 clusters.
  3. Fit the 3-15 columns (these are not indices, but positions) of data to model.
  4. Add the 'prediction' column to data with predicted by model labels.
  5. Calculate the monthly averages using data and save the result within the d DataFrame:
  • Group the observations by the 'prediction' column.
  • Calculate the mean values.
  • Stack the columns into indices (already done).
  • Reset the indices.
  1. Assign ['Group', 'Month', 'Temp'] as columns names of d.
  2. Build lineplot with 'Month' on the x-axis, 'Temp' on the y-axis for each 'Group' of d DataFrame (i.e. separate line and color for each 'Group').

解答

Switch to desktop実践的な練習のためにデスクトップに切り替える下記のオプションのいずれかを利用して、現在の場所から続行する
すべて明確でしたか?

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フィードバックありがとうございます!

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