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Lära Challenge 4: Cross-validation | Scikit-learn
Data Science Interview Challenge
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Kursinnehåll

Data Science Interview Challenge

Data Science Interview Challenge

1. Python
2. NumPy
3. Pandas
4. Matplotlib
5. Seaborn
6. Statistics
7. Scikit-learn

book
Challenge 4: Cross-validation

Cross-validation is a pivotal technique in machine learning that aims to assess the generalization performance of a model on unseen data. Given the inherent risk of overfitting a model to a particular dataset cross-validation offers a solution. By partitioning the original dataset into multiple subsets, the model is trained on some of these subsets and tested on the others.

By rotating the testing fold and averaging the results across all iterations, we gain a more robust estimate of the model's performance. This iterative process not only provides insights into the model's potential variability and bias but also aids in mitigating overfitting, ensuring that the model has a balanced performance across different subsets of the data.

Uppgift

Swipe to start coding

Implement a pipeline that combines data preprocessing and model training. After establishing the pipeline, utilize cross-validation to assess the performance of a classifier on the Wine dataset.

  1. Create a pipeline that includes standard scaling and decision tree classifier.
  2. Apply 5-fold cross-validation on the pipeline.
  3. Calculate the average accuracy across all folds.

Lösning

Switch to desktopByt till skrivbordet för praktisk övningFortsätt där du är med ett av alternativen nedan
Var allt tydligt?

Hur kan vi förbättra det?

Tack för dina kommentarer!

Avsnitt 7. Kapitel 4
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book
Challenge 4: Cross-validation

Cross-validation is a pivotal technique in machine learning that aims to assess the generalization performance of a model on unseen data. Given the inherent risk of overfitting a model to a particular dataset cross-validation offers a solution. By partitioning the original dataset into multiple subsets, the model is trained on some of these subsets and tested on the others.

By rotating the testing fold and averaging the results across all iterations, we gain a more robust estimate of the model's performance. This iterative process not only provides insights into the model's potential variability and bias but also aids in mitigating overfitting, ensuring that the model has a balanced performance across different subsets of the data.

Uppgift

Swipe to start coding

Implement a pipeline that combines data preprocessing and model training. After establishing the pipeline, utilize cross-validation to assess the performance of a classifier on the Wine dataset.

  1. Create a pipeline that includes standard scaling and decision tree classifier.
  2. Apply 5-fold cross-validation on the pipeline.
  3. Calculate the average accuracy across all folds.

Lösning

Switch to desktopByt till skrivbordet för praktisk övningFortsätt där du är med ett av alternativen nedan
Var allt tydligt?

Hur kan vi förbättra det?

Tack för dina kommentarer!

Avsnitt 7. Kapitel 4
Switch to desktopByt till skrivbordet för praktisk övningFortsätt där du är med ett av alternativen nedan
Vi beklagar att något gick fel. Vad hände?
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