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HomeKnowledge BaseChoosing the right estimator
Knowledge Base Supervised Learning

Choosing the right estimator

March 10, 2024March 10, 2024CEO 399 views

Often the hardest part of solving a machine learning problem can be finding the right estimator for the job.

Different estimators are better suited for different types of data and different problems.

The flowchart below is designed to give users a bit of a rough guide on how to approach problems with regard to which estimators to try on your data.

Click on any estimator in the chart below to see its documentation.

estimator, scikit, sklearn

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