In a regression problem, what does the term 'overfitting' refer to?

Practice Questions

Q1
In a regression problem, what does the term 'overfitting' refer to?
  1. The model performs well on training data but poorly on unseen data
  2. The model is too simple to capture the underlying trend
  3. The model has too few features
  4. The model is perfectly accurate

Questions & Step-by-Step Solutions

In a regression problem, what does the term 'overfitting' refer to?
  • Step 1: Understand that a regression problem involves predicting a value based on input data.
  • Step 2: Know that a model is trained using a set of data called training data.
  • Step 3: Realize that overfitting happens when the model learns the training data too well.
  • Step 4: Recognize that this means the model captures not just the important patterns, but also the random noise in the data.
  • Step 5: Understand that because of this, the model performs poorly when it encounters new, unseen data.
No concepts available.
Soulshift Feedback ×

On a scale of 0–10, how likely are you to recommend The Soulshift Academy?

Not likely Very likely