In a multi-class classification problem, which metric can be used to evaluate th

Practice Questions

Q1
In a multi-class classification problem, which metric can be used to evaluate the performance across all classes?
  1. Micro F1 Score
  2. Mean Absolute Error
  3. Precision
  4. Recall

Questions & Step-by-Step Solutions

In a multi-class classification problem, which metric can be used to evaluate the performance across all classes?
  • Step 1: Understand that in a multi-class classification problem, there are multiple classes to predict.
  • Step 2: Know that we need a way to measure how well the model is performing across all these classes.
  • Step 3: Learn about different metrics that can be used for evaluation, such as accuracy, precision, recall, and F1 score.
  • Step 4: Focus on the F1 score, which combines precision and recall into one number.
  • Step 5: Understand that the Micro F1 Score is a specific way to calculate the F1 score for multiple classes.
  • Step 6: Realize that the Micro F1 Score takes into account the total true positives, false positives, and false negatives across all classes.
  • Step 7: Conclude that using the Micro F1 Score is a good choice for evaluating performance in multi-class classification problems.
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