When models are too simple and cannot capture the underlying trend of the data, it's termed as ________.
- Misfitting
- Overfitting
- Simplification
- Underfitting
When a model is too simple to capture the underlying patterns in the data, it is referred to as "underfitting." Underfit models have high bias and low variance, making them ineffective for predictions.
Loading...
Related Quiz
- In the Actor-Critic model, what role does the Critic's feedback play in adjusting the Actor's policies?
- What does the "G" in GRU stand for when referring to a type of RNN?
- Hierarchical clustering can be broadly classified into two types based on how the hierarchy is constructed. What are these two types?
- For binary classification tasks, which regression outputs a probability score between 0 and 1?
- In the context of machine learning, what is the main difference between supervised and unsupervised learning in terms of data?