The process of fine-tuning a Machine Learning model by changing its settings or _________ is vital for achieving optimal performance.
- Algorithms
- Features
- Hyperparameters
- Targets
Hyperparameters are the settings or parameters of a machine learning model that are defined prior to training and are fine-tuned to optimize performance.
Loading...
Related Quiz
- Which type of learning is typically employed when there's neither complete supervision nor complete absence of supervision, but a mix where an agent learns to act in an environment?
- What is the potential consequence of deploying a non-interpretable machine learning model in a critical sector, such as medical diagnosis?
- What is the primary purpose of using ensemble methods in machine learning?
- You've trained a model with a small training set and a large testing set. What challenges might you encounter, and how could they be addressed?
- What is the main purpose of regularization techniques like dropout and L2 regularization in deep learning models?