How do ensemble methods enhance machine learning predictions?
Ensemble methods in machine learning leverage the collective power of multiple models to improve prediction accuracy. Imagine a team of experts from different fields making a decision; each brings unique insights, leading to a more informed outcome. Similarly, ensemble methods combine the strengths of various algorithms, reducing the likelihood of an erroneous prediction that could arise from a single model's bias or variance.