Underfitting Prevention Methods

Architecture

Underfitting prevention requires a model structure complex enough to capture the intrinsic nuances of volatile cryptocurrency price action. Traders mitigate this by increasing the depth of neural networks or utilizing ensemble methods that combine multiple weak learners to reduce bias. A sufficiently granular framework ensures that non-linear market dependencies and structural breaks are not erroneously discarded as noise during the learning phase.