Why is it important to address the issue of out-of-sample testing when working with sequential data in deep learning?
Sunday, 13 August 2023
by EITCA Academy
When working with sequential data in deep learning, addressing the issue of out-of-sample testing is of utmost importance. Out-of-sample testing refers to evaluating the performance of a model on data that it has not seen during training. This is important for assessing the generalization ability of the model and ensuring its reliability in real-world scenarios.

