Jump to content

Training loss: Difference between revisions

no edit summary
(Created page with "{{see also|Machine learning terms}} ==Introduction== Training loss is an important metric in machine learning that measures the discrepancy between predicted output and actual output. It helps evaluate a model's performance during training, with the aim being to minimize this loss so that it can generalize well on unseen data. ==Types of Loss Functions== Machine learning employs a variety of loss functions, depending on the problem being solved and the model being emplo...")
 
No edit summary
Line 1: Line 1:
{{see also|Machine learning terms}}
{{see also|Machine learning terms}}
==Introduction==
==Introduction==
Training loss is an important metric in machine learning that measures the discrepancy between predicted output and actual output. It helps evaluate a model's performance during training, with the aim being to minimize this loss so that it can generalize well on unseen data.
[[Training loss]] is an important [[metric]] in [[machine learning]] that measures the discrepancy between [[predicted]] [[output]] and actual output ([[label]]). It is the [[model]]'s [[loss]] during a specific [[training]] [[iteration]]. Training loss helps to evaluate a model's [[performance]] during training, with the aim being to minimize this loss so that it can generalize well on unseen data.


==Types of Loss Functions==
==Types of Loss Functions==