Märgistamisvigu
Märgistamisvigu refers to errors that can occur during the process of labeling data, particularly in machine learning and artificial intelligence contexts. These errors can arise from various sources, including human mistakes by annotators, inconsistencies in labeling guidelines, ambiguity in the data itself, or issues with the annotation tools used. When data is mislabeled, it can negatively impact the performance of machine learning models that are trained on this data. For example, if images of cats are incorrectly labeled as dogs, a model trained on this dataset might learn to identify dogs as cats.
The consequences of märgistamisvigu can range from reduced model accuracy to biased outputs, depending on the