Custom Named Entity Recognition (Part 3)
Label Your Data Properly labeling or tagging your data is a crucial step in developing a custom entity extraction model. Labels serve to indicate instances of particular entities within the text that are used for training the model. Three things to focus on are: Consistency - Label your data the same way across all files for training. Consistency allows your model to learn without any conflicting inputs. Precision - Label your entities consistently, without unnecessary extra words. Precision ensures only the correct data is included in your extracted entity. Completeness - Label your data completely, and don't miss any entities. Completeness helps your model always recognize the entities present. How To Label Your Data ? Language Studio offers a straightforward approach for annotating your data. It enables you to view the file, mark the start and end of your entities, and specify their type. Each label you identify is saved in a file located in your storage account alongs...