annotatingadding
Annotatingadding is a term used to describe an integrated workflow in which data annotation and the addition of new data items are carried out as part of a dataset's lifecycle. The term fuses annotating, the assignment of labels or metadata to data, with adding, the inclusion of new samples. It is not a standard label in formal literature but appears in project documentation and tooling discussions to emphasize simultaneous labeling and expansion of a corpus or collection.
In typical implementations, annotatingadding relies on annotation platforms, versioned data stores, and provenance tracking. Data items
Applications include natural language processing corpora, image and video datasets, and other supervised-learning collections. Benefits include
Key challenges involve maintaining annotation quality amid ongoing additions, ensuring cross-annotator consistency, resolving conflicts between new
Related concepts include data annotation, data curation, dataset versioning, and active learning.