coannotation
Coannotation refers to the process where multiple annotators independently label the same data. This is a common practice in various fields, particularly in natural language processing and machine learning, to improve the quality and reliability of annotations. By having several individuals annotate a piece of data, discrepancies or biases introduced by a single annotator can be identified and resolved.
The primary goal of coannotation is to achieve a higher level of consensus and accuracy. Disagreements between
Coannotation is crucial for tasks such as named entity recognition, sentiment analysis, and text classification, where