Annotation Error Detection: Analyzing the Past and Present for a More Coherent Future

This is the accompanying data for our paper "Annotation Error Detection: Analyzing the Past and Present for a More Coherent Future".

Annotated data is an essential ingredient in natural language processing for training and evaluating machine learning models. It is therefore very desirable for the annotations to be of high quality. Recent work, however, has shown that several popular datasets contain a surprising number of annotation errors or inconsistencies. To alleviate this issue, many methods for annotation error detection have been devised over the years. While researchers show that their approaches work well on their newly introduced datasets, they rarely compare their methods to previous work or on the same datasets. This raises strong concerns on methods’ general performance and makes it difficult to assess their strengths and weaknesses. We therefore reimplement 18 methods for detecting potential annotation errors and evaluate them on 9 English datasets for text classification as well as token and span labeling. In addition, we define a uniform evaluation setup including a new formalization of the annotation error detection task, evaluation protocol, and general best practices. To facilitate future research and reproducibility, we release our datasets and implementations in an easy-to-use and open source software package.

Identifier
Source https://tudatalib.ulb.tu-darmstadt.de/handle/tudatalib/3943
Related Identifier https://doi.org/10.1162/coli_a_00464
Metadata Access https://tudatalib.ulb.tu-darmstadt.de/oai/openairedata?verb=GetRecord&metadataPrefix=oai_datacite&identifier=oai:tudatalib.ulb.tu-darmstadt.de:tudatalib/3943
Provenance
Creator Klie, Jan-Christoph; Webber, Bonnie; Gurevych, Iryna
Publisher TU Darmstadt
Contributor TU Darmstadt
Publication Year 2023
Rights Creative Commons Attribution-NonCommercial 4.0; info:eu-repo/semantics/openAccess
OpenAccess true
Contact https://tudatalib.ulb.tu-darmstadt.de/page/contact
Representation
Resource Type Dataset
Format application/zip
Discipline Other