Print Email Facebook Twitter Validation methodology for expert-annotated datasets Title Validation methodology for expert-annotated datasets: Event annotation case study Author Inel, O. (TU Delft Web Information Systems; Vrije Universiteit Amsterdam) Aroyo, Lora (Google LLC) Contributor de Melo, Gerard (editor) Klimek, Bettina (editor) Fath, Christian (editor) Buitelaar, Paul (editor) Dojchinovski, Milan (editor) Eskevich, Maria (editor) McCrae, John P. (editor) Chiarcos, Christian (editor) Date 2019-05-01 Abstract Event detection is still a difficult task due to the complexity and the ambiguity of such entities. On the one hand, we observe a low inter-annotator agreement among experts when annotating events, disregarding the multitude of existing annotation guidelines and their numerous revisions. On the other hand, event extraction systems have a lower measured performance in terms of F1-score compared to other types of entities such as people or locations. In this paper we study the consistency and completeness of expert-annotated datasets for events and time expressions. We propose a data-agnostic validation methodology of such datasets in terms of consistency and completeness. Furthermore, we combine the power of crowds and machines to correct and extend expert-annotated datasets of events. We show the benefit of using crowd-annotated events to train and evaluate a state-of-the-art event extraction system. Our results show that the crowd-annotated events increase the performance of the system by at least 5.3%. Subject CrowdsourcingEvent extractionHuman-in-the-loopTime extraction To reference this document use: http://resolver.tudelft.nl/uuid:4ede1172-ac7a-415d-bc66-d1ec8fe3bd19 DOI https://doi.org/10.4230/OASIcs.LDK.2019.12 Publisher Schloss Dagstuhl- Leibniz-Zentrum fur Informatik GmbH, Dagstuhl Publishing ISBN 9783959771054 Source 2nd Conference on Language, Data and Knowledge, LDK 2019, 70 Event 2nd Conference on Language, Data and Knowledge, LDK 2019, 2019-05-20 → 2019-05-23, Leipzig, Germany Part of collection Institutional Repository Document type conference paper Rights © 2019 O. Inel, Lora Aroyo Files PDF OASIcs_LDK_2019_12.pdf 753.41 KB Close viewer /islandora/object/uuid:4ede1172-ac7a-415d-bc66-d1ec8fe3bd19/datastream/OBJ/view