Annalena Kohnert


2020

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Adapting Coreference Resolution to Twitter Conversations
Berfin Aktaş | Veronika Solopova | Annalena Kohnert | Manfred Stede
Findings of the Association for Computational Linguistics: EMNLP 2020

The performance of standard coreference resolution is known to drop significantly on Twitter texts. We improve the performance of the (Lee et al., 2018) system, which is originally trained on OntoNotes, by retraining on manually-annotated Twitter conversation data. Further experiments by combining different portions of OntoNotes with Twitter data show that selecting text genres for the training data can beat the mere maximization of training data amount. In addition, we inspect several phenomena such as the role of deictic pronouns in conversational data, and present additional results for variant settings. Our best configuration improves the performance of the”out of the box” system by 21.6%.

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TwiConv: A Coreference-annotated Corpus of Twitter Conversations
Berfin Aktaş | Annalena Kohnert
Proceedings of the Third Workshop on Computational Models of Reference, Anaphora and Coreference

This article introduces TwiConv, an English coreference-annotated corpus of microblog conversations from Twitter. We describe the corpus compilation process and the annotation scheme, and release the corpus publicly, along with this paper. We manually annotated nominal coreference in 1756 tweets arranged in 185 conversation threads. The annotation achieves satisfactory annotation agreement results. We also present a new method for mapping the tweet contents with distributed stand-off annotations, which can easily be adapted to different annotation tasks.