Publisher DOI: | 10.18653/v1/2020.coling-main.484 | Title: | Word-Level Uncertainty Estimation for Black-Box Text Classifiers using RNNs | Language: | English | Authors: | Andersen, Jakob Smedegaard Schöner, Tom Maalej, Walid |
Editor: | Scott, Donia Bel, Nuria Zong, Chengqing |
Other : | Association for Computational Linguistics | Issue Date: | 2020 | Publisher: | International Committee on Computational Linguistics ; Association for Computational Linguistics | Part of Series: | The 28th International Conference on Computational Linguistics - proceedings of the conference : December 8-13, 2020, Barcelona, Spain (Online) : COLING 2020 | Startpage: | 5541 | Endpage: | 5546 | Conference: | International Conference on Computational Linguistics 2020 | Abstract: | Estimating uncertainties of Neural Network predictions paves the way towards more reliable and trustful text classifications. However, common uncertainty estimation approaches remain as black-boxes without explaining which features have led to the uncertainty of a prediction. This hinders users from understanding the cause of unreliable model behaviour. We introduce an approach to decompose and visualize the uncertainty of text classifiers at the level of words. Our approach builds on top of Recurrent Neural Networks and Bayesian modelling in order to provide detailed explanations of uncertainties, enabling a deeper reasoning about unreliable model behaviours. We conduct a preliminary experiment to check the impact and correctness of our approach. By explaining and investigating the predictive uncertainties of a sentiment analysis task, we argue that our approach is able to provide a more profound understanding of artificial decision making. |
URI: | http://hdl.handle.net/20.500.12738/12796 | ISBN: | 978-1-952148-27-9 | Institute: | Forschungsgruppe Big Data Lab Department Informatik Fakultät Technik und Informatik |
Type: | Chapter/Article (Proceedings) |
Appears in Collections: | Publications without full text |
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