Affiliation:
1. University of Southern California, USA. mostafaz@usc.edu
2. Google Research, USA. markdiaz@google.com
3. Google Research, USA. vinodkpg@google.com
Abstract
AbstractMajority voting and averaging are common approaches used to resolve annotator disagreements and derive single ground truth labels from multiple annotations. However, annotators may systematically disagree with one another, often reflecting their individual biases and values, especially in the case of subjective tasks such as detecting affect, aggression, and hate speech. Annotator disagreements may capture important nuances in such tasks that are often ignored while aggregating annotations to a single ground truth. In order to address this, we investigate the efficacy of multi-annotator models. In particular, our multi-task based approach treats predicting each annotators’ judgements as separate subtasks, while sharing a common learned representation of the task. We show that this approach yields same or better performance than aggregating labels in the data prior to training across seven different binary classification tasks. Our approach also provides a way to estimate uncertainty in predictions, which we demonstrate better correlate with annotation disagreements than traditional methods. Being able to model uncertainty is especially useful in deployment scenarios where knowing when not to make a prediction is important.
Subject
Artificial Intelligence,Computer Science Applications,Linguistics and Language,Human-Computer Interaction,Communication
Reference91 articles.
1. Subjective natural language problems: Motivations, applications, characterizations, and implications;Alm,2011
2. Ebba Cecilia Ovesdotter Alm . 2008. Affect in* Text and Speech. Ph.D. thesis, University of Illinois at Urbana-Champaign.
3. Predicting word sense annotation agreement;Alonso,2015
4. Identifying expressions of emotion in text;Aman,2007
5. Soft-target training with ambiguous emotional utterances for dnn-based speech emotion classification;Ando,2018
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