Rob Chew
2025
Aligning NLP Models with Target Population Perspectives using PAIR: Population-Aligned Instance Replication
Stephanie Eckman
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Bolei Ma
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Christoph Kern
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Rob Chew
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Barbara Plank
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Frauke Kreuter
Proceedings of the The 4th Workshop on Perspectivist Approaches to NLP
Models trained on crowdsourced annotations may not reflect population views, if those who work as annotators do not represent the broader population. In this paper, we propose PAIR: Population-Aligned Instance Replication, a post-processing method that adjusts training data to better reflect target population characteristics without collecting additional annotations. Using simulation studies on offensive language and hate speech detection with varying annotator compositions, we show that non-representative pools degrade model calibration while leaving accuracy largely unchanged. PAIR corrects these calibration problems by replicating annotations from underrepresented annotator groups to match population proportions. We conclude with recommendations for improving the representativity of training data and model performance.
2024
Order Effects in Annotation Tasks: Further Evidence of Annotation Sensitivity
Jacob Beck
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Stephanie Eckman
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Bolei Ma
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Rob Chew
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Frauke Kreuter
Proceedings of the 1st Workshop on Uncertainty-Aware NLP (UncertaiNLP 2024)
The data-centric revolution in AI has revealed the importance of high-quality training data for developing successful AI models. However, annotations are sensitive to annotator characteristics, training materials, and to the design and wording of the data collection instrument. This paper explores the impact of observation order on annotations. We find that annotators’ judgments change based on the order in which they see observations. We use ideas from social psychology to motivate hypotheses about why this order effect occurs. We believe that insights from social science can help AI researchers improve data and model quality.
2023
Annotation Sensitivity: Training Data Collection Methods Affect Model Performance
Christoph Kern
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Stephanie Eckman
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Jacob Beck
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Rob Chew
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Bolei Ma
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Frauke Kreuter
Findings of the Association for Computational Linguistics: EMNLP 2023
When training data are collected from human annotators, the design of the annotation instrument, the instructions given to annotators, the characteristics of the annotators, and their interactions can impact training data. This study demonstrates that design choices made when creating an annotation instrument also impact the models trained on the resulting annotations. We introduce the term annotation sensitivity to refer to the impact of annotation data collection methods on the annotations themselves and on downstream model performance and predictions. We collect annotations of hate speech and offensive language in five experimental conditions of an annotation instrument, randomly assigning annotators to conditions. We then fine-tune BERT models on each of the five resulting datasets and evaluate model performance on a holdout portion of each condition. We find considerable differences between the conditions for 1) the share of hate speech/offensive language annotations, 2) model performance, 3) model predictions, and 4) model learning curves. Our results emphasize the crucial role played by the annotation instrument which has received little attention in the machine learning literature. We call for additional research into how and why the instrument impacts the annotations to inform the development of best practices in instrument design.
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- Stephanie Eckman 3
- Frauke Kreuter 3
- Bolei Ma 3
- Jacob Beck 2
- Christoph Kern 2
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