Annotating text for subjective tasks, such as labeling ableist and anti-autistic texts, is a challenge that has attracted significant attention as commonly adopted annotation paradigms, e.g., using majority voting, fall short in capturing the nuances of hate speech or bias annotations. Labeling ableist and anti-autistic texts presents similar challenges in addition to the need for familiarity with autism and anti-autistic discrimination. In this paper, we adopt a collaborative and annotator-centric approach to study the impact of various annotation techniques. We recruit 6 participants to annotate sets of sentences from our 11,596 sentence corpus. The groups annotate through schemes focused on score-based classification, algorithmic labeling, and comparison-based labeling to identify instances of anti-autistic ableist speech. As a result of changes in annotation schemes, our annotator groups shift from a worse-than-chance agreement to moderate agreement. This suggests that implementing annotator group discussion and collecting annotator feedback is likely to result in improved agreement scores in difficult and highly subjective tasks. Our results highlight the importance of a collaborative approach in highly subjective classification tasks as it may lead to an improved understanding of their own biases, and large improvements in agreement scores, particularly among annotators with higher rates of disagreement. Warning: This paper contains examples that may be offensive or upsetting, including explicit slurs used against people with disabilities.
Rizvi et al. (Thu,) studied this question.
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