Karla Badillo-Urquiola

Also published as: Karla Badillo-urquiola


2023

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Dragonfly_captain at SemEval-2023 Task 11: Unpacking Disagreement with Investigation of Annotator Demographics and Task Difficulty
Ruyuan Wan | Karla Badillo-Urquiola
Proceedings of the 17th International Workshop on Semantic Evaluation (SemEval-2023)

This study investigates learning with disagreement in NLP tasks and evaluates its performance on four datasets. The results suggest that the model performs best on the experimental dataset and faces challenges in minority languages. Furthermore, the analysis indicates that annotator demographics play a significant role in the interpretation of such tasks. This study suggests the need for greater consideration of demographic differences in annotators and more comprehensive evaluation metrics for NLP models.

2022

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User or Labor: An Interaction Framework for Human-Machine Relationships in NLP
Ruyuan Wan | Naome Etori | Karla Badillo-urquiola | Dongyeop Kang
Proceedings of the Fourth Workshop on Data Science with Human-in-the-Loop (Language Advances)

The bridging research between Human-Computer Interaction and Natural Language Processing is developing quickly these years. However, there is still a lack of formative guidelines to understand the human-machine interaction in the NLP loop. When researchers crossing the two fields talk about humans, they may imply a user or labor. Regarding a human as a user, the human is in control, and the machine is used as a tool to achieve the human’s goals. Considering a human as a laborer, the machine is in control, and the human is used as a resource to achieve the machine’s goals. Through a systematic literature review and thematic analysis, we present an interaction framework for understanding human-machine relationships in NLP. In the framework, we propose four types of human-machine interactions: Human-Teacher and Machine-Learner, Machine-Leading, Human-Leading, and Human-Machine Collaborators. Our analysis shows that the type of interaction is not fixed but can change across tasks as the relationship between the human and the machine develops. We also discuss the implications of this framework for the future of NLP and human-machine relationships.