Ifeoma Nwogu
2026
A Scalable Tool for Measuring Manner and Result Verbs in Developmental Language Research
Divyesh Pratap Singh | Dakshesh Gusain | Federica Bulgarelli | Alison Eisel Hendricks | John Beavers | Nathan M. Beers | Ifeoma Nwogu
Proceedings of the 1st Workshop on Computational Developmental Linguistics (CDL)
Divyesh Pratap Singh | Dakshesh Gusain | Federica Bulgarelli | Alison Eisel Hendricks | John Beavers | Nathan M. Beers | Ifeoma Nwogu
Proceedings of the 1st Workshop on Computational Developmental Linguistics (CDL)
Manner and result verbs encode different aspects of event structure and have been discussed in developmental work as a potentially informative distinction for studying early verb learning. However, this distinction remains difficult to measure at scale because large annotated resources for manner and result classification are not currently available. We present a computational approach for identifying manner and result verbs in sentence context. Using linguistically informed prompts, we generate sentence-level annotations with large language models over data drawn from MASC and InterCorp, extending coverage from previously annotated portions of VerbNet to 436 classes. We then train a RoBERTa-based classifier on these annotations and evaluate it on three held-out gold-standard datasets, including previously annotated items and a new expert-annotated set. Across these evaluations, the model shows promising performance, with average accuracy up to 89.6%. We present this work as a scalable measurement tool that can support future research on verb semantics in developmental and other language datasets, while noting that further validation is needed for borderline cases, mixed manner/result verbs, and downstream developmental applications.
2024
Word-Conditioned 3D American Sign Language Motion Generation
Lu Dong | Xiao Wang | Ifeoma Nwogu
Findings of the Association for Computational Linguistics: EMNLP 2024
Lu Dong | Xiao Wang | Ifeoma Nwogu
Findings of the Association for Computational Linguistics: EMNLP 2024
Sign words are the building blocks of any sign language. In this work, we present wSignGen, a word-conditioned 3D American Sign Language (ASL) generation model dedicated to synthesizing realistic and grammatically accurate motion sequences for sign words. Our approach leverages a transformer-based diffusion model, trained on a curated dataset of 3D motion meshes from word-level ASL videos. By integrating CLIP, wSignGen offers two advantages: image-based generation, which is particularly useful for children learning sign language but not yet able to read, and the ability to generalize to unseen synonyms. Experiments demonstrate that wSignGen significantly outperforms the baseline model in the task of sign word generation. Moreover, human evaluation experiments show that wSignGen can generate high-quality, grammatically correct ASL signs effectively conveyed through 3D avatars.