Susan Holm


2025

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ProMQA: Question Answering Dataset for Multimodal Procedural Activity Understanding
Kimihiro Hasegawa | Wiradee Imrattanatrai | Zhi-Qi Cheng | Masaki Asada | Susan Holm | Yuran Wang | Ken Fukuda | Teruko Mitamura
Proceedings of the 2025 Conference of the Nations of the Americas Chapter of the Association for Computational Linguistics: Human Language Technologies (Volume 1: Long Papers)

Multimodal systems have great potential to assist humans in procedural activities, where people follow instructions to achieve their goals. Despite diverse application scenarios, systems are typically evaluated on traditional classification tasks, e.g., action recognition or temporal action localization. In this paper, we present a novel evaluation dataset, ProMQA, to measure the advancement of systems in application-oriented scenarios. ProMQA consists of 401 multimodal procedural QA pairs on user recording of procedural activities, i.e., cooking, coupled with their corresponding instruction. For QA annotation, we take a cost-effective human-LLM collaborative approach, where the existing annotation is augmented with LLM-generated QA pairs that are later verified by humans. We then provide the benchmark results to set the baseline performance on ProMQA. Our experiment reveals a significant gap between human performance and that of current systems, including competitive proprietary multimodal models. We hope our dataset sheds light on new aspects of models’ multimodal understanding capabilities.

2016

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Generating Questions and Multiple-Choice Answers using Semantic Analysis of Texts
Jun Araki | Dheeraj Rajagopal | Sreecharan Sankaranarayanan | Susan Holm | Yukari Yamakawa | Teruko Mitamura
Proceedings of COLING 2016, the 26th International Conference on Computational Linguistics: Technical Papers

We present a novel approach to automated question generation that improves upon prior work both from a technology perspective and from an assessment perspective. Our system is aimed at engaging language learners by generating multiple-choice questions which utilize specific inference steps over multiple sentences, namely coreference resolution and paraphrase detection. The system also generates correct answers and semantically-motivated phrase-level distractors as answer choices. Evaluation by human annotators indicates that our approach requires a larger number of inference steps, which necessitate deeper semantic understanding of texts than a traditional single-sentence approach.

2015

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Event Nugget Annotation: Processes and Issues
Teruko Mitamura | Yukari Yamakawa | Susan Holm | Zhiyi Song | Ann Bies | Seth Kulick | Stephanie Strassel
Proceedings of the 3rd Workshop on EVENTS: Definition, Detection, Coreference, and Representation

2014

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TBI-Doc: Generating Patient & Clinician Reports from Brain Imaging Data
Pamela Jordan | Nancy Green | Chistopher Thomas | Susan Holm
Proceedings of the 8th International Natural Language Generation Conference (INLG)