Call for Participation

Introduction

Due to the fast growth of the number of scientific publications, keeping abreast of new findings and recognizing unsolved challenges are becoming more difficult for researchers in various fields. This problem could be more severe when there is a high demand for a specific topic such as the recent COVID-19 global pandemic. As such, it is necessary to be equipped with state-of-the-art technologies to effectively combine precious findings from diverse scientific documents into a single easily accessible resource. Due to the importance of this requirement for the scientific community, there have been some efforts to achieve this goal. Moreover, new resources and tools released for scientific document processing such as SciBERT (Beltagy, Lo, and Cohan, 2019) and SciFact (Wadden, et al. 2020) provide more research opportunities for scientific document understanding. However, despite all of the recent progress, the fragmented research focusing on different aspects for this domain necessitates a forum for researchers from different perspectives to discuss achievements, new challenges, new resource requirements, and impacts of scientific document understanding on various fields. In addition to the recent focus on scholarly text processing and document understanding in natural language processing, this workshop extends SDU to other scientific areas, including but not limited to scientific image processing, automatic programming, knowledge graph manipulation, and data management. We hope that this workshop will foster collaborations from researchers working on different scientific and AI areas for SDU.

Topics of Interest

SDU  is a workshop  to  gather  insights into the recent advances and remaining challenges on scientific document understanding. As this topic is inherently a multi-disciplinary subject, researchers from artificial intelligence, natural language processing, information retrieval and extraction, image processing, data mining, statistics, bio-medicine, cybersecurity, finance and other fields are invited to submit papers on the recent advances, resources, tools, and upcoming challenges for SDU. Topics of interest for this workshop include but are not limited to:

Important Dates

All deadlines are “anywhere on earth” (UTC-12)

Submission

Authors are invited to submit their unpublished work that represents novel research. The papers should be written in English using the AAAI-23 author kit and follow the AAAI 2023 formatting guidelines. Authors can also submit supplementary materials, including technical appendices, source codes, datasets,  and multimedia appendices. All submissions, including the main paper and its supplementary materials, should be fully anonymized. For more information on formatting and anonymity guidelines, please refer to AAAI 2023 call for paper page. 

All papers will be double-blind peer-reviewed. SDU accepts papers in two tracks:

Two reviewers with the same technical expertise will review each paper. Authors of the accepted papers will present their work in either the Oral or Poster session. 

At least one author of each accepted paper should register at the conference and present the work at the workshop.

Submission should be done electronically in PDF format via Microsoft CMT. SDU will not accept any submission from other mechanisms such as Email. 

References

Iz Beltagy, Kyle Lo, and Arman Cohan. 2019. SciBERT: A Pretrained Language Model for Scientific Text. In Proceedings of the 2019 Conference on Empirical Methods in Natural Language Processing and the 9th International Joint Conference on Natural Language Processing (EMNLP-IJCNLP).

David Wadden, Shanchuan Lin, Kyle Lo, Lucy Lu Wang, Madeleine van Zuylen, Arman Cohan, and Hannaneh Hajishirzi 2020.  Fact or Fiction: Verify-ing Scientific Claims.  In Proceedings of the 2020 Conference on Empirical Methods in Natural Language Processing (EMNLP).