Abstract
AbstractThis paper aims to tackle the challenge posed by the increasing integration of software tools in research across various disciplines by investigating the application of Falcon-7b for the detection and classification of software mentions within scholarly texts. Specifically, the study focuses on solving Subtask I of the Software Mention Detection in Scholarly Publications (SOMD), which entails identifying and categorizing software mentions from academic literature. Through comprehensive experimentation, the paper explores different training strategies, including a dual-classifier approach, adaptive sampling, and weighted loss scaling, to enhance detection accuracy while overcoming the complexities of class imbalance and the nuanced syntax of scholarly writing. The findings highlight the benefits of selective labelling and adaptive sampling in improving the model’s performance. However, they also indicate that integrating multiple strategies does not necessarily result in cumulative improvements. This research offers insights into the effective application of large language models for specific tasks such as SOMD, underlining the importance of tailored approaches to address the unique challenges presented by academic text analysis.
Publisher
Springer Nature Switzerland
Reference29 articles.
1. Ahmed, R.M.W.: Metadata Extraction using Geometric and Layout Features from Research Publications. Ph.D. thesis, Capital University (2022)
2. Alfred, R., Leong, L.C., On, C.K., Anthony, P.: Malay named entity recognition based on rule-based approach (2014)
3. Almazrouei, E., et al.: The Falcon Series of Open Language Models (Nov 2023). https://doi.org/10.48550/arXiv.2311.16867, http://arxiv.org/abs/2311.16867, arXiv:2311.16867 [cs]
4. Boukhers, Z., Ambhore, S., Staab, S.: An end-to-end approach for extracting and segmenting high-variance references from pdf documents. In: 2019 ACM/IEEE Joint Conference on Digital Libraries (JCDL), pp. 186–195. IEEE (2019)
5. Boukhers, Z., Beili, N., Hartmann, T., Goswami, P., Zafar, M.A.: Mexpub: deep transfer learning for metadata extraction from German publications. In: 2021 ACM/IEEE Joint Conference on Digital Libraries (JCDL), pp. 250–253. IEEE (2021)