Affiliation:
1. Department of Environmental Sciences, Informatics and Statistics, Ca’ Foscari University, 30123 Venice, Italy
Abstract
While collections of documents are often annotated with hierarchically structured concepts, the benefits of these structures are rarely taken into account by classification techniques. Within this context, hierarchical text classification methods are devised to take advantage of the labels’ organization to boost classification performance. In this work, we aim to deliver an updated overview of the current research in this domain. We begin by defining the task and framing it within the broader text classification area, examining important shared concepts such as text representation. Then, we dive into details regarding the specific task, providing a high-level description of its traditional approaches. We then summarize recently proposed methods, highlighting their main contributions. We also provide statistics for the most commonly used datasets and describe the benefits of using evaluation metrics tailored to hierarchical settings. Finally, a selection of recent proposals is benchmarked against non-hierarchical baselines on five public domain-specific datasets. These datasets, along with our code, are made available for future research.
Reference236 articles.
1. Gasparetto, A., Marcuzzo, M., Zangari, A., and Albarelli, A. (2022). A Survey on Text Classification Algorithms: From Text to Predictions. Information, 13.
2. A Survey on Text Classification: From Traditional to Deep Learning;Li;ACM Trans. Intell. Syst. Technol.,2022
3. Machine Learning in Automated Text Categorization;Sebastiani;ACM Comput. Surv.,2002
4. Decision trees for hierarchical multi-label classification;Vens;Mach. Learn.,2008
5. Rogers, A., Boyd-Graber, J., and Okazaki, N. (2023, January 9–14). A Two-Stage Decoder for Efficient ICD Coding. Proceedings of the Findings of the Association for Computational Linguistics: ACL 2023, Toronto, ON, Canada.