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Argumentation Structure Prediction in CJEU Decisions on Fiscal State Aid

Published: 07 September 2023 Publication History

Abstract

Argument structure prediction aims to identify the relations between arguments or between parts of arguments. It is a crucial task in legal argument mining, where it could help identifying motivations behind judgments or even fallacies or inconsistencies. It is also a very challenging task, which is relatively underdeveloped compared to other argument mining tasks, owing to a number of reasons including a low availability of datasets and a high complexity of the reasoning involved. In this work, we address argumentative link prediction in decisions by Court of Justice of the European Union on fiscal state aid. We study how propositions are combined in higher-level structures and how the relations between propositions can be predicted by NLP models. To this end, we present a novel annotation scheme and use it to extend a dataset from literature with an additional annotation layer. We use our new dataset to run an empirical study, where we compare two architectures and explore different combinations of hyperparameters and training regimes. Our results indicate that an ensemble of residual networks yields the best results.

References

[1]
Kevin D. Ashley, Ravi Desai, and John M. Levine. 2002. Teaching Case-Based Argumentation Concepts Using Dialectic Arguments vs. Didactic Explanations. In Intelligent Tutoring Systems. 585--595.
[2]
Katie Atkinson and Trevor J. M. Bench-Capon. 2019. Reasoning with Legal Cases: Analogy or Rule Application?. In ICAIL. ACM, 12--21.
[3]
Katie Atkinson and Trevor J. M. Bench-Capon. 2021. Argumentation schemes in AI and Law. Argument Comput. 12, 3 (2021), 417--434.
[4]
Roy Bar-Haim, Indrajit Bhattacharya, Francesco Dinuzzo, Amrita Saha, and Noam Slonim. 2017. Stance classification of context-dependent claims. In EACL. 251--261.
[5]
Trevor J. M. Bench-Capon, James B. Freeman, Hanns Hohmann, and Henry Prakken. 2004. Computational Models, Argumentation Theories and Legal Practice. In Argumentation Machines. Vol. 9. Springer, 85--120.
[6]
Trevor J. M. Bench-Capon, Henry Prakken, and Giovanni Sartor. 2009. Argumentation in Legal Reasoning. In Argumentation in Artificial Intelligence. Springer, 363--382.
[7]
Elena Cabrio and Serena Villata. 2018. Five Years of Argument Mining: a Data-driven Analysis. In IJCAI. 5427--5433.
[8]
Liying Cheng, Lidong Bing, Qian Yu, Wei Lu, and Luo Si. 2020. APE: Argument Pair Extraction from Peer Review and Rebuttal via Multi-task Learning. In EMNLP. ACL, Online, 7000--7011.
[9]
Oana Cocarascu and Francesca Toni. 2017. Identifying attack and support argumentative relations using deep learning. In EMNLP. ACL, 1374--1379.
[10]
Jacob Cohen. 1960. A Coefficient of Agreement for Nominal Scales. Educational and Psychological Measurement 20 (1960), 37 - 46.
[11]
Jacob Devlin, Ming-Wei Chang, Kenton Lee, and Kristina Toutanova. 2019. BERT: Pre-training of Deep Bidirectional Transformers for Language Understanding. In NAACL-HLT. ACL, 4171--4186.
[12]
Andrea Galassi, Marco Lippi, and Paolo Torroni. 2018. Argumentative Link Prediction using Residual Networks and Multi-Objective Learning. In ArgMining@EMNLP. Association for Computational Linguistics, 1--10.
[13]
Andrea Galassi, Marco Lippi, and Paolo Torroni. 2021. Attention in Natural Language Processing. IEEE TNNLS 32, 10 (2021), 4291--4308. https://doi.org/10.1109/TNNLS.2020.3019893
[14]
Andrea Galassi, Marco Lippi, and Paolo Torroni. 2023. Multi-Task Attentive Residual Networks for Argument Mining. IEEE/ACM Transactions on Audio, Speech and Language Processing (2023). https://arxiv.org/abs/2102.12227
[15]
Matthias Grabmair, Kevin D Ashley, Ran Chen, Preethi Sureshkumar, Chen Wang, Eric Nyberg, and Vern R Walker. 2015. Introducing LUIMA: an experiment in legal conceptual retrieval of vaccine injury decisions using a UIMA type system and tools. In ICAIL. 69--78.
[16]
Giulia Grundler, Piera Santin, Andrea Galassi, Federico Galli, Francesco Godano, Francesca Lagioia, Elena Palmieri, Federico Ruggeri, Giovanni Sartor, and Paolo Torroni. 2022. Detecting Arguments in CJEU Decisions on Fiscal State Aid. In ArgMining@COLING. 143--157.
[17]
Ivan Habernal, Daniel Faber, Nicola Recchia, Sebastian Bretthauer, Iryna Gurevych, Christoph Burchard, et al. 2022. Mining legal arguments in court decisions. arXiv preprint arXiv:2208.06178 (2022).
[18]
Ben Hachey and Claire Grover. 2006. Extractive summarisation of legal texts. Artificial Intelligence and Law 14 (2006), 305--345.
[19]
Kaiming He, Xiangyu Zhang, Shaoqing Ren, and Jian Sun. 2016. Deep Residual Learning for Image Recognition. In CVPR. IEEE Computer Society, 770--778.
[20]
Sepp Hochreiter and Jürgen Schmidhuber. 1997. Long Short-term Memory. Neural computation 9 (12 1997), 1735--80.
[21]
Rinke Hoekstra, Joost Breuker, Marcello Di Bello, and Alexander Boer. 2009. LKIF Core: Principled Ontology Development for the Legal Domain. In Law, Ontologies and the Semantic Web, Vol. 188. IOS Press, 21--52.
[22]
Christian Kirschner, Judith Eckle-Kohler, and Iryna Gurevych. 2015. Linking the Thoughts: Analysis of Argumentation Structures in Scientific Publications. In ArgMining. ACL, Denver, CO, 1--11.
[23]
John Lawrence and Chris Reed. 2020. Argument mining: A survey. Computational Linguistics 45, 4 (2020), 765--818.
[24]
Marco Lippi and Paolo Torroni. 2016. Argumentation Mining: State of the Art and Emerging Trends. ACM Trans. Internet Techn. 16, 2 (2016), 10:1--10:25.
[25]
Yinhan Liu, Myle Ott, Naman Goyal, Jingfei Du, Mandar Joshi, Danqi Chen, Omer Levy, Mike Lewis, Luke Zettlemoyer, and Veselin Stoyanov. 2019. RoBERTa: A Robustly Optimized BERT Pretraining Approach. CoRR abs/1907.11692 (2019).
[26]
Anastasios Lytos, Thomas Lagkas, Panagiotis Sarigiannidis, and Kalina Bontcheva. 2019. The Evolution of Argumentation Mining: From Models to Social Media and Emerging Tools. Inf. Process. Manage. 56, 6 (nov 2019), 22 pages.
[27]
Tobias Mayer, Santiago Marro, Elena Cabrio, and Serena Villata. 2021. Enhancing evidence-based medicine with natural language argumentative analysis of clinical trials. Artif. Intell. Medicine 118 (2021), 102098.
[28]
Raquel Mochales and Marie-Francine Moens. 2008. Study on the structure of argumentation in case law. In JURIX. 11--20.
[29]
Raquel Mochales and Marie-Francine Moens. 2011. Argumentation mining. Artificial Intelligence and Law 19 (2011), 1--22.
[30]
Raquel Mochales-Palau and M Moens. 2007. Study on sentence relations in the automatic detection of argumentation in legal cases. Frontiers in Artificial Intelligence and Applications 165 (2007), 89.
[31]
Raquel Mochales Palau and Marie-Francine Moens. 2011. Argumentation mining. Artificial Intelligence and Law 19, 1 (2011), 1--22.
[32]
Vlad Niculae, Joonsuk Park, and Claire Cardie. 2017. Argument Mining with Structured SVMs and RNNs. In ACL. ACL, Vancouver, Canada, 985--995.
[33]
Raquel Mochales Palau and Marie-Francine Moens. 2009. Argumentation mining: the detection, classification and structure of arguments in text. In ICAIL. 98--107.
[34]
Jeffrey Pennington, Richard Socher, and Christopher Manning. 2014. GloVe: Global Vectors for Word Representation. In EMNLP. Doha, Qatar, 1532--1543.
[35]
Sezen Perçin, Andrea Galassi, Francesca Lagioia, Federico Ruggeri, Piera Santin, Giovanni Sartor, and Paolo Torroni. 2022. Combining WordNet and Word Embeddings in Data Augmentation for Legal Texts. In NLLP. 47--52.
[36]
Prakash Poudyal, Teresa Gonçalves, and Paulo Quaresma. 2019. Using Clustering Techniques to Identify Arguments in Legal Documents. In ASAIL@ICAIL.
[37]
Prakash Poudyal, Jaromír Šavelka, Aagje Ieven, Marie Francine Moens, Teresa Goncalves, and Paulo Quaresma. 2020. ECHR: legal corpus for argument mining. In ArgMining. 67--75.
[38]
Henry Prakken and Giovanni Sartor. 1996. A Dialectical Model of Assessing Conflicting Arguments in Legal Reasoning. Artif. Intell. Law 4, 3-4 (1996), 331--368.
[39]
Victor Sanh, Lysandre Debut, Julien Chaumond, and Thomas Wolf. 2019. DistilBERT, a distilled version of BERT: smaller, faster, cheaper and lighter. ArXiv abs/1910.01108 (2019).
[40]
Muhammad Tawsif Sazid and Robert E. Mercer. 2022. A Unified Representation and a Decoupled Deep Learning Architecture for Argumentation Mining of Students' Persuasive Essays. In ArgMining. 74--83.
[41]
Lida Shi, Fausto Giunchiglia, Rui Song, Daqian Shi, Tongtong Liu, Xiaolei Diao, and Hao Xu. 2022. A Simple Contrastive Learning Framework for Interactive Argument Pair Identification via Argument-Context Extraction. In EMNLP. ACL, Abu Dhabi, United Arab Emirates, 10027--10039.
[42]
Christian Stab and Iryna Gurevych. 2014. Identifying argumentative discourse structures in persuasive essays. In EMNLP. 46--56.
[43]
Christian Stab and Iryna Gurevych. 2017. Parsing Argumentation Structures in Persuasive Essays. Computational Linguistics 43, 3 (Sept. 2017), 619--659.
[44]
Manfred Stede and Jodi Schneider. 2018. Argumentation mining. Synthesis Lectures on Human Language Technologies 11, 2 (2018), 1--191.
[45]
Milagro Teruel, Cristian Cardellino, Fernando Cardellino, Laura Alonso Alemany, and Serena Villata. 2018. Legal text processing within the MIREL project. In Workshop on Language Resources and Technologies for the Legal Knowledge Graph. 42.
[46]
Milagro Teruel, Cristian Cardellino, Fernando Cardellino, Laura Alonso Alemany, and Serena Villata. 2018. Increasing Argument Annotation Reproducibility by Using Inter-annotator Agreement to Improve Guidelines. In LREC.
[47]
Stephen E Toulmin. 2003. The uses of argument. Cambridge university press.
[48]
Joel P Trachtman. 2013. The tools of argument: How the best lawyers think, argue, and win. Argue, and Win (July 29, 2013) (2013).
[49]
Douglas Walton, Christopher Reed, and Fabrizio Macagno. 2008. Argumentation schemes. Cambridge University Press.
[50]
Huihui Xu, Jaromír Šavelka, and Kevin D Ashley. 2020. Using Argument Mining for Legal Text Summarization. In JURIX. 184--193.
[51]
Hiroaki Yamada, Simone Teufel, and Takenobu Tokunaga. 2019. Neural network based rhetorical status classification for japanese judgment documents. In Legal Knowledge and Information Systems. IOS Press, 133--142.
[52]
Jian Yuan, Zhongyu Wei, Yixu Gao, Wei Chen, Yun Song, Donghua Zhao, Jinglei Ma, Zhen Hu, Shaokun Zou, Donghai Li, and Xuanjing Huang. 2021. Overview of SMP-CAIL2020-Argmine: The Interactive Argument-Pair Extraction in Judgement Document Challenge. Data Intelligence 3, 2 (06 2021), 287--307.
[53]
Gechuan Zhang, Paul Nulty, and David Lillis. 2022. Enhancing Legal Argument Mining with Domain Pre-training and Neural Networks. CoRR abs/2202.13457 (2022).

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ICAIL '23: Proceedings of the Nineteenth International Conference on Artificial Intelligence and Law
June 2023
499 pages
ISBN:9798400701979
DOI:10.1145/3594536
Permission to make digital or hard copies of all or part of this work for personal or classroom use is granted without fee provided that copies are not made or distributed for profit or commercial advantage and that copies bear this notice and the full citation on the first page. Copyrights for components of this work owned by others than the author(s) must be honored. Abstracting with credit is permitted. To copy otherwise, or republish, to post on servers or to redistribute to lists, requires prior specific permission and/or a fee. Request permissions from [email protected].

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Published: 07 September 2023

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Author Tags

  1. Argument Mining
  2. CJEU decisions
  3. Legal Argument
  4. Link Prediction

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  • Research-article
  • Research
  • Refereed limited

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  • European Commission NextGeneration EU programme
  • Horizon 2020 Framework Programme
  • European Union's Justice Programme (2014-2020)
  • Italian Ministry of Education and Research

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ICAIL 2023
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  • IAAIL

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