Agent-Specific Deontic Modality Detection in Legal Language
- URL: http://arxiv.org/abs/2211.12752v1
- Date: Wed, 23 Nov 2022 07:32:23 GMT
- Title: Agent-Specific Deontic Modality Detection in Legal Language
- Authors: Abhilasha Sancheti, Aparna Garimella, Balaji Vasan Srinivasan, Rachel
Rudinger
- Abstract summary: LEXDEMOD is a corpus of English contracts annotated with deontic modality expressed with respect to a contracting party or agent.
We benchmark this dataset on two tasks: (i) agent-specific multi-label deontic modality classification, and (ii) agent-specific deontic modality and trigger span detection.
Experiments show that the linguistic diversity of modal expressions in LEXDEMOD generalizes reasonably from lease to employment and rental agreements.
- Score: 19.94131001761646
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Legal documents are typically long and written in legalese, which makes it
particularly difficult for laypeople to understand their rights and duties.
While natural language understanding technologies can be valuable in supporting
such understanding in the legal domain, the limited availability of datasets
annotated for deontic modalities in the legal domain, due to the cost of hiring
experts and privacy issues, is a bottleneck. To this end, we introduce,
LEXDEMOD, a corpus of English contracts annotated with deontic modality
expressed with respect to a contracting party or agent along with the modal
triggers. We benchmark this dataset on two tasks: (i) agent-specific
multi-label deontic modality classification, and (ii) agent-specific deontic
modality and trigger span detection using Transformer-based (Vaswani et al.,
2017) language models. Transfer learning experiments show that the linguistic
diversity of modal expressions in LEXDEMOD generalizes reasonably from lease to
employment and rental agreements. A small case study indicates that a model
trained on LEXDEMOD can detect red flags with high recall. We believe our work
offers a new research direction for deontic modality detection in the legal
domain.
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