This thesis investigates the enhancement of legal contract Natural Language Inference (NLI) classification through supervised fine-tuning on general domain NLI, in the case of ContractNLI and Span NLI BERT (Koreeda and Manning, 2021), a multi-task document information extraction dataset and framework. Annotated datasets of a specific professional domain are scarce due to the high time and labour cost required to create them. Since NLI is a simple yet effective task in inducing and evaluating natural language understanding (NLU) abilities in language models, there is potential in leveraging abundant general domain NLI datasets to aid information extraction and classification for legal contracts. This work evaluates the impact of transfer lea...
Information extraction from legal documents is an important and open problem. A mixed approach, usin...
Natural language inference (NLI) is a fundamental NLP task, investigating the entailment relationshi...
In this dissertation, we study computational models for classification and application of natural la...
This thesis investigates the enhancement of legal contract Natural Language Inference (NLI) classifi...
Natural Language Inference (NLI) plays an important role in many natural language processing tasks s...
Written contracts are a fundamental framework for commercial and cooperative transactions and relati...
The field of service automation is progressing rapidly, and increasingly complex tasks are being aut...
Although much research has gone into natural language legal document analysis, practical solutions t...
Transformer-based architectures have in recent years advanced state-of-the-art performance in Natura...
In order to automatically extract information from legal texts we propose the use of a mixed approac...
This chapter presents a model for knowledge extraction from documents written in natural language. T...
Natural Language Understanding (NLU) systems are essential components in many industry conversationa...
This research investigates the automatic translation of contracts to computer understandable rules t...
Whether we are aware of it or not, our digital lives are governed by contracts of various kinds, suc...
Information extraction is a process that extracts limited semantic concepts from text documents and ...
Information extraction from legal documents is an important and open problem. A mixed approach, usin...
Natural language inference (NLI) is a fundamental NLP task, investigating the entailment relationshi...
In this dissertation, we study computational models for classification and application of natural la...
This thesis investigates the enhancement of legal contract Natural Language Inference (NLI) classifi...
Natural Language Inference (NLI) plays an important role in many natural language processing tasks s...
Written contracts are a fundamental framework for commercial and cooperative transactions and relati...
The field of service automation is progressing rapidly, and increasingly complex tasks are being aut...
Although much research has gone into natural language legal document analysis, practical solutions t...
Transformer-based architectures have in recent years advanced state-of-the-art performance in Natura...
In order to automatically extract information from legal texts we propose the use of a mixed approac...
This chapter presents a model for knowledge extraction from documents written in natural language. T...
Natural Language Understanding (NLU) systems are essential components in many industry conversationa...
This research investigates the automatic translation of contracts to computer understandable rules t...
Whether we are aware of it or not, our digital lives are governed by contracts of various kinds, suc...
Information extraction is a process that extracts limited semantic concepts from text documents and ...
Information extraction from legal documents is an important and open problem. A mixed approach, usin...
Natural language inference (NLI) is a fundamental NLP task, investigating the entailment relationshi...
In this dissertation, we study computational models for classification and application of natural la...