
Legal Knowledge and Information Systems
Description
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This book presents the proceedings of JURIX 2022, the 35th International Conference on Legal Knowledge and Information Systems, held from 14 -16 December in Saarbruecken, Germany, under the auspices of the Dutch Foundation for Legal Knowledge Based Systems and hosted by Saarland University. The annual JURIX conference has become an international forum for academics and professionals to exchange knowledge and experiences at the intersection of law and artificial intelligence (AI). For this edition, 62 submissions were received from 163 authors in 24 countries. Following a rigorous review process, carried out by a programme committee of 72 experts recognised in the field, 14 submissions were selected for publication as long papers, 22 as short papers and 5 as demo papers, making a total of 41 papers altogether and representing a 22.5% acceptance rate for long papers (66.1% overall). The broad array of topics covered includes argumentation and legal reasoning, legal ontologies and the semantic web, machine and deep learning and natural language processing for legal knowledge extraction, as well as argument mining, translation of legal texts, defeasible logic, legal compliance, explainable AI, alternative dispute resolution, legal drafting and smart contracts.
Providing an overview of recent advances, the book will be of interest to all those working at the interface between the law and AI.
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Content
- Intro
- Title Page
- Preface
- About the Conference
- Contents
- Full Papers
- A Hybrid Model of Argument Concerning Preferences Between Statutory Interpretation Canons
- Implementing a Theory of a Legal Domain
- Precedential Constraint Derived from Inconsistent Case Bases
- Linking Appellate Judgments to Tribunal Judgments - Benchmarking Different ML Techniques
- Stable Normative Explanations
- Toward Automatically Identifying Legally Relevant Factors
- Semantic Querying of Knowledge Rich Legal Digital Libraries Using Prism
- Investigating Strategies for Clause Recommendation
- Modelling and Explaining Legal Case-Based Reasoners Through Classifiers
- Reasoning with Legal Cases: A Hybrid ADF-ML Approach
- A Multi-Step Approach in Translating Natural Language into Logical Formula
- Why Do Tenants Sue Their Landlords? Answers from a Topic Model
- Conditional Abstractive Summarization of Court Decisions for Laymen and Insights from Human Evaluation
- Toward an Intelligent Tutoring System for Argument Mining in Legal Texts
- Short Papers
- Unpacking Arguments
- The Illinois Intentional Tort Qualitative Dataset
- An Automata-Based Formalism for Normative Documents with Real-Time
- Recognising Legal Characteristics of the Judgments of the European Court of Justice: Difficult but Not Impossible
- Automating the Response to GDPR's Right of Access
- A Compression and Simulation-Based Approach to Fraud Discovery
- Fundamental Revisions on Constraint Hierarchies for Ethical Norms
- Predicting Outcomes of Italian VAT Decisions
- Effectiveness of Bidirectional Generative Patent Language Models
- Transfer Learning for Deontic Rule Classification: The Case Study of the GDPR
- Functional Classification of Statements of Chinese Judgment Documents of Civil Cases
- An Argumentation and Ontology Based Legal Support System for AI Vehicle Design
- WhenTheFact: Extracting Events from European Legal Decisions
- Autosuggestion of Relevant Cases and Statutes
- Extracting References from German Legal Texts Using Named Entity Recognition
- An End-to-End Pipeline from Law Text to Logical Formulas
- Legal Text Summarization Using Argumentative Structures
- Measuring the Complexity of Dutch Legislation
- Judgment Tagging and Recommendation Using Pre-Trained Language Models and Legal Taxonomy
- Multi-Granularity Argument Mining in Legal Texts
- On Capturing Legal Knowledge in Ontology and Process Models Combined. The Case of an Appeal Process
- Can a Military Autonomous Device Follow International Humanitarian Law?
- Demo Papers
- Toward an Integrated Annotation and Inference Platform for Enhancing Justifications for Algorithmically Generated Legal Recommendations and Decisions
- The LegAi Editor: A Tool for the Construction of Legal Knowledge Bases
- Scribe: A Specialized Collaborative Tool for Legal Judgment Annotation
- An Interactive Natural Language Interface for PROLEG
- Consumer Dispute Resolution System Based on PROLEG
- Subject Index
- Author Index
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