
Legal Knowledge and Information Systems
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This book presents the proceedings of the 34th annual JURIX conference, which, due to pandemic restrictions, was hosted online in a virtual format from 8 - 10 December 2021 in Vilnius, Lithuania. Since its inception as a mainly Dutch event, the JURIX conference has become truly international and now, as a platform for the exchange of knowledge between theoretical research and applications, attracts academics, legal practitioners, software companies, governmental agencies and judiciary from around the world. A total of 65 submissions were received for this edition, and after rigorous review, 30 of these were selected for publication as long papers or short papers, representing an overall acceptance rate of 46 %. The papers are divided into 6 sections: Visualization and Legal Informatics; Knowledge Representation and Data Analytics; Logical and Conceptual Representations; Predictive Models; Explainable Artificial Intelligence; and Legal Ethics, and cover a wide range of topics, from computational models of legal argumentation, case-based reasoning, legal ontologies, smart contracts, privacy management and evidential reasoning, through information extraction from different types of text in legal documents, to ethical dilemmas.
Providing an overview of recent advances and the cross-fertilization between law and computing technologies, this book will be of interest to all those working at the interface between technology and law.
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Content
- Intro
- Title Page
- Preface
- Partners
- Programme Committee
- Contents
- 1. Visualisation and Legal Informatics
- Visualization of Legal Informatics
- 2. Knowledge Representation and Data Analytics
- Automatically Identifying Eviction Cases and Outcomes Within Case Law of Dutch Courts of First Instance
- A Pragmatic Approach to Semantic Annotation for Search of Legal Texts - An Experiment on GDPR
- Accounting for Sentence Position and Legal Domain Sentence Embedding in Learning to Classify Case Sentences
- Generation of Legal Norm Chains: Extracting the Most Relevant Norms from Court Rulings
- Data-Centric Machine Learning: Improving Model Performance and Understanding Through Dataset Analysis
- The Unreasonable Effectiveness of the Baseline: Discussing SVMs in Legal Text Classification
- Assessing the Cross-Market Generalization Capability of the CLAUDETTE System
- Hybrid AI Framework for Legal Analysis of the EU Legislation Corrigenda
- Improving Legal Case Summarization Using Document-Specific Catchphrases
- Towards Reducing the Pendency of Cases at Court: Automated Case Analysis of Supreme Court Judgments in India
- An Analytical Study of Algorithmic and Expert Summaries of Legal Cases
- Semantic Search and Summarization of Judgments Using Topic Modeling
- Analyze the Usage of Legal Definitions in Indonesian Regulation Using Text Mining Case Study: Treasury and Budget Law
- Few-Shot Tuning Framework for Automated Terms of Service Generation
- An Information Retrieval Pipeline for Legislative Documents from the Brazilian Chamber of Deputies
- Signal Phrase Extraction: A Gateway to Information Retrieval Improvement in Law Texts
- Human Evaluation Experiment of Legal Information Retrieval Methods
- 3. Logical and Conceptual Representations
- A Kelsenian Deontic Logic
- Identification of Contradictions in Regulation
- A GDPR International Transfer Compliance Framework Based on an Extended Data Privacy Vocabulary (DPV)
- Computability of Diagrammatic Theories for Normative Positions
- Computing Private International Law
- Explaining Factor Ascription
- Timed Dyadic Deontic Logic
- 4. Predictive Models
- Can Predictive Justice Improve the Predictability and Consistency of Judicial Decision-Making?
- 5. Explainable Artificial Intelligence
- Cause of Action and the Right to Know. A Formal Conceptual Analysis of the Texas Senate Bill 25 Case
- Rationale Discovery and Explainable AI
- A Survey on Methods and Metrics for the Assessment of Explainability Under the Proposed AI Act
- 6. Legal Ethics
- The Ethics of Controllability as Influenceability
- Subject Index
- Author Index
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