Annotation of argument structure in Japanese legal documents

We propose a method for the annotation of Japanese civil judgment documents, with the purpose of creating flexible summaries of these. The first step, described in the current paper, concerns content selection, i.e., the question of which material should be extracted initially for the summary. In particular, we utilize the hierarchical argument structure of the judgment documents. Our main contributions are a) the design of an annotation scheme that stresses the connection between legal points (called issue topics) and argument structure, b) an adaptation of rhetorical status to suit the Japanese legal system and c) the definition of a linked argument structure based on legal sub-arguments. In this paper, we report agreement between two annotators on several aspects of the overall task.

[1]  Marc Moens,et al.  Articles Summarizing Scientific Articles: Experiments with Relevance and Rhetorical Status , 2002, CL.

[2]  Iryna Gurevych,et al.  Linking the Thoughts: Analysis of Argumentation Structures in Scientific Publications , 2015, ArgMining@HLT-NAACL.

[3]  Thorsten Joachims,et al.  Making large scale SVM learning practical , 1998 .

[4]  Guy Lapalme,et al.  LetSum, an automatic Legal Text Summarizing system , 2004 .

[5]  Xinyu Hua,et al.  Understanding and Detecting Supporting Arguments of Diverse Types , 2017 .

[6]  Jacob Cohen A Coefficient of Agreement for Nominal Scales , 1960 .

[7]  Dain Kaplan,et al.  Slate - A Tool for Creating and Maintaining Annotated Corpora , 2011, J. Lang. Technol. Comput. Linguistics.

[8]  Marie-Francine Moens,et al.  Argumentation mining , 2011, Artificial Intelligence and Law.

[9]  Iryna Gurevych,et al.  Annotating Argument Components and Relations in Persuasive Essays , 2014, COLING.

[10]  Chris Reed,et al.  The CASS Technique for Evaluating the Performance of Argument Mining , 2016, ArgMining@ACL.

[11]  Adam Faulkner,et al.  Automated Classification of Argument Stance in Student Essays: A Linguistically Motivated Approach with an Application for Supporting Argument Summarization , 2014 .

[12]  Matthias Hagen,et al.  A News Editorial Corpus for Mining Argumentation Strategies , 2016, COLING.

[13]  M. Saravanan,et al.  Identification of Rhetorical Roles for Segmentation and Summarization of a Legal Judgment , 2010, Artificial Intelligence and Law.

[14]  Claire Grover,et al.  Extractive summarisation of legal texts , 2006, Artificial Intelligence and Law.