Thomas R. Bruce
Cornell University
Network
Latest external collaboration on country level. Dive into details by clicking on the dots.
Publication
Featured researches published by Thomas R. Bruce.
digital government research | 2006
Claire Cardie; Cynthia R. Farina; Thomas R. Bruce
This paper describes in brief Cornells interdisciplinary eRulemaking project that was recently funded (December, 2005) by the National Science Foundation.
digital government research | 2012
Núria Casellas; Thomas R. Bruce; Sarah Bouwman; Dallas Dias; Jie Lin; Sharvari Marathe; Krithi Rai; Ankit Singh; Debraj Sinha; Sanjna Venkataraman
The application of Linked Open Data (LOD) principles to legal information (URI naming of resources, assertions about named relationships between resources or between resources and data values, and the possibility to easily extend, update and modify these relationships and resources) could offer better access and understanding of regulatory information to individual citizens, businesses and government agencies and administrations, and allow its sharing and reuse across applications, organizations and jurisdictions.
international conference on artificial intelligence and law | 2015
Michael Curtotti; Eric McCreath; Thomas R. Bruce; Wayne Weibel; Nicolas Ceynowa
Improving the readability of legislation is an important and unresolved problem. Recently, researchers have begun to apply legal informatics to this problem. This paper applies machine learning to predict the readability of sentences from legislation and regulations. A corpus of sentences from the United States Code and US Code of Federal Regulations was created. Each sentence was labelled for language difficulty using results from a large-scale crowdsourced study undertaken during 2014. The corpus was used as training and test data for machine learning. The corpus includes a version tagged using the Stanford parser context free grammar and a version tagged using the Stanford dependency grammar parser. The corpus is described and made available to interested researchers. We investigated whether extending natural language features available as input to machine learning improves the accuracy of prediction. Among features evaluated are those from the context free and dependency grammars. Letter and word ngrams were also studied. We found the addition of such features improves accuracy of prediction on legal language. We also undertake a correlation study of natural language features and language difficulty drawing insights as to the characteristics that may make legal language more difficult. These insights, and those from machine learning, enable us to describe a system for reducing legal language difficulty and to identify a number of suggested heuristics for improving the writing of legislation and regulations.
international conference on artificial intelligence and law | 2011
Robert C. Richards Jr.; Thomas R. Bruce
In the domain of print-based U.S. legal information, specialized tools that create connections between different categories of metadata increase legal research efficiency. Such tools, redesigned for the electronic sphere, could enhance digital legal information systems. This paper illustrates this kind of redesign, through a case study of one such tool---the Parallel Table of Authorities and Rules in the U.S. Code of Federal Regulations, which connects regulations to the statutes that authorize them.
Archive | 2013
Thomas R. Bruce; Zachary Doob; Adam Palcich; Richard W. Anthony; Vitaliy Darovskikh; Jennifer L. Campbell; Christopher J. Kelly; Alfonso Gonzalez
Archive | 2013
Thomas R. Bruce; Zachary Doob; Adam Palcich; Richard W. Anthony; Vitaliy Darovskikh; Jennifer L. Campbell; Christopher J. Kelly; Alfonso Gonzalez
Journal of Open Access to Law | 2015
Michael Curtotti; Wayne Weibel; Eric McCreath; Nicolas Ceynowa; Thomas R. Bruce
Archive | 2011
Núria Casellas; Joan-Josep Vallbé; Thomas R. Bruce
Akron law review | 1996
Thomas R. Bruce
digital government research | 2008
Stuart W. Shulman; Thomas R. Bruce