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E-raamat: Research Handbook on Big Data Law

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This state-of-the-art Research Handbook provides an overview of research into, and the scope of current thinking in, the field of big data analytics and the law. It contains a wealth of information to survey the issues surrounding big data analytics in legal settings, as well as legal issues concerning the application of big data techniques in different domains.





Featuring contributions from a variety of expert scholars, this is an interdisciplinary dialogue addressing big data analytics, tools and techniques and the societal impact of the field. Chapters analyze both cases anchored in a particular legal system (such as anti-corruption in China) and big data law approaches relevant across multiple practice areas: including machine learning within law, legal information retrieval, natural language processing and e-discovery. It also offers original insights from industry project reports that use big data law techniques in interesting, new ways.





Providing a unique and interdisciplinary blend of analysis, this Research Handbook will be a key resource for legal scholars and students researching in areas such as criminal, tax, copyright and administrative law. It will also prove useful for practicing lawyers wanting to get a sense of the legal practice of the future, as well as law-makers thinking about the use of big data law techniques in government policy.

Arvustused

'With insights across a spectrum of experts, this Handbook serves as a vital guide for thinking through some of the opportunities and challenges that arise with the use of big data in legal settings.' -- Jonathan L. Zittrain, Harvard Law School, US

List of contributors
ix
Acknowledgments xxii
Introduction to the Research Handbook on Big Data Law 1(8)
Roland Vogl
1 The accuracy, equity, and jurisprudence of criminal risk assessment
9(20)
Sharad Goel
Ravi Shroff
Jennifer Skeem
Christopher Slobogin
2 The many faces of facial recognition
29(28)
Stephen Caines
3 Artificially intelligent government: A review and agenda
57(30)
David Freeman Engstrom
Daniel E. Ho
4 Big data and copyright law
87(28)
Daniel Seng
5 Big data analytics, online terms of service and privacy policies
115(20)
Przemyslaw Palka
Marco Lippi
6 Data analytics and tax law
135(15)
Benjamin Alarie
Anthony Niblett
Albert Yoon
7 Experience of big data anti-corruption in China
150(21)
Ran Wang
8 Machine learning and law: An overview
171(14)
Harry Surden
9 SCOTUS outcome prediction: A new machine learning approach
185(13)
Ashkon Farhangi
Ajay Sohmshetty
10 Legal information retrieval
198(18)
Ashraf Bah Rabiou
11 LexNLP: Natural language processing and information extraction for legal and regulatory texts
216(12)
Michael J. Bommarito
Daniel Martin Katz
Eric M. Detterman
12 Quantitative legal research in Germany
228(25)
Dirk Hartung
13 Big data analytics for e-discovery
253(32)
Johannes C. Scholtes
Hendrik Jacob van den Herik
14 Generalizability: Machine learning and humans-in-the-loop
285(19)
John Nay
Katherine J. Strandburg
15 The VICTOR Project: Applying artificial intelligence to Brazil's Supreme Federal Court
304(14)
Ricardo Vieira de Carvalho Fernandes
Danilo Barros Mendes
Gustavo Henrique T.A. Carvalho
Hugo Honda Ferreira
16 Explainable artificial intelligence
318(23)
Mary-Anne Williams
17 Explainability and transparency of machine learning in ADM systems
341(16)
Bernhard Waltl
18 Certifying artificial intelligence systems
357(17)
Florian Moslein
Roberto V. Zicari
19 Rules, cases and arguments in artificial intelligence and law
374(15)
Heng Zheng
Bart Verheij
20 Artificial intelligence and the zealous litigator
389(15)
James Yoon
21 Evaluating legal services: The need for a quality movement and standard measures of quality and value
404(28)
Daniel W. Linna Jr.
22 Machine learning and EU data-sharing practices: Legal aspects of machine learning training datasets for Al systems
432(22)
Mauritz Kop
23 Al-driven contract review: A product development journey
454(13)
Shlomit Labin
Uri Segal
24 Practical guide to artificial intelligence and contract review
467(15)
Andrew Antos
Nischal Nadhamuni
25 Legal marketplaces using machine learning techniques
482(4)
Veronica Sorin
Marti Manent
Index 486
Edited by Roland Vogl, Executive Director and Lecturer in Law, CodeX - The Stanford Center for Legal Informatics, Stanford Law School, US