2019
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Litigation Analytics: Extracting and querying motions and orders from US federal courts
Thomas Vacek
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Dezhao Song
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Hugo Molina-Salgado
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Ronald Teo
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Conner Cowling
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Frank Schilder
Proceedings of the 2019 Conference of the North American Chapter of the Association for Computational Linguistics (Demonstrations)
Legal litigation planning can benefit from statistics collected from past decisions made by judges. Information on the typical duration for a submitted motion, for example, can give valuable clues for developing a successful strategy. Such information is encoded in semi-structured documents called dockets. In order to extract and aggregate this information, we deployed various information extraction and machine learning techniques. The aggregated data can be queried in real time within the Westlaw Edge search engine. In addition to a keyword search for judges, lawyers, law firms, parties and courts, we also implemented a question answering interface that offers targeted questions in order to get to the respective answers quicker.
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Litigation Analytics: Case Outcomes Extracted from US Federal Court Dockets
Thomas Vacek
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Ronald Teo
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Dezhao Song
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Timothy Nugent
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Conner Cowling
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Frank Schilder
Proceedings of the Natural Legal Language Processing Workshop 2019
Dockets contain a wealth of information for planning a litigation strategy, but the information is locked up in semi-structured text. Manually deriving the outcomes for each party (e.g., settlement, verdict) would be very labor intensive. Having such information available for every past court case, however, would be very useful for developing a strategy because it potentially reveals tendencies and trends of judges and courts and the opposing counsel. We used Natural Language Processing (NLP) techniques and deep learning methods allowing us to scale the automatic analysis of millions of US federal court dockets. The automatically extracted information is fed into a Litigation Analytics tool that is used by lawyers to plan how they approach concrete litigations.
2018
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The E2E NLG Challenge: A Tale of Two Systems
Charese Smiley
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Elnaz Davoodi
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Dezhao Song
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Frank Schilder
Proceedings of the 11th International Conference on Natural Language Generation
This paper presents the two systems we entered into the 2017 E2E NLG Challenge: TemplGen, a templated-based system and SeqGen, a neural network-based system. Through the automatic evaluation, SeqGen achieved competitive results compared to the template-based approach and to other participating systems as well. In addition to the automatic evaluation, in this paper we present and discuss the human evaluation results of our two systems.
2016
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When to Plummet and When to Soar: Corpus Based Verb Selection for Natural Language Generation
Charese Smiley
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Vassilis Plachouras
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Frank Schilder
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Hiroko Bretz
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Jochen Leidner
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Dezhao Song
Proceedings of the 9th International Natural Language Generation conference
2015
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Natural Language Question Answering and Analytics for Diverse and Interlinked Datasets
Dezhao Song
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Frank Schilder
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Charese Smiley
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Chris Brew
Proceedings of the 2015 Conference of the North American Chapter of the Association for Computational Linguistics: Demonstrations