The Legislative Recipe: Syntax for Machine-Readable Legislation
- URL: http://arxiv.org/abs/2108.08678v1
- Date: Thu, 19 Aug 2021 13:40:35 GMT
- Title: The Legislative Recipe: Syntax for Machine-Readable Legislation
- Authors: Megan Ma and Bryan Wilson
- Abstract summary: This article attempts to unpack the notion of machine-readability.
It will reflect on logic syntax and symbolic language to assess the capacity and limits of representing legal knowledge.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-sa/4.0/
- Abstract: Legal interpretation is a linguistic venture. In judicial opinions, for
example, courts are often asked to interpret the text of statutes and
legislation. As time has shown, this is not always as easy as it sounds.
Matters can hinge on vague or inconsistent language and, under the surface,
human biases can impact the decision-making of judges. This raises an important
question: what if there was a method of extracting the meaning of statutes
consistently? That is, what if it were possible to use machines to encode
legislation in a mathematically precise form that would permit clearer
responses to legal questions? This article attempts to unpack the notion of
machine-readability, providing an overview of both its historical and recent
developments. The paper will reflect on logic syntax and symbolic language to
assess the capacity and limits of representing legal knowledge. In doing so,
the paper seeks to move beyond existing literature to discuss the implications
of various approaches to machine-readable legislation. Importantly, this study
hopes to highlight the challenges encountered in this burgeoning ecosystem of
machine-readable legislation against existing human-readable counterparts.
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