Software Engineering Methods For AI-Driven Deductive Legal Reasoning
The recent proliferation of generative artificial intelligence (AI) technologies such as pre-trained large language models (LLMs) has opened up new frontiers in computational law. An exciting area of development is the use of AI to automate the deductive rule-based reasoning inherent in statutory and contract law. This paper argues that such automated deductive legal reasoning can now be viewed from the lens of software engineering, treating LLMs as interpreters of natural-language programs with natural-language inputs. We show how it is possible to apply principled software engineering techniques to enhance AI-driven legal reasoning of complex statutes and to unlock new applications in automated meta-reasoning such as mutation-guided example generation and metamorphic property-based testing.
Thu 24 OctDisplayed time zone: Pacific Time (US & Canada) change
16:00 - 17:40 | |||
16:00 25mTalk | Abstract Debuggers: Exploring Program Behaviors Using Static Analysis Results Onward! Papers Karoliine Holter University of Tartu, Estonia, Juhan Oskar Hennoste University of Tartu, Patrick Lam University of Waterloo, Simmo Saan University of Tartu, Estonia, Vesal Vojdani University of Tartu DOI | ||
16:30 25mTalk | Scimitar: Functional Programs as Optimization Problems Onward! Papers DOI | ||
17:00 25mTalk | Software Engineering Methods For AI-Driven Deductive Legal Reasoning Onward! Papers Rohan Padhye Carnegie Mellon University DOI Pre-print |