Algorithmic Learning Foundations for Common Law

Autor: Hartline, Jason D., Linna Jr., Daniel W., Shan, Liren, Tang, Alex
Rok vydání: 2022
Předmět:
Druh dokumentu: Working Paper
Popis: This paper looks at a common law legal system as a learning algorithm, models specific features of legal proceedings, and asks whether this system learns efficiently. A particular feature of our model is explicitly viewing various aspects of court proceedings as learning algorithms. This viewpoint enables directly pointing out that when the costs of going to court are not commensurate with the benefits of going to court, there is a failure of learning and inaccurate outcomes will persist in cases that settle. Specifically, cases are brought to court at an insufficient rate. On the other hand, when individuals can be compelled or incentivized to bring their cases to court, the system can learn and inaccuracy vanishes over time.
Databáze: arXiv