ArXiv TLDR

Can Causal Discovery Algorithms Help in Generating Legal Arguments?

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2605.02318

Soham Wasmatkar, Subinay Adhikary, Rakshit Rohan, Shouvik Kumar Guha, Saptarshi Pyne + 1 more

cs.AIcs.CEcs.LGstat.ML

TLDR

This paper explores using causal discovery algorithms to generate legal arguments from a novel dataset of annotated legal case data.

Key contributions

  • Investigates applying causal discovery algorithms (CDAs) to law for automated legal argument generation.
  • Developed a novel dataset of 150 homicide cases annotated with 17 specific legal concepts.
  • Applied CDAs to this dataset to discover causal relationships between the identified legal concepts.
  • Demonstrates that discovered causal relationships can generate viable legal arguments with quantified probabilities.

Why it matters

This paper introduces a novel application of causal discovery algorithms to the legal domain, a field previously unexplored by these methods. By demonstrating their utility in generating legal arguments, it opens new avenues for AI-driven legal reasoning and decision support. This could significantly enhance efficiency and consistency in legal practice.

Original Abstract

In 2011, Judea Pearl received the Turing Award, considered the Nobel Prize in Computing, for fundamental contributions to artificial intelligence through the development of a calculus for probabilistic and causal reasoning. It includes pioneering the development of causal discovery algorithms. These computer algorithms can analyze large multivariate datasets and automatically discover the causal relationships among the constituent variables. They have been widely used in many critical fields such as medicine and economics to support decisions. However, to our knowledge, they have not been leveraged in law. This paper attempts to alleviate this gap by investigating whether causal discovery algorithms can be leveraged for automated generation of legal arguments. To that end, a novel legal dataset is prepared by identifying 17 legal concepts, such as physical assault and property dispute. A curated collection of 150 homicide cases are annotated with these concepts, e.g., a case is annotated with physical assault only if a physical assault had been reported in that case. Subsequently, a selected set of widely-used causal discovery algorithms is applied to the annotated dataset to discover the causal relationships between the legal concepts. Additionally, the degrees of belief associated with the discovered relationships are quantified in mathematical probabilities. It is shown that some of the causal relationships help generate viable legal arguments, e.g., if one could establish that a physical assault has not taken place during a homicide, it should be a sufficient condition (with probability 1) to establish that the homicide has not been committed due to a property-related dispute. Thus, this paper shows that causal discovery algorithms can be helpful in generating legal arguments, opening up avenues for promising future endeavors.

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