Skip to content

Latest commit

 

History

History
19 lines (13 loc) · 1.1 KB

README.md

File metadata and controls

19 lines (13 loc) · 1.1 KB

Legal Case Outcome Prediction with RoBERTa

This repository contains code for a classifier built using the RoBERTa model from Hugging Face's transformers library. The classifier is used to predict the outcomes of legal cases.

Dataset

The data for this project consists of legal cases, with each case having the following attributes:

  • ID: A unique identifier for each case.
  • first_party: The first party involved in the legal case.
  • second_party: The second party involved in the legal case.
  • facts: A summary of the facts of the legal case.
  • first_party_winner: A binary attribute indicating whether the first party won the case (1 indicates a win, 0 indicates a loss). This is the target attribute that the model will predict.

Here's an example of the data:

ID first_party second_party facts first_party_winner
TRAIN_0000 Phil A. St. Amant Herman A. Thompson "On June 27, 1962, Phil St. Amant... 1