Learning to Predict Charges for Criminal Cases with Legal Basis
About
The charge prediction task is to determine appropriate charges for a given case, which is helpful for legal assistant systems where the user input is fact description. We argue that relevant law articles play an important role in this task, and therefore propose an attention-based neural network method to jointly model the charge prediction task and the relevant article extraction task in a unified framework. The experimental results show that, besides providing legal basis, the relevant articles can also clearly improve the charge prediction results, and our full model can effectively predict appropriate charges for cases with different expression styles.
Bingfeng Luo, Yansong Feng, Jianbo Xu, Xiang Zhang, Dongyan Zhao• 2017
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Binary violation prediction | ECHR Non-Anonymized (test) | Macro Precision0.882 | 7 | |
| Binary violation prediction | ECHR anonymized (test) | Macro Precision85.2 | 5 | |
| Multi-label violation prediction | ECHR all labels (test) | Precision65 | 5 | |
| Multi-label violation prediction | ECHR frequent labels, >=50 instances (test) | Precision65.1 | 5 | |
| Case Importance Prediction | ECHR | MAE0.524 | 5 | |
| Multi-label violation prediction | ECHR few labels, [1,50) instances (test) | Precision24.9 | 4 |
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