AndreaSimeri commited on
Commit
7e0569f
•
1 Parent(s): 67f66e2

Update README.md

Browse files
Files changed (1) hide show
  1. README.md +6 -7
README.md CHANGED
@@ -1,14 +1,16 @@
1
  ---
2
  license: cc-by-nc-nd-4.0
3
- ---
4
-
5
  tags:
6
- - deep_learning
7
  - law_article_retrieval
8
  - natural_language_processing
9
  - BERT
10
  - Italian_civil_code
11
  - information retrieval
 
 
 
 
12
 
13
  ### LamBERTa: A Deep Learning Framework for Law Article Retrieval
14
 
@@ -27,10 +29,7 @@ tags:
27
  Tagarelli, A., Simeri, A. Unsupervised law article mining based on deep pre-trained language representation models with application to the Italian civil code. Artif Intell Law 30, 417–473 (2022). https://doi.org/10.1007/s10506-021-09301-8
28
  ```
29
 
30
- ### Abstract
31
- Modeling law search and retrieval as prediction problems has recently emerged as a predominant approach in law intelligence. Focusing on the law article retrieval task, we present a deep learning framework named LamBERTa, which is designed for civil-law codes, and specifically trained on the Italian civil code. To our knowledge, this is the first study proposing an advanced approach to law article prediction for the Italian legal system based on a BERT (Bidirectional Encoder Representations from Transformers) learning framework, which has recently attracted increased attention among deep learning approaches, showing outstanding effectiveness in several natural language processing and learning tasks. We define LamBERTa models by fine-tuning an Italian pre-trained BERT on the Italian civil code or its portions, for law article retrieval as a classification task. One key aspect of our LamBERTa framework is that we conceived it to address an extreme classification scenario, which is characterized by a high number of classes, the few-shot learning problem, and the lack of test query benchmarks for Italian legal prediction tasks. To solve such issues, we define different methods for the unsupervised labeling of the law articles, which can in principle be applied to any law article code system. We provide insights into the explainability and interpretability of our LamBERTa models, and we present an extensive experimental analysis over query sets of different type, for single-label as well as multi-label evaluation tasks. Empirical evidence has shown the effectiveness of LamBERTa, and also its superiority against widely used deep-learning text classifiers and a few-shot learner conceived for an attribute-aware prediction task.
32
-
33
  ### References
34
  - Tagarelli, A., Simeri, A. Unsupervised law article mining based on deep pre-trained language representation models with application to the Italian civil code. Artif Intell Law 30, 417–473 (2022). https://doi.org/10.1007/s10506-021-09301-8
35
 
36
- ---
 
1
  ---
2
  license: cc-by-nc-nd-4.0
 
 
3
  tags:
4
+ - deep learning
5
  - law_article_retrieval
6
  - natural_language_processing
7
  - BERT
8
  - Italian_civil_code
9
  - information retrieval
10
+ ---
11
+
12
+ ### Abstract
13
+ Modeling law search and retrieval as prediction problems has recently emerged as a predominant approach in law intelligence. Focusing on the law article retrieval task, we present a deep learning framework named LamBERTa, which is designed for civil-law codes, and specifically trained on the Italian civil code. To our knowledge, this is the first study proposing an advanced approach to law article prediction for the Italian legal system based on a BERT (Bidirectional Encoder Representations from Transformers) learning framework, which has recently attracted increased attention among deep learning approaches, showing outstanding effectiveness in several natural language processing and learning tasks. We define LamBERTa models by fine-tuning an Italian pre-trained BERT on the Italian civil code or its portions, for law article retrieval as a classification task. One key aspect of our LamBERTa framework is that we conceived it to address an extreme classification scenario, which is characterized by a high number of classes, the few-shot learning problem, and the lack of test query benchmarks for Italian legal prediction tasks. To solve such issues, we define different methods for the unsupervised labeling of the law articles, which can in principle be applied to any law article code system. We provide insights into the explainability and interpretability of our LamBERTa models, and we present an extensive experimental analysis over query sets of different type, for single-label as well as multi-label evaluation tasks. Empirical evidence has shown the effectiveness of LamBERTa, and also its superiority against widely used deep-learning text classifiers and a few-shot learner conceived for an attribute-aware prediction task.
14
 
15
  ### LamBERTa: A Deep Learning Framework for Law Article Retrieval
16
 
 
29
  Tagarelli, A., Simeri, A. Unsupervised law article mining based on deep pre-trained language representation models with application to the Italian civil code. Artif Intell Law 30, 417–473 (2022). https://doi.org/10.1007/s10506-021-09301-8
30
  ```
31
 
 
 
 
32
  ### References
33
  - Tagarelli, A., Simeri, A. Unsupervised law article mining based on deep pre-trained language representation models with application to the Italian civil code. Artif Intell Law 30, 417–473 (2022). https://doi.org/10.1007/s10506-021-09301-8
34
 
35
+ ---