Legal Judgment Prediction (LJP) is a key problem in legal artificial intelligence, which is aimed to predict a law case's judgment based on a given text describing the facts of the law case. Most of the previous work treats LJP as a text classification task and generally adopts deep neural networks (DNNs) based methods to solve it. However, existing DNNs based work is data-hungry and hard to explain which legal knowledge is based on to make such a prediction. Thus, injecting legal knowledge into neural networks to interpret the model and improve performance remains a significant problem. In this paper, we propose to represent declarative legal knowledge as a set of first-order logic rules and integrate these logic rules into a co-attention ...
This paper examines the use of connectionism (neural networks) in modelling legal reasoning. I discu...
Sentencing prediction is an important direction of artificial intelligence applied to the judicial f...
Abstract. This paper describes an experiment which consists in teaching a connexionnist model a lega...
Legal judgment prediction (LJP) is used to predict judgment results based on the description of indi...
Legal judgment prediction is the task of automatically predicting the outcome of a court case, given...
Abtract With the development of pretrained language models, the legal domain has seen a recent surge...
Legal judgment prediction (LJP), as an effective and critical application in legal assistant systems...
Legal judgment prediction is the task of automatically predicting the outcome of a court case, given...
This paper argues that neural networks are an appropriate artificial intelligence technique for lega...
In common law legal systems, judges decide issues between parties (legal decision or case law) by re...
This paper examines the use of connectionism (neural networks) in modelling legal reasoning. I discu...
This paper examines the use of connectionism (neural networks) in modelling legal reasoning. I discu...
This thesis argues that Artificial Neural Networks (ANN\u27s) have applications within the domain of...
This paper examines the use of connectionism (neural networks) in modelling legal reasoning. I discu...
This paper examines the use of connectionism (neural networks) in modelling legal reasoning. I discu...
This paper examines the use of connectionism (neural networks) in modelling legal reasoning. I discu...
Sentencing prediction is an important direction of artificial intelligence applied to the judicial f...
Abstract. This paper describes an experiment which consists in teaching a connexionnist model a lega...
Legal judgment prediction (LJP) is used to predict judgment results based on the description of indi...
Legal judgment prediction is the task of automatically predicting the outcome of a court case, given...
Abtract With the development of pretrained language models, the legal domain has seen a recent surge...
Legal judgment prediction (LJP), as an effective and critical application in legal assistant systems...
Legal judgment prediction is the task of automatically predicting the outcome of a court case, given...
This paper argues that neural networks are an appropriate artificial intelligence technique for lega...
In common law legal systems, judges decide issues between parties (legal decision or case law) by re...
This paper examines the use of connectionism (neural networks) in modelling legal reasoning. I discu...
This paper examines the use of connectionism (neural networks) in modelling legal reasoning. I discu...
This thesis argues that Artificial Neural Networks (ANN\u27s) have applications within the domain of...
This paper examines the use of connectionism (neural networks) in modelling legal reasoning. I discu...
This paper examines the use of connectionism (neural networks) in modelling legal reasoning. I discu...
This paper examines the use of connectionism (neural networks) in modelling legal reasoning. I discu...
Sentencing prediction is an important direction of artificial intelligence applied to the judicial f...
Abstract. This paper describes an experiment which consists in teaching a connexionnist model a lega...