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Weakly Supervised One-Shot Classification Using Recurrent Neural Networks with Attention: Application to Claim Acceptance Detection

机译:使用经常性神经网络的弱次级监督一次性分类:应用要求验收检测

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Determining if a claim is accepted given judge arguments is an important non-trivial task in court decisions analyses. Application of recent efficient machine learning techniques may however be inappropriate for tackling this problem since, in the Legal domain, labelled datasets are most often small, scarce and expensive. This paper presents a deep learning model and a methodology for solving such complex classification tasks with only few labelled examples. We show in particular that mixing one-shot learning with recurrent neural networks and an attention mechanism enables obtaining efficient models while preserving some form of inter-pretability and limiting potential overfit. Results obtained on several types of claims in French court decisions, using different vectorization processes, are presented.
机译:确定是否接受索赔,判决法官论证是法院决策中的一个重要的非琐碎任务。然而,近期有效的机器学习技术的应用可能是不适合解决这个问题,因为在法律领域,标记的数据集通常很小,稀缺和昂贵。本文介绍了深度学习模型和用于解决这些复杂分类任务的方法,只有少数标记的例子。我们特别展示了与经常性神经网络和注意机制混合一次性学习,使得能够获得有效的模型,同时保留某种形式的可预测性和限制潜在的过度装备。提出了使用不同的矢量化进程的法国法院决定中若干类型的索赔获得的结果。

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