Document Classification and Information Extraction framework for Insurance Applications

Ananth Raj GV, Qian You, Dan Dickinson, Eric Bunch, G. Fung
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引用次数: 1

Abstract

Document Intelligence is an essential subclass in the field of machine learning. It plays a vital role in insurance applications and other sectors. In this work, we showcase a business application that uses two different but Complimentary techniques: document classification and entity extraction. We also provide an overview of an end-to-end production level system that incorporates deep learning models deployed at scale. The system’s backbone relies on trained models carefully analyzed and designed to generalize well on existing and future usecases. Through empirical evidence, we provide insights into several models trained on our insurance-related datasets and highlight models that have shown good performance across multiple datasets in our real-world insurance setting.
保险应用的文档分类和信息提取框架
文档智能是机器学习领域的一个重要子类。它在保险申请和其他领域发挥着至关重要的作用。在本文中,我们展示了一个业务应用程序,它使用了两种不同但互补的技术:文档分类和实体提取。我们还提供了端到端生产级系统的概述,该系统包含大规模部署的深度学习模型。系统的骨干依赖于经过仔细分析和设计的训练模型,以很好地概括现有和未来的用例。通过经验证据,我们提供了对在保险相关数据集上训练的几个模型的见解,并突出了在现实世界的保险设置中在多个数据集上表现良好的模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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