DeepKAF: A Heterogeneous CBR & Deep Learning Approach for NLP Prototyping

Kareem Amin, S. Kapetanakis, Nikolaos Polatidis, K. Althoff, A. Dengel
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引用次数: 4

Abstract

With widespread modernization, digitization and transformations of most of industries, Artificial Intelligence (AI) has become the key enabler in that modernization journey. AI offers substantial capabilities to solve new problems and optimise existing solutions specialising on specific problems and learning from different domains. AI solutions can be either explainable or black box ones with the latter being urged to improve since they cannot trust. Case-based Reasoning (CBR) is an explainable AI approach where solutions are provided along with relevant explanations in terms of why a solution was selected. However, CBR, like most other explainable approaches, has several limitations in terms of scalability, large data volumes, domain complexity, that reduce its ability to scale any CBR system in industrial applications. In this paper, we provide a heterogeneous CBR framework - DeepKAF where we combine CBR paradigm with Deep Learning architectures to solve complicated Natural Language Processing (NLP) problems (eg. mixed language and grammatically incorrect text).DeepKAF is built based on continuous research in the area of Deep Learning and CBR. DeepKAF has been implemented and used across different domains, test use cases and research models as an ensemble deep learning and CBR Architecture.
DeepKAF:用于NLP原型的异构CBR和深度学习方法
随着大多数行业的广泛现代化、数字化和转型,人工智能(AI)已成为现代化之旅的关键推动者。人工智能提供了大量的能力来解决新问题,优化现有的解决方案,专注于特定的问题,并从不同的领域学习。人工智能的解决方案可以是可解释的,也可以是黑盒的,后者因为无法信任而被敦促改进。基于案例的推理(CBR)是一种可解释的人工智能方法,它提供解决方案并根据选择解决方案的原因提供相关解释。然而,与大多数其他可解释的方法一样,CBR在可伸缩性、大数据量和领域复杂性方面有一些限制,这降低了它在工业应用程序中扩展任何CBR系统的能力。在本文中,我们提供了一个异构CBR框架——DeepKAF,我们将CBR范式与深度学习架构相结合,以解决复杂的自然语言处理(NLP)问题(例如:混合语言和语法错误的文本)。DeepKAF是基于深度学习和CBR领域的持续研究而建立的。DeepKAF作为一个集成的深度学习和CBR架构,已经在不同的领域、测试用例和研究模型中实现和使用。
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