Knowledge-enhanced neural machine reasoning has garnered significant attention as a cutting-edge yet challenging research area with numerous practical applications. Over the past few years, plenty of studies have leveraged various forms of external knowledge to augment the reasoning capabilities of deep models, tackling challenges such as effective knowledge integration, implicit knowledge mining, and problems of tractability and optimization. However, there is a dearth of a comprehensive technical review of the existing knowledge-enhanced reasoning techniques across the diverse range of application domains. This survey provides an in-depth examination of recent advancements in the field, introducing a novel taxonomy that categorizes existing knowledge-enhanced methods into two primary categories and four subcategories. We systematically discuss these methods and highlight their correlations, strengths, and limitations. Finally, we elucidate the current application domains and provide insight into promising prospects for future research.
翻译:过去几年来,大量研究利用了各种形式的外部知识来增强深层模型的推理能力,应对了诸如有效知识整合、隐性知识挖掘、以及可移植性和优化问题等挑战。然而,缺乏对各种应用领域现有知识强化推理技术的全面技术审查。这项调查深入研究了该领域的最新进展,引入了将现有知识强化方法分为两大类和四个亚类的新颖分类学。我们系统地讨论了这些方法,突出了它们的相关性、长处和局限性。最后,我们阐述了目前的应用领域,并深入了解了未来研究的前景。