We present a study of the manners by which Domain information has been incorporated when building models with Neural Networks. Integrating space data is uniquely important to the development of Knowledge understanding model, as well as other fields that aid in understanding information by utilizing the human-machine interface and Reinforcement Learning. On numerous such occasions, machine-based model development may profit essentially from the human information on the world encoded in an adequately exact structure. This paper inspects expansive ways to affect encode such information as sensible and mathematical limitations and portrays methods and results that came to a couple of subcategories under all of those methodologies.
翻译:我们提出了在与神经网络建立模型时将域域信息纳入模型的方式研究,综合空间数据对发展知识理解模型和通过利用人机界面和强化学习帮助了解信息的其他领域特别重要,在很多此类情况下,基于机器的模型开发可能主要从以适当精确的结构编码的世界人类信息中获益,本文件考察了将信息编码为合理和数学限制的广度方法,并描述了所有这些方法下若干子类的方法和结果。