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Relevance and Importance in Deep Learning for Open Source Data Processing to Enhance Context

机译:深度学习的相关性和重要性,用于增强上下文的开源数据处理

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Using information quality attributes to characterize and measure the information quality is necessary to ensure the successful soft and hard data fusion outcome, especially when fusing data of often poor quality such as most of open source data. This paper presents a set of deep learning natural language processing methods for extracting information from open source data which incorporates the information quality attributes, relevance and importance, in a soft and hard information fusion system for decision support so as to enhance context of open source data. The methods are applied and evaluated in the context of maritime situation understanding.
机译:使用信息质量属性来表征和测量信息质量是必要的,以确保成功的软和硬数据融合结果,特别是当融合诸如大多数开源数据的质量差的数据时。本文介绍了一组深度学习自然语言处理方法,用于从开源数据中提取信息,该信息包含信息质量属性,相关性和重要性,在软件融合系统中,用于决策支持,以增强开源数据的背景。在海上情况理解的背景下应用和评估该方法。

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