基于概率图的文本数据语义信息提取

Zhouxiang Zhao, Zhaohui Yang, Ye Hu, Licheng Lin, Zhaoyang Zhang
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引用次数: 0

摘要

本文研究了资源受限文本数据传输中的语义信息提取问题。在考虑的模型中,需要在通信资源受限的网络中传输一系列文本数据,该网络只允许有限的数据传输。因此,在发送端,使用自然语言处理技术提取原始文本数据。然后,将提取的语义信息捕获到知识图中。在此图中引入了一个额外的概率维度,以捕获每个信息的重要性。语义信息提取问题是一个优化框架,其目标是提取最重要的语义信息用于传输。为了找到这一问题的最优解,提出了一种基于Floyd算法的解和一种高效的排序机制。数值结果证明了该算法在语义不确定性和语义相似度两个新的性能指标上的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Semantic Information Extraction for Text Data with Probability Graph
In this paper, the problem of semantic information extraction for resource constrained text data transmission is studied. In the considered model, a sequence of text data need to be transmitted within a communication resource-constrained network, which only allows limited data transmission. Thus, at the transmitter, the original text data is extracted with natural language processing techniques. Then, the extracted semantic information is captured in a knowledge graph. An additional probability dimension is introduced in this graph to capture the importance of each information. This semantic information extraction problem is posed as an optimization framework whose goal is to extract most important semantic information for transmission. To find an optimal solution for this problem, a Floyd’s algorithm based solution coupled with an efficient sorting mechanism is proposed. Numerical results testify the effectiveness of the proposed algorithm with regards to two novel performance metrics including semantic uncertainty and semantic similarity.
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