Abstract
In this paper, to provide the theoretical reference for semantic sensing performance, the stochastic geometry tool is used to make the quantitative coverage performance analysis of the semantic keywords. This method can help understand semantic network performance from the macroscopic view rather than the connection-oriented perspective. Firstly, through the semantic mapping operation, the context space is transformed into the semantic space in the semantic sensing process. Secondly, given the text data with different statement styles, e.g., literary and scientific texts, two typical semantic reflection models are established with the help of stochastic geometry theory, where the keyword coverage expressions are derived. Thirdly, under various parameter settings, the correctness and effectiveness of the proposed models have been evaluated through the simulation results and analysis.
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