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A Situation Analysis Method for Specific Domain Based on Multi-source Data Fusion

机译:基于多源数据融合的特定域的情况分析方法

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摘要

External Internet data, as a supplement of internal data, plays an important role to decision analysis of decision makers. However, the key point of this process is to solve the problem of inconsistency between multi-source heterogeneous data. In this paper, a situation analysis method based on multisource data fusion is proposed to analyze the situation in a specific domain. The approach consists of three main steps. Firstly, Naive Bayes multi label classification algorithm is used in the process of text topic classification and quantization to overcome the structural inconsistency of multi-source data. Secondly, a time difference correlation analysis method is used to address the time inconsistency the two time series. Finally, Support vector machine regression algorithm (SVR) is used for situation assessment in related fields. In this study, the effectiveness of the model is verified by the free-trade zone (FTZ) platform shares data, Internet news text data, and Internet statistics. The experimental results show that the method has achieved good results in the situation estimation of the related indexes.
机译:作为内部数据的补充,外部互联网数据起决策分析的重要作用。然而,该过程的关键点是解决多源异构数据之间不一致的问题。本文提出了一种基于多源数据融合的情况分析方法,分析了特定领域的情况。该方法包括三个主要步骤。首先,在文本主题分类和量化的过程中使用Naive Bayes Multi标签分类算法,以克服多源数据的结构不一致。其次,使用时间差相关分析方法来解决两个时间序列的时间不一致。最后,支持向量机回归算法(SVR)用于相关领域的情况评估。在这项研究中,通过自由贸易区(FTZ)平台验证了模型的有效性,互联网新闻文本数据和互联网统计数据。实验结果表明,该方法在相关指标的情况估算中取得了良好的效果。

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