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A New Approach of Time Series Variation Based on Power Links and Field Association Words

机译:基于电力链路和现场关联词的时间序列变化的新方法

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This paper has proposed a new methodology extracting stability classes of field association words depending on automatically power link analysis to enhance the precision of decision tree. In this paper, we have studied the effects of the time variation based on the frequencies of specific words called field association words that connected to documents using power link in a specific period. The stability classes have referred to the popularity of field association words based on the change of time in a given period. The new approach has evaluated by conducting experiments simulating results of 1575 files (about 5.16 MB). Based on these experiments, it has turned out that, the F-measure for ascending, stable and descending classes have achieved 93.6%, 99.8% and 75.7%, respectively. These results mean that F-measure was increasing by 12%, 4% and 34% than traditional methods because of the power link analysis.
机译:本文提出了一种新方法,提取了现场关联词的稳定性类别,具体取决于自动电力链路分析,提升决策树的精度。在本文中,我们研究了基于特定时段中的电源链路连接到文档的特定单词的特定单词频率的时间变化的影响。基于给定期间的时间的变化,稳定性类别提到了现场关联词的普及。新方法通过进行了实验,模拟了1575个文件的结果(约5.16 MB)。基于这些实验,证明,上升,稳定和下降课程的F措施分别取得了93.6%,99.8%和75.7%。这些结果意味着由于电力链路分析,F措施比传统方法增加12%,4%和34%。

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