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A Hotspot Discovery Method Based on Improved FIHC Clustering Algorithm

机译:一种基于改进FIHC聚类算法的热点发现方法

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It was difficult to find the microblog hotspot because the characteristics of microblog were short, rapid, change and so on. A microblog hotspot detection method based on MFIHC and TOPSIS was proposed in order to solve the problem. Firstly, the calculation of HowNet similarity was used in the score function of FIHC, the semantic links between frequent words were considered, and the initial clusters based on frequent words were produced more accurately. Then the initial cluster of the text repletion of mircoblog was reduced, and the idea of Single-Pass clustering was used to the reduced topic cluster in order to get the Hotspot. At last, an improved TOPSIS model was used to sort the hot topics in order to get the rank of the hot topics. Compared with the other text clustering algorithms and hotspot detection methods, the method has good effect, and can be a more comprehensive response to the current hot topics.
机译:很难找到微博热点,因为微博的特点是短暂的,快速,变化等等。 提出了一种基于MFIHC和TOPSIS的MicroBlog热点检测方法,以解决问题。 首先,在FIHC的分数函数中使用了HONDET相似性的计算,考虑了频繁单词之间的语义链路,并且更准确地制造了基于频繁单词的初始集群。 然后减少了MircoBlog的文本补充的初始群集,并且使用单通群集的想法用于减少主题集群以获取热点。 最后,使用改进的TopSis模型来对热门话题进行排序,以获得热门话题的等级。 与其他文本聚类算法和热点检测方法相比,该方法具有良好的效果,并且可以更全面的热门话题响应。

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