基于优化k近邻算法的趋势话题预测

S. Syarif, Anwar, Dewiani
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引用次数: 7

摘要

快速和准确的决策目前已成为现代政府的特点,因为信息和通信技术的发展也非常迅速。预测热门话题是支持快速准确决策的一种方法。本研究旨在通过分析数据挖掘中的历史堆栈,协助望加锡市政府预测即将发生的趋势话题。使用的方法是k -最近邻(KNN),其中根据类的隶属距离确定趋势主题的预测。本研究基于与望加锡市政府相关的网络和社交媒体上的新闻和对话,使用393.667个原始数据进行预处理,确定趋势和非趋势对话,产生2007年训练和测试的数据。应用的系统性能分析技术是混淆矩阵,计算准确率、精密度和召回率的百分比。结果表明,使用k -最近邻(KNN)方法可以获得81.13%的准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Trending topic prediction by optimizing K-nearest neighbor algorithm
Quick and accurate decision-making has currently been a modern governmental characteristic, since the development of information and communication technologies also grow very rapidly. One way to support the quick and accurate decision-making is predicting the trending topic. The research aimed at assisting the government of Makassar City to predict the trending topic which would happen by analyzing the historical stack in the data mining. The method used was K-Nearest Neighbor (KNN), in which prediction on the trending topic was determined based on the membership distance of a class. The research was conducted based on the news and conversation taken from the online and social media related to Makassar City Government with 393.667 raw data, in which the preprocessing was then carried out to determine the trending and non-trending conversations, producing 2007 trained and tested data. The system performance analysis technique applied was confusion matrix with calculation of percentages of the accuracy, precision, and recall. The result showed that using K-Nearest Neighbor (KNN), the accuracy of 81,13% is obtained.
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