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Study of an Improved Text Filter Algorithm Based on Trie Tree

机译:基于Trie树的改进文本滤波算法研究

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There are some atypical texts hidden in the Telecom's customer complaint text. These atypical complaints can be divided into several classes. Atypical items have high confidence with intergroup neighbor, but low support in full complaint set. After filtering out the high-frequency items, we can use k-means method to clustering the complaint texts. However, the clustering result is affected by the random choosing of the original K centers and it is not accurate to extract the atypical complaint classes. This paper will propose a genetic algorithm optimized k-means method, and design a fitness function. It helps to choose the global optimum K centers for k-means method, and make the result most accurate. The improved model is more suitable for small memory systems, and it has better performance in security and dynamic adaptation. This improved model has good application value.
机译:电信客户投诉文本中隐藏了一些非典型文本。这些非典型投诉可以分为几个课程。非典型物品对Intergroup邻居的信心很高,但全面投诉的支持低。过滤出高频项目后,我们可以使用K-Means方法来培养投诉文本。但是,聚类结果受原始K中心随机选择的影响,提取非典型投诉类是不准确的。本文将提出一种遗传算法优化的K-均值方法,设计适合度功能。它有助于选择K-means方法的全局最佳K中心,并使结果最准确。改进的模型更适合小型内存系统,它具有更好的安全性和动态自适应性能。这种改进的模型具有良好的应用价值。

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