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An Extensive Review on Data Mining Methods and Clustering Models for Intelligent Transportation System

机译:智能交通系统数据挖掘方法和聚类模型的广泛综述

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摘要

Data mining techniques support numerous applications of intelligent transportation systems (ITSs). This paper critically reviews various data mining techniques for achieving trip planning in ITSs. The literature review starts with the discussion on the contributions of descriptive and predictive mining techniques in ITSs, and later continues on the contributions of the clustering techniques. Being the largely used approach, the use of cluster analysis in ITSs is assessed. However, big data analysis is risky with clustering methods. Thus, evolutionary computational algorithms are used for data mining. Though unsupervised clustering models are widely used, drawbacks such as selection of optimal number of clustering points, defining termination criterion, and lack of objective function also occur. Eventually, various drawbacks of evolutionary computational algorithm are also addressed in this paper.
机译:数据挖掘技术支持智能运输系统(ITS)的许多应用。 本文批判地评出了各种数据挖掘技术,以实现其达到其旅行计划。 文献综述开始讨论其对其中的描述性和预测采矿技术的贡献,后来继续对聚类技术的贡献。 作为主要使用的方法,评估其在ITSS中使用的聚类分析。 但是,大数据分析与聚类方法有风险。 因此,进化计算算法用于数据挖掘。 尽管无监督的聚类模型被广泛使用,但是也会出现缺点,例如选择最佳聚类点数,定义终止标准以及缺乏客观函数的选择。 最终,本文还解决了进化计算算法的各种缺点。

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