Analyzing Accuracy of Road Accident Dataset based on Fatality Rate

M. Ramalingam, P. Yogavelu, S. Yamuna, M. Siddarth
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引用次数: 1

Abstract

Street mishaps are most likely the most important reason influencing unexpected interaction of people and monetary resulting in property exploitation. Street well-being is associated with the preparation and execution of certain techniques to combat street and vehicle collisions. Examining street mishap data is an important way to separate several variables associated with street mishaps that contribute to lowering the mishap rate. The collection of street mishap data is a significant challenge in street safety study. On another street mishap data, this research study uses latent class clustering (LCC) and the k-modes grouping approach in our assessment. The goal of employing both strategies is to determine which strategy works better. The standards created for each cluster will not demonstrate any group examination method better. Nonetheless, it is sure that the two strategies are appropriate to eliminate heterogeneity of street mishap information. This research study uses LCC, k-means clustering procedure in processing the street mishap information and shape various groups. Further, Frequent Pattern (FP) development procedure is applied on the clusters shaped and entire data processing system (EDS). The standards created in groups and EDS demonstrates that the diversity exist in whole informational index and clustering before investigation, which unquestionably lessens heterogeneity from the informational collection and gives better arrangements.
基于死亡率的道路交通事故数据集精度分析
街头事故最有可能是最重要的原因,影响意外的人与货币的互动,导致财产剥削。街道健康与某些技术的准备和执行有关,以对抗街道和车辆碰撞。检查街道事故数据是分离与有助于降低事故率的街道事故相关的几个变量的重要方法。道路事故数据的收集是道路安全研究中的一个重大挑战。对于另一个街头事故数据,本研究在我们的评估中使用了潜在类聚类(LCC)和k模式分组方法。采用这两种策略的目的是确定哪种策略效果更好。为每个分组创建的标准不会更好地演示任何分组考试方法。然而,可以肯定的是,这两种策略都适合于消除街道事故信息的异质性。本研究采用LCC、k-means聚类方法对街道事故信息进行处理,形成不同的群体。在此基础上,将频繁模式(FP)开发过程应用于集群成形和整个数据处理系统(EDS)。在分组和EDS中创建的标准表明,在调查之前,整个信息指标和聚类都存在多样性,这无疑减少了信息收集的异质性,并给出了更好的安排。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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