基于空间决策树的交通事故数据空间自相关分析

Bimal Ghimire, Shrutilipi Bhattacharjee, S. Ghosh
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引用次数: 6

摘要

近几十年来,随着地理数据集的范围、覆盖范围和数量的迅速增加,空间数据的知识发现引起了人们的广泛关注。传统的分析技术不能很容易地发现隐藏在地理数据集中的新的、隐含的模式和关系。这项工作的原理是评估传统和空间数据挖掘技术在分析空间确定性(如空间自相关)方面的性能。分析采用分类技术,即基于空间多样性系数的决策树(DT)方法。使用ID3(迭代二分法3)算法构建常规决策树和空间决策树。本文采用综合生成的空间事故数据集和真实事故数据集。空间DT (SDT)在空间决策中更为显著。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis of Spatial Autocorrelation for Traffic Accident Data Based on Spatial Decision Tree
With rapid increase of scope, coverage and volume of geographic datasets, knowledge discovery from spatial data have drawn a lot of research interest for last few decades. Traditional analytical techniques cannot easily discover new, implicit patterns, and relationships that are hidden into geographic datasets. The principle of this work is to evaluate the performance of traditional and spatial data mining techniques for analysing spatial certainty, such as spatial autocorrelation. Analysis is done by classification technique, i.e. a Decision Tree (DT) based approach on a spatial diversity coefficient. ID3 (Iterative Dichotomiser 3) algorithm is used for building the conventional and spatial decision trees. A synthetically generated spatial accident dataset and real accident dataset are used for this purpose. The spatial DT (SDT) is found to be more significant in spatial decision making.
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