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A Data Imputation Method with Support Vector Machines for Activity-Based Transportation Models

机译:基于活动的运输模型的支持向量机数据插补方法

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摘要

In this paper, a data imputation method with a Support Vector Machine (SVM) is proposed to solve the issue of missing data in activity-based diaries. Here two SVM models are established to predict the missing elements of 'number of cars' and 'driver license'. The inputs of the former SVM model include five variables (Household composition, household income, Age oldest household member, Children age class and Number of household members). The inputs of the latter SVM model include three variables (personal age, work status and gender). The SVM models to predict the 'number of cars' and "driver license' can achieve accuracies of 69% and 83% respectively. The initial experimental results show that missing elements of observed activity diaries can be accurately inferred by relating different pieces of information. Therefore, the proposed SVM data imputation method serves as an effective data imputation method in the case of missing information.
机译:本文提出了一种基于支持向量机(SVM)的数据插补方法,以解决基于活动的日记中数据丢失的问题。在这里,建立了两个支持向量机模型来预测“汽车数量”和“驾驶执照”缺失的元素。以前的SVM模型的输入包括五个变量(家庭组成,家庭收入,年龄最大的家庭成员,儿童年龄段和家庭成员数量)。后一个SVM模型的输入包括三个变量(个人年龄,工作状态和性别)。支持向量机模型预测的“汽车数量”和“驾驶执照”可分别达到69%和83%的准确性,初步的实验结果表明,通过关联不同的信息,可以准确地推断出观察到的活动日志的缺失元素。因此,在缺少信息的情况下,所提出的SVM数据插补方法可以用作有效的数据插补方法。

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