A Robust Prediction Method for Interval Symbolic Data

Roberta Fagundes, R. Souza, F. Cysneiros
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引用次数: 2

Abstract

This paper introduces a robust prediction method for symbolic interval data based on the simple linear regression methodology. Each example of the data set is described by feature vector, for which each feature is an interval. Two classic robust regression models are fitted, respectively for range and mid-points of the interval values assumed by the variables in the data set. The prediction of the lower and upper bounds of the new intervals is performed from these fits. To validate this model, experiments with a synthetic interval data set and an application with a cardiology interval-valued data set are considered. The fit and prediction qualities are assessed by a pooled root mean square error measure calculated from learning and test data sets, respectively.
区间符号数据的鲁棒预测方法
本文介绍了一种基于简单线性回归方法的符号区间数据鲁棒预测方法。数据集的每个样本用特征向量来描述,每个特征是一个区间。拟合了两个经典的鲁棒回归模型,分别对数据集中变量假设的区间值的极差和中点进行拟合。根据这些拟合来预测新区间的下界和上界。为了验证该模型,考虑了合成区间数据集的实验和心脏病学区间值数据集的应用。拟合和预测质量分别通过从学习和测试数据集计算的混合均方根误差测量来评估。
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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