Enhancing Classification of Ecological Momentary Assessment Data Using Bagging and Boosting

Gerasimos Spanakis, Gerhard Weiss, A. Roefs
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引用次数: 5

Abstract

Ecological Momentary Assessment (EMA) techniques gain more ground in studies and data collection among different disciplines. Decision tree algorithms and their ensemble variants are widely used for classifying this type of data, since they are easy to use and provide satisfactory results. However, most of these algorithms do not take into account the multiple levels (per-subject, per-day, etc.) in which EMA data are organized. In this paper we explore how the EMA data organization can be taken into account when dealing with decision trees and specifically how a combination of bagging and boosting can be utilized in a classification task. A new algorithm called BBT (standing for Bagged Boosted Trees) is proposed which is enhanced by an over/under sampling method leading to better estimates of the conditional class probability function. BBT's necessity and effects are demonstrated using both simulated datasets and real-world EMA data collected using a mobile application following the eating behavior of 100 people. Experimental analysis shows that BBT leads to clear improvements with respect to prediction error reduction and conditional class probability estimation.
利用套袋法和Boosting法加强生态瞬时评价数据的分类
生态瞬时评估(EMA)技术在不同学科的研究和数据收集中获得了越来越多的基础。决策树算法及其集成变体被广泛用于对这类数据进行分类,因为它们易于使用并提供令人满意的结果。然而,这些算法中的大多数都没有考虑到组织EMA数据的多个级别(每个受试者,每天等)。在本文中,我们探讨了在处理决策树时如何考虑EMA数据组织,特别是如何在分类任务中利用bagging和boosting的组合。提出了一种名为BBT (Bagged boosting Trees)的新算法,该算法通过过采样/欠采样方法进行增强,从而更好地估计条件类概率函数。使用模拟数据集和使用移动应用程序收集的真实EMA数据来演示BBT的必要性和效果,这些数据收集了100人的饮食行为。实验分析表明,BBT在预测误差减少和条件类概率估计方面有明显的改进。
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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