SE-stacking: Improving user purchase behavior prediction by information fusion and ensemble learning.

Online shopping behavior has the characteristics of rich granularity dimension and data sparsity and presents a challenging task in e-commerce. Previous studies on user behavior prediction did not seriously discuss feature selection and ensemble design, which are important to improving the performan...

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Main Authors: Jing Xu, Jie Wang, Ye Tian, Jiangpeng Yan, Xiu Li, Xin Gao
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2020-01-01
Series:PLoS ONE
Online Access:https://doi.org/10.1371/journal.pone.0242629
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spelling doaj-906630e05d644098b6ebf34a3799e3602021-03-04T12:27:56ZengPublic Library of Science (PLoS)PLoS ONE1932-62032020-01-011511e024262910.1371/journal.pone.0242629SE-stacking: Improving user purchase behavior prediction by information fusion and ensemble learning.Jing XuJie WangYe TianJiangpeng YanXiu LiXin GaoOnline shopping behavior has the characteristics of rich granularity dimension and data sparsity and presents a challenging task in e-commerce. Previous studies on user behavior prediction did not seriously discuss feature selection and ensemble design, which are important to improving the performance of machine learning algorithms. In this paper, we proposed an SE-stacking model based on information fusion and ensemble learning for user purchase behavior prediction. After successfully using the ensemble feature selection method to screen purchase-related factors, we used the stacking algorithm for user purchase behavior prediction. In our efforts to avoid the deviation of the prediction results, we optimized the model by selecting ten different types of models as base learners and modifying the relevant parameters specifically for them. Experiments conducted on a publicly available dataset show that the SE-stacking model can achieve a 98.40% F1 score, approximately 0.09% higher than the optimal base models. The SE-stacking model not only has a good application in the prediction of user purchase behavior but also has practical value when combined with the actual e-commerce scene. At the same time, this model has important significance in academic research and the development of this field.https://doi.org/10.1371/journal.pone.0242629
collection DOAJ
language English
format Article
sources DOAJ
author Jing Xu
Jie Wang
Ye Tian
Jiangpeng Yan
Xiu Li
Xin Gao
spellingShingle Jing Xu
Jie Wang
Ye Tian
Jiangpeng Yan
Xiu Li
Xin Gao
SE-stacking: Improving user purchase behavior prediction by information fusion and ensemble learning.
PLoS ONE
author_facet Jing Xu
Jie Wang
Ye Tian
Jiangpeng Yan
Xiu Li
Xin Gao
author_sort Jing Xu
title SE-stacking: Improving user purchase behavior prediction by information fusion and ensemble learning.
title_short SE-stacking: Improving user purchase behavior prediction by information fusion and ensemble learning.
title_full SE-stacking: Improving user purchase behavior prediction by information fusion and ensemble learning.
title_fullStr SE-stacking: Improving user purchase behavior prediction by information fusion and ensemble learning.
title_full_unstemmed SE-stacking: Improving user purchase behavior prediction by information fusion and ensemble learning.
title_sort se-stacking: improving user purchase behavior prediction by information fusion and ensemble learning.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2020-01-01
description Online shopping behavior has the characteristics of rich granularity dimension and data sparsity and presents a challenging task in e-commerce. Previous studies on user behavior prediction did not seriously discuss feature selection and ensemble design, which are important to improving the performance of machine learning algorithms. In this paper, we proposed an SE-stacking model based on information fusion and ensemble learning for user purchase behavior prediction. After successfully using the ensemble feature selection method to screen purchase-related factors, we used the stacking algorithm for user purchase behavior prediction. In our efforts to avoid the deviation of the prediction results, we optimized the model by selecting ten different types of models as base learners and modifying the relevant parameters specifically for them. Experiments conducted on a publicly available dataset show that the SE-stacking model can achieve a 98.40% F1 score, approximately 0.09% higher than the optimal base models. The SE-stacking model not only has a good application in the prediction of user purchase behavior but also has practical value when combined with the actual e-commerce scene. At the same time, this model has important significance in academic research and the development of this field.
url https://doi.org/10.1371/journal.pone.0242629
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AT jiangpengyan sestackingimprovinguserpurchasebehaviorpredictionbyinformationfusionandensemblelearning
AT xiuli sestackingimprovinguserpurchasebehaviorpredictionbyinformationfusionandensemblelearning
AT xingao sestackingimprovinguserpurchasebehaviorpredictionbyinformationfusionandensemblelearning
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