Title
Machine Learning Based Prediction and Prevention of Malicious Inventory Occupied Orders
Abstract
AbstractMIOOs are orders created temporarily for the purpose of occupying the inventories of sellers. MIOOs disrupt normal business activities and harm both sellers and consumers. This study aims to determine the best practice and model of the technical solutions that can effectively and systematically limit malicious inventory occupied orders MIOOs, using the methods of analytical mining and case studies. This work contains three contributions. Firstly, this work solves MIOOs problem by using machine learning technology. The result of the study indicates that 93% of MIOOs from the sample data are actually predictable and preventable. Secondly, this work presents a methodology of solving MIOOs problem which can be applied by other companies. The methodology in this paper consists of four major steps, namely doing statistics concerning MIOOs, using logistic regression algorithm to train a mode, optimizing the model, and applying the model. Finally, this work finds unique features of MIOOs, and they can help better understanding the behind logic of MIOO producers.
Year
DOI
Venue
2014
10.4018/IJMCMC.2014100104
Periodicals
Keywords
Field
DocType
Beihang University, E-commerce, Feature Matrix, Logistic Regression, Machine Learning, Malicious Inventory, Qinghong Yang, Xiangquan Hu
Best practice,Computer science,Business activities,Harm,Feature matrix,Artificial intelligence,E-commerce,Machine learning
Journal
Volume
Issue
ISSN
6
4
1937-9412
Citations 
PageRank 
References 
0
0.34
15
Authors
4
Name
Order
Citations
PageRank
Qinghong Yang110.70
Xiangquan Hu210.70
Zhichao Cheng322.06
Kang Miao410.70