Improved TrAdaBoost and its Application to Transaction Fraud Detection
Document Type
Article
Publication Date
10-1-2020
Abstract
AdaBoost is a boosting-based machine learning method under the assumption that the data in training and testing sets have the same distribution and input feature space. It increases the weights of those instances that are wrongly classified in a training process. However, the assumption does not hold in many real-world data sets. Therefore, AdaBoost is extended to transfer AdaBoost (TrAdaBoost) that can effectively transfer knowledge from one domain to another. TrAdaBoost decreases the weights of those instances that belong to the source domain but are wrongly classified in a training process. It is more suitable for the case that data are of different distribution. Can it be improved for some special transfer scenarios, e.g., the data distribution changes slightly over time We find that the distribution of credit card transaction data can change with the changes in the transaction behaviors of users, but the changes are slow most of the time. These changes are yet important for detecting transaction fraud since they result in a so-called concept drift problem. In order to make TrAdaBoost more suitable for the abovementioned case, we, thus, propose an improved TrAdaBoost (ITrAdaBoost) in this article. It updates (i.e., increases or decreases) the weight of a wrongly classified instance in a source domain according to the distribution distance from the instance to a target domain, and the calculation of distance is based on the theory of reproducing kernel Hilbert space. We do a series of experiments over five data sets, and the results illustrate the advantage of ITrAdaBoost.
Identifier
85095974553 (Scopus)
Publication Title
IEEE Transactions on Computational Social Systems
External Full Text Location
https://doi.org/10.1109/TCSS.2020.3017013
e-ISSN
2329924X
First Page
1304
Last Page
1316
Issue
5
Volume
7
Grant
2018YFB2100801
Fund Ref
National Key Research and Development Program of China
Recommended Citation
Zheng, Lutao; Liu, Guanjun; Yan, Chungang; Jiang, Changjun; Zhou, Mengchu; and Li, Maozhen, "Improved TrAdaBoost and its Application to Transaction Fraud Detection" (2020). Faculty Publications. 4972.
https://digitalcommons.njit.edu/fac_pubs/4972
