To read this content please select one of the options below:

Feature distillation and accumulated selection for automated fraudulent publisher classification from user click data of online advertising

Deepti Sisodia (Computer Science and Engineering, National Institute of Technology Raipur, Raipur, India)
Dilip Singh Sisodia (Computer Science and Engineering, National Institute of Technology Raipur, Raipur, India)

Data Technologies and Applications

ISSN: 2514-9288

Article publication date: 6 January 2022

Issue publication date: 23 August 2022

124

Abstract

Purpose

The problem of choosing the utmost useful features from hundreds of features from time-series user click data arises in online advertising toward fraudulent publisher's classification. Selecting feature subsets is a key issue in such classification tasks. Practically, the use of filter approaches is common; however, they neglect the correlations amid features. Conversely, wrapper approaches could not be applied due to their complexities. Moreover, in particular, existing feature selection methods could not handle such data, which is one of the major causes of instability of feature selection.

Design/methodology/approach

To overcome such issues, a majority voting-based hybrid feature selection method, namely feature distillation and accumulated selection (FDAS), is proposed to investigate the optimal subset of relevant features for analyzing the publisher's fraudulent conduct. FDAS works in two phases: (1) feature distillation, where significant features from standard filter and wrapper feature selection methods are obtained using majority voting; (2) accumulated selection, where we enumerated an accumulated evaluation of relevant feature subset to search for an optimal feature subset using effective machine learning (ML) models.

Findings

Empirical results prove enhanced classification performance with proposed features in average precision, recall, f1-score and AUC in publisher identification and classification.

Originality/value

The FDAS is evaluated on FDMA2012 user-click data and nine other benchmark datasets to gauge its generalizing characteristics, first, considering original features, second, with relevant feature subsets selected by feature selection (FS) methods, third, with optimal feature subset obtained by the proposed approach. ANOVA significance test is conducted to demonstrate significant differences between independent features.

Keywords

Acknowledgements

Ethical approval: This article does not contain any studies with human participants or animals performed by any authors.

Compliance with ethical standards

Funding: No funding is provided for experimentation.

Conflict of interest: All authors declare that they have no conflict of interest.

Citation

Sisodia, D. and Sisodia, D.S. (2022), "Feature distillation and accumulated selection for automated fraudulent publisher classification from user click data of online advertising", Data Technologies and Applications, Vol. 56 No. 4, pp. 602-625. https://doi.org/10.1108/DTA-09-2021-0233

Publisher

:

Emerald Publishing Limited

Copyright © 2021, Emerald Publishing Limited

Related articles