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A Deep Learning Approach for Identifying User Interest from Targeted Advertising

Authors
Kim, W.Lee, K.Lee, S.Jeong, D.
Issue Date
2022
Publisher
Korea Information Processing Society
Keywords
Convolutional neural network (cnn); Deep learning; Digital forensics; User interest; User profiling
Citation
Journal of Information Processing Systems, v.18, no.2, pp.245 - 257
Indexed
SCOPUS
KCI
Journal Title
Journal of Information Processing Systems
Volume
18
Number
2
Start Page
245
End Page
257
URI
https://scholar.korea.ac.kr/handle/2021.sw.korea/144165
DOI
10.3745/JIPS.03.0175
ISSN
1976-913X
Abstract
In the Internet of Things (IoT) era, the types of devices used by one user are becoming more diverse and the number of devices is also increasing. However, a forensic investigator is restricted to exploit or collect all the user’s devices; there are legal issues (e.g., privacy, jurisdiction) and technical issues (e.g., computing resources, the increase in storage capacity). Therefore, in the digital forensics field, it has been a challenge to acquire information that remains on the devices that could not be collected, by analyzing the seized devices. In this study, we focus on the fact that multiple devices share data through account synchronization of the online platform. We propose a novel way of identifying the user's interest through analyzing the remnants of targeted advertising which is provided based on the visited websites or search terms of logged-in users. We introduce a detailed methodology to pick out the targeted advertising from cache data and infer the user’s interest using deep learning. In this process, an improved learning model considering the unique characteristics of advertisement is implemented. The experimental result demonstrates that the proposed method can effectively identify the user interest even though only one device is examined. © 2022. Journal of Information Processing Systems.All Rights Reserved
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