Social Network Forensics Analysis Model Based on Network Representation Learning

Author:

Zhao Kuo123ORCID,Zhang Huajian1,Li Jiaxin1,Pan Qifu1,Lai Li1,Nie Yike1,Zhang Zhongfei234

Affiliation:

1. School of Intelligent Systems Science and Engineering, Jinan University, Zhuhai 519070, China

2. Guangdong International Cooperation Base of Science and Technology for GBA Smart Logistics, Jinan University, Zhuhai 519070, China

3. Institute of Physical Internet, Jinan University, Zhuhai 519070, China

4. School of Management, Jinan University, Guangzhou 510632, China

Abstract

The rapid evolution of computer technology and social networks has led to massive data generation through interpersonal communications, necessitating improved methods for information mining and relational analysis in areas such as criminal activity. This paper introduces a Social Network Forensic Analysis model that employs network representation learning to identify and analyze key figures within criminal networks, including leadership structures. The model incorporates traditional web forensics and community algorithms, utilizing concepts such as centrality and similarity measures and integrating the Deepwalk, Line, and Node2vec algorithms to map criminal networks into vector spaces. This maintains node features and structural information that are crucial for the relational analysis. The model refines node relationships through modified random walk sampling, using BFS and DFS, and employs a Continuous Bag-of-Words with Hierarchical Softmax for node vectorization, optimizing the value distribution via the Huffman tree. Hierarchical clustering and distance measures (cosine and Euclidean) were used to identify the key nodes and establish a hierarchy of influence. The findings demonstrate the effectiveness of the model in accurately vectorizing nodes, enhancing inter-node relationship precision, and optimizing clustering, thereby advancing the tools for combating complex criminal networks.

Funder

National Key Research and Development Program of China

Guangdong Basic and Applied Basic Research Foundation

2019 Guangdong Special Support Talent Program–Innovation and Entrepreneurship Leading Team

2018 Guangzhou Leading Innovation Team Program

Publisher

MDPI AG

Reference54 articles.

1. Traffic dynamics based on local routing protocol on a scale-free network;Wang;Phys. Rev. E,2006

2. Random walks on weighted networks: A survey of local and non-local dynamics;Riascos;J. Complex Netw.,2021

3. Okmi, M., Por, L.Y., Ang, T.F., and Ku, C.S. (2023). Mobile Phone Data: A Survey of Techniques, Features, and Applications. Sensors, 23.

4. A survey of social network forensics;Karabiyik;J. Digit. Forensics Secur. Law,2016

5. Media forensics on social media platforms: A survey;Pasquini;EURASIP J. Inf. Secur.,2021

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