Do not ignore heterogeneity and heterophily: Multi-network collaborative telecom fraud detection
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Published:2024-12
Issue:
Volume:257
Page:124974
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ISSN:0957-4174
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Container-title:Expert Systems with Applications
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language:en
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Short-container-title:Expert Systems with Applications
Author:
Ren Lingfei, Zang Yilong, Hu RuiminORCID, Li Dengshi, Wu Junhang, Huan Zijun, Hu Jinzhang
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