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Tracing Hyperparameter Dependencies for Model Parsing via Learnable Graph Pooling Network

Authors :
Guo, Xiao
Asnani, Vishal
Liu, Sijia
Liu, Xiaoming
Publication Year :
2023

Abstract

Model Parsing defines the research task of predicting hyperparameters of the generative model (GM), given a generated image as input. Since a diverse set of hyperparameters is jointly employed by the generative model, and dependencies often exist among them, it is crucial to learn these hyperparameter dependencies for the improved model parsing performance. To explore such important dependencies, we propose a novel model parsing method called Learnable Graph Pooling Network (LGPN). Specifically, we transform model parsing into a graph node classification task, using graph nodes and edges to represent hyperparameters and their dependencies, respectively. Furthermore, LGPN incorporates a learnable pooling-unpooling mechanism tailored to model parsing, which adaptively learns hyperparameter dependencies of GMs used to generate the input image. We also extend our proposed method to CNN-generated image detection and coordinate attacks detection. Empirically, we achieve state-of-the-art results in model parsing and its extended applications, showing the effectiveness of our method. Our source code are available.<br />Comment: 24 pages, 15 figures, 17 tables

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2312.02224
Document Type :
Working Paper