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A0376
Title: DAG trend filtering for genomic denoising via higher-order Bayesian networks and DAG shrinkage processes Authors:  Weixuan Zhu - Xiamen University (China) [presenting]
Abstract: Graph-based denoising is a critical preprocessing step for analyzing noisy data, particularly in genomic applications where gene regulatory networks exhibit inherent directional dependencies. A novel directed acyclic graph trend filtering framework is introduced that leverages novel higher-order Bayesian networks and graphical shrinkage processes to enhance local adaptivity in signal smoothing along the directed edges of a graph. Unlike traditional graph trend filtering, which assumes undirected graphs, the proposed method explicitly respects the directional structure of graphs, improving interpretability and accuracy in capturing dependencies. A Hamiltonian Monte Carlo algorithm is employed for efficient posterior inference. Through simulations and genomic applications, the proposed method outperforms a state-of-the-art graph trend filtering algorithm in terms of mean squared error reduction and signal-to-noise ratio improvement, demonstrating its utility in recovering true signals while accounting for meaningful structural information.