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0 reviewsMajor Depressive Disorder (MDD) poses a significant global health threat, impairing individual functioningand increasing socioeconomic burden. Accurate diagnosis is crucial for improving treatment outcomes. Thisstudy proposes Time-Frequency Text-Attributed DeepWalk (TF-TADW), a framework for MDD classificationusing resting-state functional MRI data. TF-TADW integrates time-frequency dynamics and brain networktopology. A key aspect is the adaptive weighting of time-frequency features via an attention mechanism,enabling personalized representation learning to address MDD heterogeneity and mitigate site-specific biases inmulti-site datasets. Matrix factorization simultaneously learns network topology and node attributes, creating acomprehensive brain network embedding. Evaluated on REST-meta-MDD and SRPBS-MDD, TF-TADW achievedaccuracies of 80.13% and 91.97%, respectively. The attention mechanism also identified key MDD-relatedbrain regions, enhancing interpretability. These results demonstrate TF-TADW’s effectiveness and potential forclinical application.