Classical RNNs trained on small instances provide parameter initializations for QAOA and VQE that reduce total optimization iterations and generalize across problem sizes.
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END-nSDE reconstructs SDEs from heterogeneous cell trajectories via Wasserstein distance, applied to circadian rhythms, RPA-DNA binding, and NFκB signaling while outperforming RNNs and LSTMs.
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Reconstructing Noisy Gene Regulation Dynamics Using Extrinsic-Noise-Driven Neural Stochastic Differential Equations
END-nSDE reconstructs SDEs from heterogeneous cell trajectories via Wasserstein distance, applied to circadian rhythms, RPA-DNA binding, and NFκB signaling while outperforming RNNs and LSTMs.