An extended DMFT framework incorporates epigenetic modifications as slow feedback-driven variables to dynamically reshape the effective potential landscape governing cell fate in GRNs.
Chaos-guided Input Structuring for Improved Learning in Recurrent Neural Networks
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abstract
Anatomical studies demonstrate that brain reformats input information to generate reliable responses for performing computations. However, it remains unclear how neural circuits encode complex spatio-temporal patterns. We show that neural dynamics are strongly influenced by the phase alignment between the input and the spontaneous chaotic activity. Input structuring along the dominant chaotic projections causes the chaotic trajectories to become stable channels (or attractors), hence, improving the computational capability of a recurrent network. Using mean field analysis, we derive the impact of input structuring on the overall stability of attractors formed. Our results indicate that input alignment determines the extent of intrinsic noise suppression and hence, alters the attractor state stability, thereby controlling the network's inference ability.
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q-bio.MN 1years
2025 1verdicts
UNVERDICTED 1representative citing papers
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Epigenetic feedback reshapes dynamical landscapes in gene regulatory networks
An extended DMFT framework incorporates epigenetic modifications as slow feedback-driven variables to dynamically reshape the effective potential landscape governing cell fate in GRNs.