AMAG: Additive, Multiplicative and Adaptive Graph Neural Network For Forecasting Neuron Activity
–Neural Information Processing Systems
Latent Variable Models (LVMs) propose to model the dynamics of neural populations by capturing low-dimensional structures that represent features involved in neural activity. Recent LVMs are based on deep learning methodology where a deep neural network is trained to reconstruct the same neural activity given as input and as a result to build the latent representation. Without taking past or future activity into account such a task is non-causal. In contrast, the task of forecasting neural activity based on given input extends the reconstruction task. LVMs that are trained on such a task could potentially capture temporal causality constraints within its latent representation.
Neural Information Processing Systems
Oct-10-2024, 06:21:15 GMT
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