gatesmodell
Gatesmodell, also known as the Gate Model, is a theoretical framework developed by Dr. Hans Gates in the mid‑1990s to explain how discrete gating mechanisms influence information flow in computational systems. The model conceptualizes gates as conditional operators that modulate signal propagation based on external or internal state variables. Gates can be represented mathematically as functions that map an input vector and a control parameter to an output vector, often using differentiable activation functions to enable back‑propagation in learning architectures.
The Gatesmodell was introduced to address limitations in earlier feed‑forward neural network designs, which treated all
Applications of Gatesmodell emerged in recurrent neural network variants such as Long Short‑Term Memory (LSTM) and
Critiques of the Gatesmodell highlight increased computational overhead and the difficulty of interpreting learned gate values.