Computational Neuroscience
Asymptotic stability refers to the property of a dynamical system where, if the system starts close to an equilibrium point, it will not only remain close but will also converge to that point over time. This concept is essential in understanding how recurrent neural networks function, as these networks can settle into stable states or attractors, making them effective for tasks such as memory recall and pattern recognition.
congrats on reading the definition of Asymptotic Stability. now let's actually learn it.