We investigate the dynamics of continuous attractor neural networks (CANNs). Due to the translational invariance of their neuronal interactions, CANNs can hold a continuous family of stationary states. We systematically explore how their neutral stability facilitates the tracking performance of a CANN, which is believed to have wide applications in brain functions. We develop a perturbative approach that utilizes the dominant movement of the network stationary states in the state space. We quantify the distortions of the bump shape during tracking, and study their effects on the tracking performance. Results are obtained on the maximum speed for a moving stimulus to be trackable, and the reaction time to catch up an abrupt change in stimulu...
Attractor properties of a popular discrete-time neural network model are illustrated through numeric...
Abstract Persistent activity in neuronal populations has been shown to represent the spatial positio...
Time delay is pervasive in neural information processing. To achieve real-time tracking, it is criti...
Understanding how the dynamics of a neural network is shaped by the network structure and, consequen...
We introduce an analytically solvable model of two-dimensional continuous attractor neural networks ...
Time delays exist pervasively in neural information pro-cessing. The brain needs to compensate for t...
In this thesis, there are three parts related to continuous attractor neural networks (CANNs). They ...
Attractor models are simplified models used to describe the dynamics of firing rate profiles of a po...
AbstractRecurrent neural networks (RNNs) may possess continuous attractors, a property that many bra...
Two issues concerning the application of continuous attractors in neural systems are investigated: t...
To extract motion information, the brain needs to compensate for time delays that are ubiquitous in ...
Motivated by experimental observations of the head direction system, we study a three population net...
One of the central questions in neuroscience is how neurons and neuron populations communicate with ...
This is the final version. Available on open access from Elsevier via the DOI in this recordThe impo...
'Continuous attractor' neural networks can maintain a localised packet of neuronal activity represen...
Attractor properties of a popular discrete-time neural network model are illustrated through numeric...
Abstract Persistent activity in neuronal populations has been shown to represent the spatial positio...
Time delay is pervasive in neural information processing. To achieve real-time tracking, it is criti...
Understanding how the dynamics of a neural network is shaped by the network structure and, consequen...
We introduce an analytically solvable model of two-dimensional continuous attractor neural networks ...
Time delays exist pervasively in neural information pro-cessing. The brain needs to compensate for t...
In this thesis, there are three parts related to continuous attractor neural networks (CANNs). They ...
Attractor models are simplified models used to describe the dynamics of firing rate profiles of a po...
AbstractRecurrent neural networks (RNNs) may possess continuous attractors, a property that many bra...
Two issues concerning the application of continuous attractors in neural systems are investigated: t...
To extract motion information, the brain needs to compensate for time delays that are ubiquitous in ...
Motivated by experimental observations of the head direction system, we study a three population net...
One of the central questions in neuroscience is how neurons and neuron populations communicate with ...
This is the final version. Available on open access from Elsevier via the DOI in this recordThe impo...
'Continuous attractor' neural networks can maintain a localised packet of neuronal activity represen...
Attractor properties of a popular discrete-time neural network model are illustrated through numeric...
Abstract Persistent activity in neuronal populations has been shown to represent the spatial positio...
Time delay is pervasive in neural information processing. To achieve real-time tracking, it is criti...