A system with some degree of biological plausibility is developed to categorise items from a widely used machine learning benchmark. The system uses fatiguing leaky integrate and fire neurons, a relatively coarse point model that roughly duplicates biological spiking properties; this allows spontaneous firing based on hypo-fatigue so that neurons not directly stimulated by the environment may be included in the circuit. A novel compensatory Hebbian learning algorithm is used that considers the total synaptic weight coming into a neuron. The network is unsupervised and entirely self-organising. This is relatively effective as a machine learning algorithm, categorising with just neurons, and the performance is comparable with a Kohonen map. H...
Cortical and subcortical microcircuits are continuously modified throughout life. Despite ongoing ch...
Cortical and subcortical microcircuits are continuously modified throughout life. Despite ongoing ch...
To efficiently learn from feedback, cortical networks need to update synaptic weights on multiple le...
A system with some degree of biological plausibility is developed to categorise items from a widely ...
Using a reasonably accurate fatiguing leaky integrate and fire (FLIF) neural model, and biologically...
Abstract. A computational model of biological neurons is used to learn the exclusive or relation. Th...
This abstract describes simulations using a reasonably biological accurate point neuron model, a fat...
This paper presents a novel neuron learning machine (NLM) which can extract hierarchical features fr...
The concept of Hebbian learning refers to a family of learning rules, inspired by biology, according...
When neurons fire together they wire together. This is Donald Hebb's famous postulate. However, Hebb...
This paper describes a spiking neural network that learns classes. Following a classic Psychological...
This paper explores machine learning using biologically plausible neurons and learning rules. Two sy...
(A) Spontaneous activity in the neural network without Hebbian learning. (B) Matrix of uniformly sam...
Memory is a key component of biological neural systems that enables the retention of information ove...
Cortical and subcortical microcircuits are continuously modified throughout life. Despite ongoing ch...
Cortical and subcortical microcircuits are continuously modified throughout life. Despite ongoing ch...
Cortical and subcortical microcircuits are continuously modified throughout life. Despite ongoing ch...
To efficiently learn from feedback, cortical networks need to update synaptic weights on multiple le...
A system with some degree of biological plausibility is developed to categorise items from a widely ...
Using a reasonably accurate fatiguing leaky integrate and fire (FLIF) neural model, and biologically...
Abstract. A computational model of biological neurons is used to learn the exclusive or relation. Th...
This abstract describes simulations using a reasonably biological accurate point neuron model, a fat...
This paper presents a novel neuron learning machine (NLM) which can extract hierarchical features fr...
The concept of Hebbian learning refers to a family of learning rules, inspired by biology, according...
When neurons fire together they wire together. This is Donald Hebb's famous postulate. However, Hebb...
This paper describes a spiking neural network that learns classes. Following a classic Psychological...
This paper explores machine learning using biologically plausible neurons and learning rules. Two sy...
(A) Spontaneous activity in the neural network without Hebbian learning. (B) Matrix of uniformly sam...
Memory is a key component of biological neural systems that enables the retention of information ove...
Cortical and subcortical microcircuits are continuously modified throughout life. Despite ongoing ch...
Cortical and subcortical microcircuits are continuously modified throughout life. Despite ongoing ch...
Cortical and subcortical microcircuits are continuously modified throughout life. Despite ongoing ch...
To efficiently learn from feedback, cortical networks need to update synaptic weights on multiple le...