Most neural network (NN) models of human category learning use a gradient-based learning method, which assumes that locally-optimal changes are made to model parameters on each learning trial. This method tends to under predict variability in individual-level cognitive processes. In addition many recent models of human category learning have been criticized for not being able to replicate rapid changes in categorization accuracy and attention processes observed in empirical studies. In this paper we introduce stochastic learning algorithms for NN models of human category learning and show that use of the algorithms can result in (a) rapid changes in accuracy and attention allocation, and (b) different learning trajectories and more realisti...
Humans display a remarkable ability to learn from previous experience. Far from being passively rece...
We apply the "wisdom of the crowd" idea to human category learning, using a simple approach that com...
Presents a ‘hybrid ’ neural network architecture comprising two Kohonen maps interrelated by Hebbian...
Most neural network (NN) models of human category learning use a gradient-based learning method, whi...
Many neural network (NN) models of categorization (e.g., ALCOVE) use a gradient algorithm for learni...
A number of neural network models of categorization have been proposed. The models differ notably in...
Sequential learning for classification tasks is an effective tool in the machine learning community....
Category learning performance is influenced by both the nature of the category's structure and the w...
Abstract. Artificial neural networks are brain-like models of parallel computations and cognitive ph...
Human learning is one of the main topics in psychology and cognitive neuroscience. The analysis of e...
A new connectionist model (named RASHNL) accounts for many "irrational" phenomena found in nonmetric...
Models of attention in category learning tasks have typically treated attention as a weighting of ho...
SUSTAIN (Supervised and Unsupervised STratified Adaptive Incremental Network) is a network model of ...
The field of computational cognitive neuroscience (CCN) builds and tests neurobiologically detailed ...
Artificial neural networks are brain-like models of parallel computations and cognitive phenomena. W...
Humans display a remarkable ability to learn from previous experience. Far from being passively rece...
We apply the "wisdom of the crowd" idea to human category learning, using a simple approach that com...
Presents a ‘hybrid ’ neural network architecture comprising two Kohonen maps interrelated by Hebbian...
Most neural network (NN) models of human category learning use a gradient-based learning method, whi...
Many neural network (NN) models of categorization (e.g., ALCOVE) use a gradient algorithm for learni...
A number of neural network models of categorization have been proposed. The models differ notably in...
Sequential learning for classification tasks is an effective tool in the machine learning community....
Category learning performance is influenced by both the nature of the category's structure and the w...
Abstract. Artificial neural networks are brain-like models of parallel computations and cognitive ph...
Human learning is one of the main topics in psychology and cognitive neuroscience. The analysis of e...
A new connectionist model (named RASHNL) accounts for many "irrational" phenomena found in nonmetric...
Models of attention in category learning tasks have typically treated attention as a weighting of ho...
SUSTAIN (Supervised and Unsupervised STratified Adaptive Incremental Network) is a network model of ...
The field of computational cognitive neuroscience (CCN) builds and tests neurobiologically detailed ...
Artificial neural networks are brain-like models of parallel computations and cognitive phenomena. W...
Humans display a remarkable ability to learn from previous experience. Far from being passively rece...
We apply the "wisdom of the crowd" idea to human category learning, using a simple approach that com...
Presents a ‘hybrid ’ neural network architecture comprising two Kohonen maps interrelated by Hebbian...