Temporally varying classification by a dynamic classifier network is introduced. The dynamic classifier network consists of several independent nonlinear classifiers in parallel. The subclassifiers adapt to the measurements with a variety of adaptation rates. The output of the classifier network can be calculated as a weighted sum of the outputs of each subclassifier. Two methods to optimize the weighting are given. However, even a simple weighting function gives reasonable results. The network might be considered as a temporal associative memory. Because of nonlinearities and the ensuing chaos the behavior of the network can be very complicated. Algorithms to calculate the fractal and correlation dimension are also given. With these dimens...
An algorithm is introduced that trains a neural network to identify chaotic dynamics from a single m...
In this paper we show how a recurrent neural network, of shunting type, receiving changing input can...
Dynamic networks consist of entities making contact over time with one another. A major challenge in...
This simulation uses the trained network of Fig 11b. a) Examples of t-SNE projection of the trajecto...
The goal of this work is to learn a parsimonious and informative representation for high-dimensional...
This work extends the Kohonen self-organising map in two primary ways: o A dynamic extension to the ...
Attractor properties of a popular discrete-time neural network model are illustrated through numeric...
Ph.D.Thesis, Computer Science Dept., U Rochester; Dana H. Ballard, thesis advisor; simultaneously pu...
We introduce a transformation from time series to complex networks and then study the relative frequ...
We use standard deep neural networks to classify univariate time series generated by discrete and co...
Attractor properties of a popular discrete-time neural network model are illustrated through numeric...
We demonstrate a novel application of nonlinear systems in the design of pattern classification syst...
Domain structured dynamics introduces a way for analysis of chaos in fractals, neural networks and r...
The goal of this work is to learn a parsimonious and informative representation for high-dimensional...
This master´s thesis focuses on developing and testing methods that can automatically classify a giv...
An algorithm is introduced that trains a neural network to identify chaotic dynamics from a single m...
In this paper we show how a recurrent neural network, of shunting type, receiving changing input can...
Dynamic networks consist of entities making contact over time with one another. A major challenge in...
This simulation uses the trained network of Fig 11b. a) Examples of t-SNE projection of the trajecto...
The goal of this work is to learn a parsimonious and informative representation for high-dimensional...
This work extends the Kohonen self-organising map in two primary ways: o A dynamic extension to the ...
Attractor properties of a popular discrete-time neural network model are illustrated through numeric...
Ph.D.Thesis, Computer Science Dept., U Rochester; Dana H. Ballard, thesis advisor; simultaneously pu...
We introduce a transformation from time series to complex networks and then study the relative frequ...
We use standard deep neural networks to classify univariate time series generated by discrete and co...
Attractor properties of a popular discrete-time neural network model are illustrated through numeric...
We demonstrate a novel application of nonlinear systems in the design of pattern classification syst...
Domain structured dynamics introduces a way for analysis of chaos in fractals, neural networks and r...
The goal of this work is to learn a parsimonious and informative representation for high-dimensional...
This master´s thesis focuses on developing and testing methods that can automatically classify a giv...
An algorithm is introduced that trains a neural network to identify chaotic dynamics from a single m...
In this paper we show how a recurrent neural network, of shunting type, receiving changing input can...
Dynamic networks consist of entities making contact over time with one another. A major challenge in...