Journal Article10.1162/089976603765202695
The time-organized map algorithm: extending the self-organizing map to spatiotemporal signals
TL;DR: The new time-organized map (TOM) is presented for a better understanding of the self-organization and geometric structure of cortical signal representations and suggests that the strength with which signals interact in the cortex determines the type of signal topology realized in topographic maps.
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Abstract: The new time-organized map (TOM) is presented for a better understanding of the self-organization and geometric structure of cortical signal representations. The algorithm extends the common self-organizing map (SOM) from the processing of purely spatial signals to the processing of spatiotemporal signals. The main additional idea of the TOM compared with the SOM is the functionally reasonable transfer of temporal signal distances into spatial signal distances in topographic neural representations. This is achieved by neural dynamics of propagating waves, allowing current and former signals to interact spatiotemporally in the neural network. Within a biologically plausible framework, the TOM algorithm (1) reveals how dynamic neural networks can self-organize to embed spatial signals in temporal context in order to realize functional meaningful invariances, (2) predicts time-organized representational structures in cortical areas representing signals with systematic temporal relation, and (3) suggests that the strength with which signals interact in the cortex determines the type of signal topology realized in topographic maps (e.g., spatially or temporally defined signal topology). Moreover, the TOM algorithm supports the explanation of topographic reorganizations based on time-to-space transformations (Wiemer, Spengler, Joublin, Stagge, & Wacquant, 2000).
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Citations
The Perception of the Visual World. By James J. Gibson. U.S.A.: Houghton Mifflin Company, 1950 (George Allen & Unwin, Ltd., London). Price 35s.
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Self-organizing maps
Marc M. Van Hulle
- 01 Jan 2012
TL;DR: This chapter introduces the SOM algorithm, discusses its properties and applications, and also discusses some of its extensions and new types of topographic map formation, such as the ones that can be used for processing categorical data, time series and tree structured data.
A Sensorimotor Map: Modulating Lateral Interactions for Anticipation and Planning
TL;DR: The proposed sensorimotor map learns a state representation similar to self-organizing maps but is inherently coupled to sensor and motor signals, and encodes a model of the change of stimuli depending on the current motor activities.
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•Proceedings Article
Self-Organizing Maps for Time Series
Barbara Hammer,Alessio Micheli,N. Neubauer,Alessandro Sperduti,Marc Strickert +4 more
- 01 Jan 2005
TL;DR: A recent extension of the self-organizing map for temporal structures with a simple recurrent dynamics leading to sparse representations is reviewed, which allows an efficient training and a combination with arbitrary lattice structures.
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Self-Organizing Maps
Teuvo Kohonen
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TL;DR: The Self-Organising Map (SOM) algorithm was introduced by the author in 1981 as mentioned in this paper, and many applications form one of the major approaches to the contemporary artificial neural networks field, and new technologies have already been based on it.
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