Title :
Temporal winner-take-all networks: a time-based mechanism for fast selection in neural networks
Author :
Barnden, John A. ; Srinivas, Kankanahalli
Author_Institution :
Dept. of Comput. Sci., New Mexico State Univ., Las Cruces, NM, USA
fDate :
9/1/1993 12:00:00 AM
Abstract :
Winner-take-all (WTA) networks frequently appear in neural network models. They are primarily used for decision making and selection. As an alternative to the conventional activation-based winner-take-all mechanisms (AWTA), we present a time-based temporal-winner-take-all mechanism with O(n) space complexity and roughly O(log n) time complexity. The mechanism exploits systematic and stochastic differences between time delays within different units and connections. The TWTA and the AWTA networks are shown to be logically equivalent, but the TWTA mechanism may be more suitable than the latter for various selection tasks, especially the selection of an arbitrary unit from a set (e.g., as in unit recruitment). TWTA avoids various problems with conventional WTA, notably the difficulty of making it converge rapidly over a large range of conditions. Here we report a probabilistic analysis of the TWTA mechanism along with experimental data obtained from numerous massively parallel simulations of the TWTA mechanism on the connection machine
Keywords :
neural nets; AWTA networks; TWTA networks; activation-based winner-take-all mechanisms; connection machine; fast selection; neural networks; space complexity; temporal winner-take-all networks; time complexity; time delays; time-based mechanism; unit recruitment; Analytical models; Content based retrieval; Delay effects; Helium; Intelligent networks; Neural networks; Pattern recognition; Recruitment; Speech recognition; Stochastic systems;
Journal_Title :
Neural Networks, IEEE Transactions on