k-Coloring Vertices using a Neural Network with Convergence to Valid Solutions
نویسنده
چکیده
This paper proposes a new algorithm using a maximum neural network model to k-color vertices of a simple undirected graph. Unlike traditional neural nets, the proposed network is guaranteed to have 100% convergence rate to valid solutions with no parameter tuning needed. The power of the new method to solve this NP-complete problem will be shown in a number of simulations.
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