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2004

Q'tron Neural Networks for Constraint Satisfaction

14 years 28 days ago
Q'tron Neural Networks for Constraint Satisfaction
This paper proposes the methods to solve the constraint satisfaction problems (CSPs) using Q'tron neural networks (NNs). A Q'tron NN is local-minima free if it is built as a known-energy system and is incorporated with the proposed persistent noise-injection mechanism. The so-built Q'tron NN, as a result, will settle down if and only if a feasible solution is found. Additionally, such a Q'tron NN is intrinsically auto-reversible. This renders the NN operable in a question-answering mode for extracting interested information. A concrete example, i.e., to solve the N-queen problem, will be demonstrated to highlight the main concept.
Tai-Wen Yue, Mei-Ching Chen
Added 31 Oct 2010
Updated 31 Oct 2010
Type Conference
Year 2004
Where HIS
Authors Tai-Wen Yue, Mei-Ching Chen
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