Recursive percentage based hybrid pattern (RPHP) training for curve fitting
In this paper, we present the RPHP training algorithm, which finds several good local optimal points (pseudo global optima) automatically using an efficient combination of global and local search algorithms. This overcomes the problem of supervised learning algorithms being trapped in a local optima...
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sg-smu-ink.sis_research-84312022-10-13T03:42:02Z Recursive percentage based hybrid pattern (RPHP) training for curve fitting GUAN, Sheng Uei RAMANATHAN, Kiruthika In this paper, we present the RPHP training algorithm, which finds several good local optimal points (pseudo global optima) automatically using an efficient combination of global and local search algorithms. This overcomes the problem of supervised learning algorithms being trapped in a local optima. Further, to solve a test pattern, we use a modified version of the Kth nearest neighbor (KNN) algorithm as a second level pattern distributor. We tested our approach on three curve fitting problems, whose coefficients were estimated both using genetic algorithms and the RPHP algorithm. The problems were chosen such that they had a small probability of finding a global optimal solution. It was found that the RPHP algorithms performed faster and improved generalization accuracy by as much as 25%. 2004-12-04T08:00:00Z text https://ink.library.smu.edu.sg/sis_research/7428 info:doi/10.1109/ICCIS.2004.1460456 Research Collection School Of Computing and Information Systems eng Institutional Knowledge at Singapore Management University Databases and Information Systems |
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Databases and Information Systems GUAN, Sheng Uei RAMANATHAN, Kiruthika Recursive percentage based hybrid pattern (RPHP) training for curve fitting |
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In this paper, we present the RPHP training algorithm, which finds several good local optimal points (pseudo global optima) automatically using an efficient combination of global and local search algorithms. This overcomes the problem of supervised learning algorithms being trapped in a local optima. Further, to solve a test pattern, we use a modified version of the Kth nearest neighbor (KNN) algorithm as a second level pattern distributor. We tested our approach on three curve fitting problems, whose coefficients were estimated both using genetic algorithms and the RPHP algorithm. The problems were chosen such that they had a small probability of finding a global optimal solution. It was found that the RPHP algorithms performed faster and improved generalization accuracy by as much as 25%. |
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GUAN, Sheng Uei RAMANATHAN, Kiruthika |
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GUAN, Sheng Uei RAMANATHAN, Kiruthika |
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GUAN, Sheng Uei |
title |
Recursive percentage based hybrid pattern (RPHP) training for curve fitting |
title_short |
Recursive percentage based hybrid pattern (RPHP) training for curve fitting |
title_full |
Recursive percentage based hybrid pattern (RPHP) training for curve fitting |
title_fullStr |
Recursive percentage based hybrid pattern (RPHP) training for curve fitting |
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Recursive percentage based hybrid pattern (RPHP) training for curve fitting |
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recursive percentage based hybrid pattern (rphp) training for curve fitting |
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Institutional Knowledge at Singapore Management University |
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2004 |
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https://ink.library.smu.edu.sg/sis_research/7428 |
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