Topology based fuzzy clustering for robust ANFIS creation
This paper describes how the clustering topology of an input space data distribution is utilized to properly initialize an Adaptive Neuro-Fuzzy Inference System (ANFIS). We used a new unsupervised clustering algorithm called Topology based Fuzzy Clustering (TFC) that performs better than Growing Neu...
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oai:animorepository.dlsu.edu.ph:faculty_research-147132024-07-29T02:23:57Z Topology based fuzzy clustering for robust ANFIS creation Pinpin, Lord Kenneth M. Gamarra, Daniel Fernando Tello Laschi, Cecilia Dario, Paolo This paper describes how the clustering topology of an input space data distribution is utilized to properly initialize an Adaptive Neuro-Fuzzy Inference System (ANFIS). We used a new unsupervised clustering algorithm called Topology based Fuzzy Clustering (TFC) that performs better than Growing Neural Gas (GNG) in extracting the input-space topology. The topology information in the form of number of nodes, node positions and node connectivity is used for the initialization of the ANFIS. Using two robotic modeling tasks as benchmarks, we demonstrate the improved performance of TFC-derived ANFIS when compared to the subclustering method found in the Fuzzy Logic Toolbox of Matlab. 2008-09-01T07:00:00Z text https://animorepository.dlsu.edu.ph/faculty_research/12778 Faculty Research Work Animo Repository Robust control Topology Neural networks (Computer science) Artificial Intelligence and Robotics |
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Robust control Topology Neural networks (Computer science) Artificial Intelligence and Robotics Pinpin, Lord Kenneth M. Gamarra, Daniel Fernando Tello Laschi, Cecilia Dario, Paolo Topology based fuzzy clustering for robust ANFIS creation |
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This paper describes how the clustering topology of an input space data distribution is utilized to properly initialize an Adaptive Neuro-Fuzzy Inference System (ANFIS). We used a new unsupervised clustering algorithm called Topology based Fuzzy Clustering (TFC) that performs better than Growing Neural Gas (GNG) in extracting the input-space topology. The topology information in the form of number of nodes, node positions and node connectivity is used for the initialization of the ANFIS. Using two robotic modeling tasks as benchmarks, we demonstrate the improved performance of TFC-derived ANFIS when compared to the subclustering method found in the Fuzzy Logic Toolbox of Matlab. |
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Pinpin, Lord Kenneth M. Gamarra, Daniel Fernando Tello Laschi, Cecilia Dario, Paolo |
author_facet |
Pinpin, Lord Kenneth M. Gamarra, Daniel Fernando Tello Laschi, Cecilia Dario, Paolo |
author_sort |
Pinpin, Lord Kenneth M. |
title |
Topology based fuzzy clustering for robust ANFIS creation |
title_short |
Topology based fuzzy clustering for robust ANFIS creation |
title_full |
Topology based fuzzy clustering for robust ANFIS creation |
title_fullStr |
Topology based fuzzy clustering for robust ANFIS creation |
title_full_unstemmed |
Topology based fuzzy clustering for robust ANFIS creation |
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topology based fuzzy clustering for robust anfis creation |
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Animo Repository |
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2008 |
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https://animorepository.dlsu.edu.ph/faculty_research/12778 |
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