Optimalisasi paramter neural network menggunakan algoritma genetik
Radhietya;
Wahidin Wahab, supervisor
(Fakultas Teknik Universitas Indonesia, 2000)
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One of the problems faced in applying neural network to some realworld application is related to difticulties in finding an optimum set of weightsand thresholds during the training phase. A general most method in tindingthese solutions for these problems is backpropagation.A different method to tind the solutions of the same problems isGenetic Algorithms. Genetic algorithm is relatively new search algorithm thathas not been fully explored in this area. ln this thesis, genetic algorithms areapplied to train neural networks and to evolve an optimum set of weights andthresholds. Process begin with encode neural networks parameters to binarychromosomes, and evaluate. The Spinning wheel selections are using toproduce offspring with high titness_ then recombinate with crossover andmutation as genetic operator.The proiect carried out investigates whether genetic atgonthms can beapplied to neural networks to solve pattem classitication and functionapproximation problems. This thesis describes tl1e simulation works thathave been perfomwed. It describes the design ofa genetic algorithm and theresults obtained. ln pattem classilication problem that use feedforwardnetwork show, that genetic algorithm is superior to backpropagation trainingrule in error and speed calculation. ln function approximation, the resultshows that genetic algorithm approach is very much slower than thebackpropagation method. Results' show that even for relatively simplenetwork, genetic algorithm requires a much longer time to Uain neuralnetworks- |
T6440-Radhietya-full text.pdf :: Unduh
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No. Panggil : | T6440 |
Entri utama-Nama orang : | |
Entri tambahan-Nama orang : | |
Entri tambahan-Nama badan : | |
Subjek : | |
Penerbitan : | [Place of publication not identified]: Fakultas Teknik Universitas Indonesia, 2000 |
Program Studi : |
Bahasa : | ind |
Sumber Pengatalogan : | LibUI ind rda |
Tipe Konten : | text |
Tipe Media : | unmediated ; computer |
Tipe Carrier : | volume ; online resource |
Deskripsi Fisik : | xi, 82 pages: illustration; 28 cm. + lamp. |
Naskah Ringkas : | |
Lembaga Pemilik : | Universitas Indonesia |
Lokasi : | Perpustakaan UI, Lantai 3 |
No. Panggil | No. Barkod | Ketersediaan |
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T6440 | 15-19-035385468 | TERSEDIA |
Ulasan: |
Tidak ada ulasan pada koleksi ini: 97338 |