Modern optimization problems decision made using neural network Hopfield; Технологии Microsoft в теории и практике программирования
| Parent link: | Технологии Microsoft в теории и практике программирования.— 2015.— [С. 87-89] |
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| Tác giả của công ty: | |
| Tác giả khác: | |
| Tóm tắt: | Заглавие с титульного листа. The purpose of writing this paper was to study the solution of optimization problems using Hopfield neural network in Matlab environment in order to improve that Neural network as artificial intelligence best method for provide the solutions for optimization problems. This purpose can be achieved through the following steps: 1. Formation of the basic operation of neural networks; 2. Allocation of the problems encountered when solving optimization problems using Hopfield neural network using Matlab [1]; Neural network operates cyclically. Each of the four Hopfield neural network has outputs a signal, which is input, to all other neurons but himself, however, this network cannot be taught almost anything. Network consisting of N neurons cannot remember more than ~ 0.15 * N images. Therefore, the real network should contain enough impressive number of neurons. This is one of the major flaws of the Hopfield network - a small container. In addition to all the images, do not need to be very similar to each other, or in some cases perhaps looping for recognition. |
| Ngôn ngữ: | Tiếng Anh |
| Được phát hành: |
2015
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| Loạt: | Математическое моделирование и технологии высокопроизводительных вычислений |
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| Truy cập trực tuyến: | http://earchive.tpu.ru/handle/11683/23815 http://www.lib.tpu.ru/fulltext/c/2015/C28/037.pdf |
| Định dạng: | Điện tử Chương của sách |
| KOHA link: | https://koha.lib.tpu.ru/cgi-bin/koha/opac-detail.pl?biblionumber=614547 |
| Tóm tắt: | Заглавие с титульного листа. The purpose of writing this paper was to study the solution of optimization problems using Hopfield neural network in Matlab environment in order to improve that Neural network as artificial intelligence best method for provide the solutions for optimization problems. This purpose can be achieved through the following steps: 1. Formation of the basic operation of neural networks; 2. Allocation of the problems encountered when solving optimization problems using Hopfield neural network using Matlab [1]; Neural network operates cyclically. Each of the four Hopfield neural network has outputs a signal, which is input, to all other neurons but himself, however, this network cannot be taught almost anything. Network consisting of N neurons cannot remember more than ~ 0.15 * N images. Therefore, the real network should contain enough impressive number of neurons. This is one of the major flaws of the Hopfield network - a small container. In addition to all the images, do not need to be very similar to each other, or in some cases perhaps looping for recognition. |
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