SUN'IY NEYRON TURLARI VA ULARNING QO'LLANILISHI

Authors

  • Islamov Erkinjon Revkatovich,Abdug’aforov Dilyorbek Dilshodjonzoda Farg’ona davlat unversiteti Author

Keywords:

Sun'iy neyron tarmoqlar, perceptron, ko'p qavatli perceptron, konvolyutsion neyron tarmoqlar, qayta tiklovchi neyron tarmoqlar, o'zgaruvchan avtomatik kodlovchi, sun'iy intellekt, tasvirni qayta ishlash, tabiiy tilni qayta ishlash, ma'lumotlarni siqish, rekonstruksiya qilish.

Abstract

Sun'iy neyron tarmoqlari zamonaviy texnologiyalarning muhim yutuqlaridan biri bo'lib, turli murakkab vazifalarni hal qilishda keng qo'llaniladi. Ushbu maqolada sun'iy neyron tarmoqlarining asosiy turlari, ularning tuzilishi va ishlash mexanizmlari, shuningdek, qo'llanilish sohalari batafsil tahlil qilinadi. Perceptron, ko'p qavatli perceptron (PKQP), konvolyutsion neyron tarmoqlar (KNT), qayta tiklovchi neyron tarmoqlar (QTNT) va o'zgaruvchan avtomatik kodlovchi (O’AK) kabi neyron turlari alohida ko'rib chiqiladi. Sun'iy neyron tarmoqlarining kelajakdagi istiqbollari, tadqiqot va rivojlanish yo'nalishlari, hamda jamiyatga ta'siri va kutilayotgan o'zgarishlar ham tahlil qilinadi. Ushbu maqola sun'iy neyron tarmoqlarining zamonaviy ilm-fan va texnologiyadagi o'rni va ahamiyatini yoritishga qaratilgan.

References

Goodfellow, I., Bengio, Y., & Courville, A. (2016). Deep Learning. MIT Press.

Bishop, C. M. (2006). Pattern Recognition and Machine Learning. Springer.

LeCun, Y., Bengio, Y., & Hinton, G. (2015). Deep learning. Nature, 521(7553), 436-444.

Schmidhuber, J. (2015). Deep Learning in Neural Networks: An Overview. Neural Networks, 61, 85-117.

Nielsen, M. (2015). Neural Networks and Deep Learning. Determination Press.

Chollet, F. (2018). Deep Learning with Python. Manning Publications.

Haykin, S. (2009). Neural Networks and Learning Machines. Pearson.

O'Shea, K., & Nash, R. (2015). An Introduction to Convolutional Neural Networks. arXiv preprint arXiv:1511.08458.

Graves, A. (2012). Supervised Sequence Labelling with Recurrent Neural Networks. Springer.

Tojimamatov, I. N., Olimov, A. F., Khaydarova, O. T., & Tojiboyev, M. M. (2023). CREATING A DATA SCIENCE ROADMAP AND ANALYSIS. PEDAGOGICAL SCIENCES AND TEACHING METHODS, 2(23), 242-250.

Тожимаматов, И. Н. (2023). ЗАДАЧИ ИНТЕЛЛЕКТУАЛЬНОГО АНАЛИЗА ДАННЫХ. PEDAGOG, 6(4), 514-516.

Muqaddam, A., Shahzoda, A., Gulasal, T., & Isroil, T. (2023). NEYRON TARMOQLARDAN FOYDALANIB TASVIRLARNI ANIQLASH USULLARI. SUSTAINABILITY OF EDUCATION, SOCIO-ECONOMIC SCIENCE THEORY, 1(8), 63-74.

Raximov, Q. O., Tojimamatov, I. N., & Xo, H. R. O. G. L. (2023). SUNIY NЕYRON TARMOQLARNI UMUMIY TASNIFI. Scientific progress, 4(5), 99-107.

Ortiqovich, Q. R., & Nurmamatovich, T. I. (2023). NEYRON TARMOQNI O ‘QITISH USULLARI VA ALGORITMLARI. Scientific Impulse, 1(10), 37-46.

Tojimamatov, I. N., Mamalatipov, O., Rahmatjonov, M., & Farhodjonov, S. (2023). NEYRON TARMOQLAR. Наука и инновация, 1(1), 4-12.

Tojimamatov, I. N., Mamalatipov, O. M., & Karimova, N. A. (2022). SUN’IY NEYRON TARMOQLARINI O ‘QITISH USULLARI. Oriental renaissance: Innovative, educational, natural and social sciences, 2(12), 191-203.

Muqaddam, A., Shahzoda, A., Gulasal, T., & Isroil, T. (2023). NEYRON TARMOQLARDAN FOYDALANIB TASVIRLARNI ANIQLASH USULLARI. SUSTAINABILITY OF EDUCATION, SOCIO-ECONOMIC SCIENCE THEORY, 1(8), 63-74.

Raximov, Q. O., Tojimamatov, I. N., & Xo, H. R. O. G. L. (2023). SUNIY NЕYRON TARMOQLARNI UMUMIY TASNIFI. Scientific progress, 4(5), 99-107.

Raxmatjonova, M. N., & Tojimamatov, I. N. (2023). BIZNESDA SUNIY INTELEKT TEXNOLOGYALARI VA ULARNI AHAMIYATI. Лучшие интеллектуальные исследования, 11(3), 46-52.

Nurmatovich, T. I. (2024). Bir qatlamli va ko ‘p qatlamli neyron to ‘rlari. ILM FAN XABARNOMASI, 1(1), 190-191.

Nurmamatovich, T. I., & Kudratullo o‘g, K. U. B. (2024). THE EVOLUTION OF AI: FROM EARLY CONCEPTS TO MODERN BREAKTHROUGHS. Лучшие интеллектуальные исследования, 20(2), 42-46.

Tojimamatov, I., & G’ulomjonova, S. (2024). NEYRO KOMPYUTERLAR VA ULARNING ARXITEKTURASI. Development of pedagogical technologies in modern sciences, 3(6), 10-16.

Tojimamatov, I., & Jo’rayeva, M. (2024). BOLSMAN MASHINASI VA UNING AHAMIYATI. Development and innovations in science, 3(4), 154-160.

Nurmamatovich, T. I., & Nozimaxon, E. (2024). Chiqish qatlami vaznlarni sozlash va xatoliklarni teskari tarqalishi algoritmi. ILM FAN XABARNOMASI, 1(1), 29-35.

Tojimamatov, I., & Ismoiljonova, O. (2024). BIR QATLAMLI PERCEPTRONNI O ‘QITISH. Академические исследования в современной науке, 3(12), 153-158.

Nurmamatovich, T. I. (2024, April). BIR QATLAMLI PERCEPTRONNI O ‘QITISH. In " CANADA" INTERNATİONAL CONFERENCE ON DEVELOPMENTS İN EDUCATİON, SCİENCESAND HUMANİTİES (Vol. 17, No. 1).

Nurmamatovich, T. I. (2024, April). SUN'IY NEYRONNING MATEMATIK MODELI HAMDA FAOLLASHTIRISH FUNKTSIYALARI. In " USA" INTERNATIONAL SCIENTIFIC AND PRACTICAL CONFERENCE TOPICAL ISSUES OF SCIENCE (Vol. 17, No. 1).

Nurmamatovich, T. I. (2024, April). SUNIY NEYRON TORLARINI ADAPTIV KUCHAYTIRISH USULI. In " USA" INTERNATIONAL SCIENTIFIC AND PRACTICAL CONFERENCE TOPICAL ISSUES OF SCIENCE (Vol. 17, No. 1).

Nurmamatovich, T. I. (2024). XEBB O’QITISH QOIDASI. " GERMANY" MODERN SCIENTIFIC RESEARCH: ACHIEVEMENTS, INNOVATIONS AND DEVELOPMENT PROSPECTS, 17(1).

Tojimamatov, I., & G’ulomjonova, S. (2024). NEYRO KOMPYUTERLAR VA ULARNING ARXITEKTURASI. Development of pedagogical technologies in modern sciences, 3(6), 10-16.

Published

2024-05-25