Sun’iy intellekt asosida tadqiqotchilik faoliyati ko‘rsatkichlarini baholashning matematik modeli va algoritmini ishlab chiqish

Mualliflar

  • Elmurod Zaylobidinovich Abdullayev

    Andijan State University image/svg+xml

Kalit so‘zlar: sun’iy intellekt, matematik model, algoritm, mashinali o‘qitish, ma’lumotlarni qayta ishlash, intellektual tizim, klassifikatsiya, ma’lumotlar tahlili, baholash modeli, informatikaning nazariy asoslari

Annotatsiya

Maqolada sun’iy intellekt texnologiyalari asosida tadqiqotchilik faoliyati ko‘rsatkichlarini baholashning matematik modeli va algoritmik ta’minotini ishlab chiqish masalalari yoritilgan. Tadqiqot jarayonida tadqiqotchilik faoliyatini tavsiflovchi parametrlar tizimi shakllantirilib, ularning o‘zaro bog‘liqligi matematik modellashtirish usullari yordamida tahlil qilingan. Taklif etilgan model ma’lumotlarni yig‘ish, qayta ishlash, belgilarni ajratish va klassifikatsiyalash bosqichlarini o‘z ichiga oladi. Baholash jarayonida mashinali o‘qitish algoritmlaridan foydalanish orqali tadqiqotchilik faoliyati ko‘rsatkichlarini avtomatik aniqlash imkoniyati yaratilgan. Tadqiqot natijalari ishlab chiqilgan modelning yuqori aniqlik va ishonchlilikka ega ekanligini ko‘rsatadi. Taklif etilgan yondashuv intellektual axborot tizimlari, ekspert tizimlari va qaror qabul qilishni qo‘llab-quvvatlash tizimlarida samarali qo‘llanilishi mumkin.

Foydalanilgan adabiyotlar

1. Russell S., Norvig P. Artificial Intelligence: A Modern Approach. 4th Edition. Pearson Education, 2021.

2. Mitchell T.M. Machine Learning. McGraw-Hill, 1997.

3. Goodfellow I., Bengio Y., Courville A. Deep Learning. MIT Press, 2016.

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

5. Han J., Kamber M., Pei J. Data Mining: Concepts and Techniques. Morgan Kaufmann, 2011.

6. Alpaydin E. Introduction to Machine Learning. MIT Press, 2020.

7. Géron A. Hands-On Machine Learning with Scikit-Learn, Keras and TensorFlow. O’Reilly Media, 2022.

8. Nilsson N.J. The Quest for Artificial Intelligence. Cambridge University Press, 2010.

9. Murphy K.P. Machine Learning: A Probabilistic Perspective. MIT Press, 2012.

10. Onwujekwe G., Weistroffer H.R. Intelligent Decision Support Systems: An Analysis of the Literature and a Framework for Development. Information Systems Frontiers, 2025.

11. Explainable Artificial Intelligence-Based Decision Support Systems: A Recent Review. Electronics, 2024.

12. Kelleher J.D., Namee B.M., D’Arcy A. Fundamentals of Machine Learning for Predictive Data Analytics. MIT Press, 2020.

13. Aggarwal C.C. Neural Networks and Deep Learning. Springer, 2018.

14. Shalev-Shwartz S., Ben-David S. Understanding Machine Learning: From Theory to Algorithms. Cambridge University Press, 2014.

15. Witten I.H., Frank E., Hall M.A. Data Mining: Practical Machine Learning Tools and Techniques. Morgan Kaufmann, 2016.