CHATBOTLAR SAMARADORLIGINI BAHOLASHDA MATEMATIK MODELLASHTIRISH VA STATISTIK TAHLIL METODLARI
DOI:
https://doi.org/10.65164/qxg7cx48Kalit so‘zlar:
chatbot, deskriptiv statistika, korrelatsiya,regressiya, optimallashtirish, prognozlash, samaradorlikAbstrak
Maqolada onlayn ta’lim platformalarida qo‘llanilayotgan interaktiv chatbotlarning texnik va amaliy samaradorligini baholashda matematik metodlardan foydalanish masalasi kompleks yondashuv asosida o‘rganiladi. Maqolada asosiy maqsad sifatida: statistik ko‘rsatkichlar, korrelatsiya va regressiya tahlili, optimallashtirish hamda matematik modellashtirish usullarini real ma’lumotlar misolida qo‘llash orqali chatbot samaradorligini miqdoriy baholash va eng ta’sirchan omillarni aniqlash belgilangan. Buning uchun chatbotning 20 ta sessiyasi bo‘yicha yig‘ilgan ma’lumotlar asosida deskriptiv statistika, Pearson korrelatsiya koeffitsienti, ko‘p omilli regressiya modeli, prognozlash va chiziqli optimallashtirish masalalari bosqichma-bosqich bajarilgan. Natijalarga ko‘ra, X1 (Accuracy), X2 (Response Time), X3 (Completion Rate), X4( User Satisfaction) o‘zgaruvchilari chatbot samaradorligining eng kuchli determinantlari ekani, qolgan ko‘rsatkichlar esa qo‘shimcha diagnostik rol o‘ynashi aniqlangan. Natijalar ishonchliligi variatsiya koeffitsienti, t-test, determinatsiya koeffitsienti (R²), MAPE va RMSE kabi mezonlar yordamida baholangan. Olingan xulosalar interaktiv chatbotlarning texnik va pedagogik samaradorligini oshirish, ularni takomillashtirish yo‘nalishlarini belgilash hamda magistrantlar uchun matematik metodlar asosida tadqiqot olib borish metodikasini ishlab chiqishga xizmat qiladi
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