EKONOMETRIK BAHOLASHNING EPISTEMOLOGIK CHEGARALARI: GIBRID METODOLOGIYA

EKONOMETRIK BAHOLASHNING EPISTEMOLOGIK CHEGARALARI: GIBRID METODOLOGIYA

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  • Sattorov Sanjar Abdumurodovich

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https://doi.org/10.5281/zenodo.20132428

##article.subject##:

epistemologiya, ekonometrika, gibrid metodologiya, kauzallik, identifikatsiya muammosi, model turgʻunligi, sifatli tadqiqot, qiyosiy metodologiya.

##article.abstract##

Ushbu maqolada ekonometrik baholashning epistemologik asoslari va uning metodologik chegaralari nazariy
jihatdan tahlil etildi. Kauzallik taxmini, identifikatsiya muammosi va model turgʻunligi masalalari izchil tarzda koʻrib chiqildi.
Pozitivizm, post-pozitivizm va pragmatizm doirasidagi epistemologik pozitsiyalar qiyosiy tahlil qilindi hamda ularning
iqtisodiy tadqiqot amaliyotiga taʼsiri baholandi. Gibrid metodologiya — miqdoriy va sifatli yondashuvlarning epistemologik
jihatdan asoslangan integratsiyasi — kauzal xulosaning ishonchliligini oshirishda muhim omil sifatida koʻrsatildi. Aniq
identifikatsiya strategiyalari (instrumental oʻzgaruvchilar, keskin regressiya dizayni, farqlar-farqlari usuli) epistemologik
quvvat va cheklovlar nuqtai nazaridan taqqoslandi. Maqolada gibrid arxitekturaning uch qavatli tuzilmasi taklif etilib, uning
amaliy konfiguratsiyasi va metodologik qoʻllanilish shartlari belgilandi. Natijalar qiyosiy iqtisodiyot va tranzit iqtisodiyotlar
kontekstida muhim metodologik ahamiyat kasb etadi.

Биография автора

Sattorov Sanjar Abdumurodovich

Surxondaryo viloyati pedagogik mahorat markazi direktor o‘rinbosari,
iqtisodiyot fanlari bo‘yicha falsafa doktori

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2025-12-01
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