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Düzce İktisat Dergisi 2025, Clt. 6(2) 89-100

The Effects of Artificial Intelligence on the Labour Market: The Case of China

Aisha Rafiatou MATSAN DJELANI; Hande AKSÖZ YILMAZ

ss. 89 - 100

Yayın Tarihi: Aralık 26, 2025  |   Görüntüleme Sayısı: 18/6   |   İndirilme Sayısı: 22/7


Özet

The aim of this study is to reveal the effects of artificial intelligence on China's labour market in the period 1991-2021. The ARDL approach is used to practically analyse the effects of artificial intelligence on China's labour market in the 1991-2021 period. In the model, Chinese data on variables such as unemployment, human capital, number of patents, R&D expenditures and labour force are used. The findings of the study show that the only significant determinant of unemployment in China is labour force. The result of this analysis, in which the effect of artificial intelligence on unemployment cannot be determined, once again confirms the fact that the Chinese government has implemented policies that keep unemployment more stable and policies towards the labour market in the 1991-2021 period.

Anahtar kelimeler: Artificial Intelligence, Chinese Labor Market, ARDL Method


Bu makaleye nasıl atıf yapılır

APA 7th edition
YILMAZ, A.R.M.D.H.A. (2025). The Effects of Artificial Intelligence on the Labour Market: The Case of China. Düzce İktisat Dergisi, 6(2), 89-100.

Harvard
YILMAZ, A. (2025). The Effects of Artificial Intelligence on the Labour Market: The Case of China. Düzce İktisat Dergisi, 6(2), pp. 89-100.

Chicago 16th edition
YILMAZ, Aisha Rafiatou MATSAN DJELANI; Hande AKSOZ (2025). "The Effects of Artificial Intelligence on the Labour Market: The Case of China". Düzce İktisat Dergisi 6 (2):89-100.

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