Improving the Food and Agriculture Sector Tehran Stock Exchange by using Artificial Intelligence
Subject Areas :
Agriculture Marketing and Commercialization
Hamid Mir
1
(
Department of accounting, Zahedan Branch, Islamic Azad University, Zahedan, Iran,
)
Ramin Zaraatgari
2
(
Accounting Department of Sistan and Baluchestan University, Zahedan,
)
Reza Sotoudeh
3
(
Department of Accounting, Zahedan Branch, Islamic Azad University, Zahedan, Iran
)
Received: 2021-02-09
Accepted : 2021-09-05
Published : 2021-12-01
Keywords:
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