Can central bank speeches predict financial market turbulence? Evidence from an adaptive NLP sentiment index analysis using XGBoost machine learning technique

Central Bank Review - Tập 21 - Trang 141-153 - 2021
Anastasios Petropoulos1, Vasilis Siakoulis1
1Bank of Greece, Amerikis 3, Athens, 10564, Greece

Tài liệu tham khảo

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