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Using Data Mining in the Sentiment Analysis Process on the Financial Market Cover

Using Data Mining in the Sentiment Analysis Process on the Financial Market

Open Access
|Feb 2023

References

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Language: English
Page range: 36 - 58
Published on: Feb 8, 2023
In partnership with: Paradigm Publishing Services
Publication frequency: 2 issues per year

© 2023 Marian Pompiliu Cristescu, Raluca Andreea Nerişanu, Dumitru Alexandru Mara, published by Bucharest University of Economic Studies
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