Projektinformation
Beskrivning
This project aims to deepen our understanding of financial markets through improvements in their modelling with machine learning methods. These methods will allow us to aggregate internet-derived information on sentiment and attention with other market anomalies and to analyze their non-linear interactions in order to better understand their role in asset pricing. We will use advanced language learning models for extraction of multi-dimensional sentiment-related features from financial news and social media texts and for analysis of their impact on market anomalies and market efficiency. We will use machine learning models to investigate cryptocurrency markets and to find new ways for modeling future cryptocurrency returns based on transaction data, order book data and internet derived sentiment and attention proxies. We expect that our research in the areas described above will also provide further insights into closely related areas of modeling of commodity prices, climate risk in finance, credit risk, option pricing and corporate finance issues as well.
Lekmannabeskrivning
A grant of around 245,000 euros from the Czech Science Foundation Grant (GACR).
| Akronym | GACR Grant No: 24-10008S |
|---|---|
| Status | Pågående |
| Gällande start-/slutdatum | 01.01.2024 → 31.12.2026 |
Samarbetspartner
- Hanken Svenska handelshögskolan (huvudsaklig)
- Prague University of Economics and Business
Finansiering
- Czech Grant Agency (GACR): 246 048,00 €
FN:s hållbara utvecklingsmål
År 2015 godkände FN:s medlemsstater 17 globala mål för en hållbar utveckling, för att utrota fattigdomen, skydda planeten och garantera välstånd för alla. Projektet bidrar till följande hållbara utvecklingsmål:
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SDG 9 – Hållbar industri, innovationer och infrastruktur
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SDG 12 – Hållbar konsumtion och produktion
Fingeravtryck
Utforska forskningsämnen som berörs av detta projekt. Dessa etiketter genereras baserat på underliggande ansökningar/anslag. Tillsammans bildar de ett unikt fingeravtryck.