On the information content of explainable artificial intelligence for quantitative approaches in finance
| Year of publication: |
2024
|
|---|---|
| Authors: | Berger, Theo |
| Published in: |
OR Spectrum. - Berlin, Heidelberg : Springer, ISSN 1436-6304. - Vol. 47.2024, 1, p. 177-203
|
| Publisher: |
Berlin, Heidelberg : Springer |
| Subject: | Finance | Machine learning | Tree ensembles | Interpretable machine learning | Equity premium |
| Type of publication: | Article |
|---|---|
| Type of publication (narrower categories): | Article |
| Language: | English |
| Other identifiers: | 10.1007/s00291-024-00769-9 [DOI] hdl:10419/323264 [Handle] |
| Classification: | C33 - Models with Panel Data ; c58 ; G17 - Financial Forecasting ; G23 - Pension Funds; Other Private Financial Institutions |
| Source: |
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Berger, Theo, (2023)
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Automated machine learning and asset pricing
Healy, Jerome V., (2024)
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Diverging roads: theory-based vs. machine learning-implied stock risk premia
Grammig, Joachim, (2020)
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Dependency modeling and value-at-risk forecasts for financial portfolios
Berger, Theo, (2013)
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Berger, Theo, (2023)
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Berger, Theo, (2016)
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