Книги
Bayesian Hierarchical Models
Congdon, P.D. Bayesian Hierarchical Models : With Applications Using R / P. D. Congdon. — 2nd ed.. — Boca RatonLondonNew York : CRC Press, 2020. — 579 p.: il.. — Index: p. 565-579. — ISBN 978-1-4987-8575-4 : 10134.96 р.
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УДК:330.4
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ISBN:978-1-4987-8575-4
Рекомендовано к ознакомлению
- 1. Anatolyev, S. Methods for estimation and inference in modern econometrics / S. Anatolyev, N. Gospodinov. — Boca Raton : CRC Press, 2019. — 219 p.. — ISBN 978-0-367-38266-7.
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- 6. Molchanov, I.S. Random sets in econometrics / I. S. Molchanov, F. Molinari. — Cambridge : Cambridge University Press, 2018. — 179 с.. — (Econometric society monographs). — ISBN 978-1-107-54873-2.
- 7. Greene, W.H. Econometric analysis / W. H. Greene. — 7th ed., international ed.. — Harlow : Pearson, 2012. — 1239 p.. — ISBN 978-0-273-75356-8.
- 8. Racine, J.S. Reproducible econometrics using R / J. S. Racine. — New York : Oxford University Press, 2019. — 293 p.. — ISBN 978-0-19-090066-3.
- 9. Styrin, K. Forecasting inflation in Russia by dynamic model averaging / K. Styrin. — Moscow : Bank of Russia, 2018. — 44 p.. — (Working paper series. 39, december).
- 10. Грин, У.Г. Эконометрический анализ / У. Г. Грин. — Москва : Дело, 2016. — С. 739-1476. — (Академический учебник). — ISBN 978-5-7749-1158-5.
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