Пожалуйста, используйте этот идентификатор, чтобы цитировать или ссылаться на этот ресурс:
http://earchive.tpu.ru/handle/11683/132432
Название: | Predicting Firm's Performance Based on Panel Data: Using Hybrid Methods to Improve Forecast Accuracy |
Авторы: | Martyushev, Nikita Vladimirovich Spitsin, Vladislav Vladimirovich Klyuev, Roman Vladimirovich Spitsina (Spitsyna), Lubov Yurievna Konyukhov, Vladimir Yurjevich Oparina, Tatjyana Anatoljevna Boltrushevich, Aleksandr Evgenjevich |
Ключевые слова: | firm's performance; profitability prediction; ROA; ROE; panel data; machine learning; CatBoost; long short-term memory (LSTM); clustering; seasonal decomposition of time series by LOESS (STL); hybrid methods |
Дата публикации: | 2025 |
Издатель: | MDPI AG |
Библиографическое описание: | Predicting Firm's Performance Based on Panel Data: Using Hybrid Methods to Improve Forecast Accuracy / Nikita V. Martyushev, Vladislav Spitsin, Roman V. Klyuev [et al.] // Mathematics. — 2025. — Vol. 13, iss. 8. — Article number 1247, 33 p.. |
Аннотация: | The problem of predicting profitability is exceptionally relevant for investors and company owners making decisions about investment and business development. The global literature contains a number of studies where researchers predict the profitability of firms using various methods, including modern machine learning. However, these works hardly take advantage of panel data. This paper takes advantage of additional capabilities offered by panel data and proposes hybrid forecasting methods based on panel data, which allow significantly improving the accuracy of predicting the profitability. Our calculations show that when predicting the profitability, investors and company owners should take into account the profitability of the previous years and the trend in its change. The work shows that this approach can be successfully applied to high-tech companies whose profitability is characterised by increased volatility. Prediction forecasting includes STL-decomposition of time series, regression with random effects and machine learning (LSTM and CatBoost), and clustering. The training sample includes 1811 companies and data for 2013-2018 (panel data, 10,866 observations). The test sample contains data for these companies for 2019. As a result, the authors propose an approach significantly improving the accuracy of predicting ROA and ROE based on the panel nature of the data. The panel data allowed using the profitability of the previous years in forecast models and applying the STL-decomposition of the profitability of the previous years into three variables (Trend, Seasonal, and Residual), considerably improving the quality of the constructed forecast models (STL-CatBoost, STL-LSTM, and STL-RE hybrid models) |
URI: | http://earchive.tpu.ru/handle/11683/132432 |
Располагается в коллекциях: | Репринты научных публикаций |
Файлы этого ресурса:
Файл | Размер | Формат | |
---|---|---|---|
reprint-680061.pdf | 3,2 MB | Adobe PDF | Просмотреть/Открыть |
Лицензия на ресурс: Лицензия Creative Commons