nep-for New Economics Papers
on Forecasting
Issue of 2025–03–31
three papers chosen by
Malte Knüppel, Deutsche Bundesbank


  1. Boosting Store Sales Through Ensemble Learning-Informed Promotional Decisions By Yue Qiu; Wenbin Wang; Tian Xie; Jun Yu; Xinyu Zhang
  2. Development of the Near-Term Forecast of Inflation for Uzbekistan: Application of FAVAR and BVAR models By Temurbek Boymirzaev
  3. Transformer Based Time-Series Forecasting for Stock By Shuozhe Li; Zachery B Schulwol; Risto Miikkulainen

  1. By: Yue Qiu (Finance School, Shanghai University of International Business and Economics, Shanghai, China); Wenbin Wang (Finance School, Shanghai University of International Business and Economics, Shanghai, China); Tian Xie (College of Business, Shanghai University of Finance and Economics, Shanghai, China); Jun Yu (Faculty of Business Administration, University of Macau, Macao); Xinyu Zhang (Academy of Mathematics and Systems Science, Chinese Academy of Sciences, Beijing, China)
    Abstract: Many real-world analytics problems, such as forecasting sales of fashion products, involve uncertain and heterogeneous demand, requiring prescriptive analytics to incorporate multiple covariates and address the inherent challenge of model uncertainty. Traditional predict-thenoptimize (PTO) approaches typically rely on a single predictive model, overlooking model uncertainty. To address this, we propose an ensemble learning framework that integrates Mallows-type model averaging into the PTO paradigm, leveraging diverse candidate models with varying covariates to enhance forecast accuracy and decision robustness. Theoretically, we prove that the weighted forecasts achieve asymptotic optimality under mild conditions and establish finite-sample risk bounds, ensuring stable performance even in limited-data settings. We empirically evaluate the proposed framework using weekly store-level sales data from an internationally recognized footwear brand in China. The forecasting exercise demonstrates that our approach consistently achieves the lowest prediction risk, improving forecast accuracy by 4.72% to 7.41% compared to the best-performing alternatives without weighted forecast features. In the subsequent decision optimization exercise, we identify gift, combo, and discount promotions as key decision variables and show that our framework delivers the highest predicted sales responses on average, outperforming alternative forecasting methods and existing data-driven decision frameworks.
    Keywords: data-driven, model uncertainty, model averaging, prescriptive analytics, machine learning, fashion sales forecasting
    Date: 2025–03
    URL: https://d.repec.org/n?u=RePEc:boa:wpaper:202525
  2. By: Temurbek Boymirzaev (Central Bank of Uzbekistan)
    Abstract: This study investigates the application of Factor-Augmented Vector Autoregression (FAVAR) and Bayesian Vector Autoregression (BVAR) models for inflation forecasting. FAVAR models deal with high-dimensional data by extracting latent factors from extensive macroeconomic indicators, while BVAR models incorporate prior distributions to enhance forecast stability and precision in data-limited environments. Employing a comprehensive dataset of Uzbekistan-specific inflation determinants, we conduct an empirical assessment of both models, examining their predictive accuracy. Findings from this research aim to optimize inflation forecasting methodologies, providing the Central Bank of Uzbekistan with robust, data-driven insights for improved policy formulation.
    Keywords: FAVAR; BVAR; inflation forecast; forecast combination
    JEL: E30 E31 E37
    Date: 2025–02–27
    URL: https://d.repec.org/n?u=RePEc:gii:giihei:heidwp06-2025
  3. By: Shuozhe Li; Zachery B Schulwol; Risto Miikkulainen
    Abstract: To the naked eye, stock prices are considered chaotic, dynamic, and unpredictable. Indeed, it is one of the most difficult forecasting tasks that hundreds of millions of retail traders and professional traders around the world try to do every second even before the market opens. With recent advances in the development of machine learning and the amount of data the market generated over years, applying machine learning techniques such as deep learning neural networks is unavoidable. In this work, we modeled the task as a multivariate forecasting problem, instead of a naive autoregression problem. The multivariate analysis is done using the attention mechanism via applying a mutated version of the Transformer, "Stockformer", which we created.
    Date: 2025–01
    URL: https://d.repec.org/n?u=RePEc:arx:papers:2502.09625

This nep-for issue is ©2025 by Malte Knüppel. It is provided as is without any express or implied warranty. It may be freely redistributed in whole or in part for any purpose. If distributed in part, please include this notice.
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