An Algorithmic Crystal Ball: Forecasts-based on Machine Learning

An Algorithmic Crystal Ball: Forecasts-based on Machine Learning

Author: Jin-Kyu Jung

Publisher: International Monetary Fund

Published: 2018-11-01

Total Pages: 34

ISBN-13: 1484380630

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Forecasting macroeconomic variables is key to developing a view on a country's economic outlook. Most traditional forecasting models rely on fitting data to a pre-specified relationship between input and output variables, thereby assuming a specific functional and stochastic process underlying that process. We pursue a new approach to forecasting by employing a number of machine learning algorithms, a method that is data driven, and imposing limited restrictions on the nature of the true relationship between input and output variables. We apply the Elastic Net, SuperLearner, and Recurring Neural Network algorithms on macro data of seven, broadly representative, advanced and emerging economies and find that these algorithms can outperform traditional statistical models, thereby offering a relevant addition to the field of economic forecasting.


Deus ex Machina? A Framework for Macro Forecasting with Machine Learning

Deus ex Machina? A Framework for Macro Forecasting with Machine Learning

Author: Marijn A. Bolhuis

Publisher: International Monetary Fund

Published: 2020-02-28

Total Pages: 25

ISBN-13: 1513531727

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We develop a framework to nowcast (and forecast) economic variables with machine learning techniques. We explain how machine learning methods can address common shortcomings of traditional OLS-based models and use several machine learning models to predict real output growth with lower forecast errors than traditional models. By combining multiple machine learning models into ensembles, we lower forecast errors even further. We also identify measures of variable importance to help improve the transparency of machine learning-based forecasts. Applying the framework to Turkey reduces forecast errors by at least 30 percent relative to traditional models. The framework also better predicts economic volatility, suggesting that machine learning techniques could be an important part of the macro forecasting toolkit of many countries.


Overfitting in Judgment-based Economic Forecasts: The Case of IMF Growth Projections

Overfitting in Judgment-based Economic Forecasts: The Case of IMF Growth Projections

Author: Klaus-Peter Hellwig

Publisher: International Monetary Fund

Published: 2018-12-07

Total Pages: 43

ISBN-13: 1484386183

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I regress real GDP growth rates on the IMF’s growth forecasts and find that IMF forecasts behave similarly to those generated by overfitted models, placing too much weight on observable predictors and underestimating the forces of mean reversion. I identify several such variables that explain forecasts well but are not predictors of actual growth. I show that, at long horizons, IMF forecasts are little better than a forecasting rule that uses no information other than the historical global sample average growth rate (i.e., a constant). Given the large noise component in forecasts, particularly at longer horizons, the paper calls into question the usefulness of judgment-based medium and long-run forecasts for policy analysis, including for debt sustainability assessments, and points to statistical methods to improve forecast accuracy by taking into account the risk of overfitting.


Proceedings of the 2nd International Conference on Emerging Technologies and Intelligent Systems

Proceedings of the 2nd International Conference on Emerging Technologies and Intelligent Systems

Author: Mohammed A. Al-Sharafi

Publisher: Springer Nature

Published: 2022-12-12

Total Pages: 703

ISBN-13: 3031204298

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This book sheds light on the recent research directions in intelligent systems and their applications. It involves four main themes: artificial intelligence and data science, recent trends in software engineering, emerging technologies in education, and intelligent health informatics. The discussion of the most recent designs, advancements, and modifications of intelligent systems, as well as their applications, is a key component of the chapters contributed to the aforementioned subjects.


Integrated Uncertainty in Knowledge Modelling and Decision Making

Integrated Uncertainty in Knowledge Modelling and Decision Making

Author: Van-Nam Huynh

Publisher: Springer Nature

Published: 2023-10-26

Total Pages: 351

ISBN-13: 3031467752

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These two volumes constitute the proceedings of the 10th International Symposium on Integrated Uncertainty in Knowledge Modelling and Decision Making, IUKM 2023, held in Kanazawa, Japan, during November 2-4, 2023. The 58 full papers presented were carefully reviewed and selected from 107 submissions. The papers deal with all aspects of research results, ideas, and experiences of application among researchers and practitioners involved with all aspects of uncertainty modelling and management.


International Conference on Advanced Intelligent Systems for Sustainable Development

International Conference on Advanced Intelligent Systems for Sustainable Development

Author: Janusz Kacprzyk

Publisher: Springer Nature

Published: 2023-06-09

Total Pages: 995

ISBN-13: 3031263847

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This book describes the potential contributions of emerging technologies in different fields as well as the opportunities and challenges related to the integration of these technologies in the socio-economic sector. In this book, many latest technologies are addressed, particularly in the fields of computer science and engineering. The expected scientific papers covered state-of-the-art technologies, theoretical concepts, standards, product implementation, ongoing research projects, and innovative applications of Sustainable Development. This new technology highlights, the guiding principle of innovation for harnessing frontier technologies and taking full profit from the current technological revolution to reduce gaps that hold back truly inclusive and sustainable development. The fundamental and specific topics are Big Data Analytics, Wireless sensors, IoT, Geospatial technology, Engineering and Mechanization, Modeling Tools, Risk analytics, and preventive systems.


Internet Science

Internet Science

Author: Samira El Yacoubi

Publisher: Springer Nature

Published: 2019-11-25

Total Pages: 362

ISBN-13: 3030347702

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This book constitutes the proceedings of the 6th International Conference on Internet Science held in Perpignan, France, in December 2019. The 30 revised full papers presented were carefully reviewed and selected from 45 submissions. The papers detail a multidisciplinary understanding of the development of the Internet as a societal and technological artefact which increasingly evolves with human societies.


Forecasting with Artificial Intelligence

Forecasting with Artificial Intelligence

Author: Mohsen Hamoudia

Publisher: Springer Nature

Published: 2023-10-22

Total Pages: 441

ISBN-13: 3031358791

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This book is a comprehensive guide that explores the intersection of artificial intelligence and forecasting, providing the latest insights and trends in this rapidly evolving field. The book contains fourteen chapters covering a wide range of topics, including the concept of AI, its impact on economic decision-making, traditional and machine learning-based forecasting methods, challenges in demand forecasting, global forecasting models, meta-learning and feature-based forecasting, ensembling, deep learning, scalability in industrial and optimization applications, and forecasting performance evaluation. With key illustrations, state-of-the-art implementations, best practices, and notable advances, this book offers practical insights into the theory and practice of AI-based forecasting. This book is a valuable resource for anyone involved in forecasting, including forecasters, statisticians, data scientists, business analysts, or decision-makers.


Improving Accuracy Without Losing Interpretability

Improving Accuracy Without Losing Interpretability

Author: Yiqi Sun

Publisher:

Published: 2022

Total Pages: 0

ISBN-13:

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In time series forecasting, decomposition-based algorithms break aggregate data into meaningful components and are therefore appreciated for their particular advantages in interpretability. Recent algorithms often combine machine learning (hereafter ML) methodology with decomposition to improve prediction accuracy. However, incorporating ML is generally considered to sacrifice interpretability inevitably. In addition, existing hybrid algorithms usually rely on theoretical models with statistical assumptions and focus only on the accuracy of aggregate predictions, and thus suffer from accuracy problems, especially in component estimates. In response to the above issues, this research explores the possibility of improving accuracy without losing interpretability in time series forecasting. We first quantitatively define interpretability for data-driven forecasts and systematically review the existing forecasting algorithms from the perspective of interpretability. Accordingly, we propose the W-R algorithm, a hybrid algorithm that combines decomposition and ML from a novel perspective. Specifically, the W-R algorithm uses ML to modify the estimates of all components simultaneously, while other algorithms predict the components only by individual ML modules. We mathematically analyze the theoretical basis of the algorithm and validate its performance through extensive numerical experiments. In general, the W-R algorithm outperforms all decomposition-based and ML benchmarks. Based on P50_QL, a common evaluation indicator for quantile prediction, the algorithm relatively improves by 8.76% in accuracy on the practical sales forecasts of JD.com and 77.99% on a public dataset of electricity loads. This research offers an innovative perspective to combine the statistical and ML algorithms, and JD.com has implemented the W-R algorithm to make accurate sales predictions and guide its marketing activities.