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Machine Learning for Microeconomic Forecasting is a comprehensive guide that bridges the gap between traditional economic forecasting methods and cutting-edge machine learning techniques. This book equips economists, policymakers, and analysts with the tools and knowledge necessary to leverage machine learning algorithms for accurate and insightful microeconomic forecasts. Through a blend of theoretical foundations and practical applications, readers will learn how machine learning can enhance the accuracy, robustness, and timeliness of microeconomic forecasts across various domains, including…mehr

Produktbeschreibung
Machine Learning for Microeconomic Forecasting is a comprehensive guide that bridges the gap between traditional economic forecasting methods and cutting-edge machine learning techniques. This book equips economists, policymakers, and analysts with the tools and knowledge necessary to leverage machine learning algorithms for accurate and insightful microeconomic forecasts. Through a blend of theoretical foundations and practical applications, readers will learn how machine learning can enhance the accuracy, robustness, and timeliness of microeconomic forecasts across various domains, including labor markets, consumer behavior, and financial markets. Case studies and real-world examples illustrate the potential of machine learning to uncover hidden patterns in complex economic data, improve forecast accuracy, and inform strategic decision-making.
Autorenporträt
Ms. Jyoti Kataria is currently serving as Assistant Professor, School of Engineering and Technology, K. R. Mangalam University. Ms. Kataria is currently pursuing her Ph.D. in the field of Computer Science and Engineering. Her research interests include Machine Leaning, Deep Learning and Computer Vision.