A FRAMEWORK FOR USING MACHINE LEARNING AND DEEP LEARNING TECHNIQUES IN NOWCASTING: REAL-TIME DATA AND MULTIPLE FREQUENCY ECONOMIC DATA RELEASES FOR ECONOMISTS AND POLICY MAKERS
Journal: International Journal of Management (IJM) (Vol.14, No. 05)Publication Date: 2023-08-31
Authors : Rudrendu Kumar Paul Aryyama Kumar Jana;
Page : 95-99
Keywords : Nowcasting; Deep Learning; Machine Learning; Forecasts; LSTM; RNN; Artificial Intelligence;
Abstract
This paper presents a comprehensive framework that integrates machine learning and deep learning techniques, specifically stacked Long Short-Term Memory (LSTM) models, to enhance nowcasting in economics. The framework focuses on incorporating real-time data and multiple frequency economic data releases, including quarterly, monthly, and weekly metrics. By leveraging stacked LSTM models to capture complex patterns and trends in data, the framework aims to provide more accurate and timely GDP forecasts. This enables economists and policymakers to make well-informed decisions, particularly during contingent situations such as pandemics, natural disasters, or war. The proposed framework is highly generalizable and can be scaled for creating economic forecasts for any country with sufficient historical data, making it a valuable tool for international organizations and governments.
Other Latest Articles
- THE RISE OF OTT PLATFORM: CHANGING CONSUMER PREFERENCES
- LIQUIDITY RISK MANAGEMENT AND FINANCIAL STABILITY OF MANUFACTURING COMPANIES QUOTED ON THE NIGERIA STOCK EXCHANGE
- SCREENING OF ANTI-OBESITY POTENTIAL OF HIPPEASTRUM VITTATUM FLOWER EXTRACT IN EXPERIMENTAL RATS
- THE ROLE OF HUMAN RESOURCES IN CORPORATE SOCIAL RESPONSIBILITY – A STUDY IN NTPC, RAMAGUNDAM
- EFFECTS OF SOCIAL MEDIA ON ORGANIZATIONAL BEHAVIOR AND CULTURE
Last modified: 2023-09-25 18:26:52