Publication: ECONOMIC FORECASTING BASED ON BIG DATA ANALYTICS: ASIAN REGION
DOI
Type:
Thesis
Date
2024-12
Authors
Journal Title
Journal ISSN
Volume Title
Publisher
SLIIT
Abstract
This paper examines the effectiveness of Long Short-Term Memory networks, a type of
Recurrent Neural Network, in enhancing economic forecasts in the Asian region. Traditional
forecasting methods face challenges due to the complexity and rapid changes in these
markets. Analyzing data from 1960 to 2022, the study shows that Long Short-Term Memory
models provide more accurate predictions of economic variables like GDP growth and
inflation rates compared to basic trend analysis. The improved accuracy of Long Short-Term
Memory models has significant implications for policymakers, investors, and businesses,
enabling better decision-making and policy formulation. The study also contributes to the
advancement of knowledge by demonstrating the potential of big data analytics in economic
forecasting and suggesting future research directions that incorporate more data sources and
machine learning algorithms. Policymakers are encouraged to integrate these advanced
forecasting methods to meet the demands of the modern economic environment. Forecasting
economic activity is very useful in the formulation of sound fiscal policies, determination of
rates of interest, and control of investment. In the Asian region particularly the analytical
environment and difficulty in characterizing economies and fast-changing markets are issues
of concern particularly when applying classical forecasts. As part of big data analytics, this
paper examines the use of Long Short-Term Memory (LSTM) a kind of Recurrent Neural
Network (RNN) in enhancing the accuracy of the economic forecast. Using a sample of the
period from 1960 to 2022 actual data compared with the application of LSTM models and
basic trend analysis, the authors show the effectiveness of deep learning at predicting future
values.
Description
Keywords
Long Short-Term Memory, Recurrent Neural Network, Big Data, Economic Growth, Gross Domestic Product
