Simulating Using Deep Learning The World Trade Forecasting of Export-Import Exchange Rate Convergence Factor During COVID-19
Effat Ara Easmin Lucky, Md. Mahadi Hasan Sany, Mumenunnesa Keya, Md., Moshiur Rahaman, Umme Habiba Happy, Sharun Akter Khushbu, Md. Arid Hasan

TL;DR
This paper develops a deep learning-based time series model using LSTM to accurately forecast global trade fluctuations over 180 days during COVID-19, aiding economic decision-making.
Contribution
It introduces a novel application of LSTM for 180-day trade forecasting during COVID-19 using comprehensive historical trade data.
Findings
LSTM model effectively predicts daily import-export fluctuations.
Forecasts align closely with actual trade data during COVID-19.
Time series analysis reveals key factors influencing trade changes.
Abstract
By trade we usually mean the exchange of goods between states and countries. International trade acts as a barometer of the economic prosperity index and every country is overly dependent on resources, so international trade is essential. Trade is significant to the global health crisis, saving lives and livelihoods. By collecting the dataset called "Effects of COVID19 on trade" from the state website NZ Tatauranga Aotearoa, we have developed a sustainable prediction process on the effects of COVID-19 in world trade using a deep learning model. In the research, we have given a 180-day trade forecast where the ups and downs of daily imports and exports have been accurately predicted in the Covid-19 period. In order to fulfill this prediction, we have taken data from 1st January 2015 to 30th May 2021 for all countries, all commodities, and all transport systems and have recovered what the…
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Taxonomy
TopicsMarket Dynamics and Volatility · Stock Market Forecasting Methods · Energy Load and Power Forecasting
MethodsTanh Activation · Sigmoid Activation · Attentive Walk-Aggregating Graph Neural Network · Long Short-Term Memory
