Abstract

It is believed that the huge amount of information delivered to the consumers through mass media, including television and social networks, may affect consumers’ behavior. The purpose of this study was to forecast the amount required to purchase pork belly meat by using unstructured data such as broadcast news, TV programs/shows and social network as well as structured data such as consumer panel data, retail and wholesale prices and production outputs in order to prove that mass media data release can occur ahead of actual economic activities and consumer behavior can be predicted by using these data. By using structured and unstructured data from 2010 to 2016 and five forecasting algorithms (autoregressive exogenous model and vector error correction model for time series, gradient boosting and random forest for machine learning, and long short-term memory for recurrent neural network), the amounts required to purchase pork belly meat in 2017 were forecasted and compared with the actual amounts to validate model accuracy. Our findings suggest that when unstructured data were combined with structured data, the forecast pattern is improved. To date, our study is the first report that forecasts the demand of pork meat by using structured and unstructured data.

Highlights

  • There was an outbreak of African swine fever in South Korea, which severely affected pork meat consumption and price [1]

  • The purpose of this study was to forecast pork consumption in terms of the amount required to purchase pork belly meat by using unstructured data, such as broadcast news, TV programs/shows and social network as well as structured data, such as consumer panel data, retail and wholesale prices and production outputs in order to prove that mass media data release, including various unstructured data can predate actual economic activities, and consumer behavior can be predicted by using these data

  • We aimed to demonstrate that broadcast news, TV programs/shows and social network could be used to forecast demands of agri-food by using pork belly meat data, one of the popular meat products for Korean consumers

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Summary

Introduction

There was an outbreak of African swine fever in South Korea, which severely affected pork meat consumption and price [1]. The purpose of this study was to forecast pork consumption in terms of the amount required to purchase pork belly meat by using unstructured data, such as broadcast news, TV programs/shows and social network as well as structured data, such as consumer panel data, retail and wholesale prices and production outputs in order to prove that mass media data release, including various unstructured data can predate actual economic activities, and consumer behavior can be predicted by using these data. Prediction of economic activities by using social network data or internet search data have been reported in agriculture [4,8,9,10,11]. We aimed to demonstrate that broadcast news, TV programs/shows and social network as unstructured data combined with

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