Sentiment Analysis as an Innovation in Inflation Forecasting in Romania
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Published:2024
Issue:2
Volume:15
Page:13-25
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ISSN:2227-6718
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Container-title:Marketing and Management of Innovations
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language:en
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Short-container-title:MMI
Author:
Simionescu Mihaela1ORCID, Nicula Alexandru-Sabin2ORCID
Affiliation:
1. University of Bucharest, Bucharest, Romania Academy of Romanian Scientists, Bucharest, Romania Institute for Economic Forecasting, Romanian Academy, Bucharest, Romania National Institute for Economic Research "Costin C. Kirițescu", Romanian Academy, Bucharest, Romania 2. Academy of Romanian Scientists, Bucharest, Romania National Institute for Economic Research "Costin C. Kirițescu", Romanian Academy, Bucharest, Romania
Abstract
Romania faced the highest inflation rate in the European Union at the beginning of 2024, but progress has been made compared to that in 2023 due to the increasing interest rate. This inflation stemmed from a combination of global and domestic factors (global factors such as the Russia-Ukraine war, supply chain disruptions caused by the COVID-19 pandemic and war, rising commodity prices, domestic factors such as wage and pension increases, tax and charge hikes, and a strategy of gradual increase in the monetary policy interest rate). The National Bank of Romania (NBR) uses a combination of monetary policy instruments to target inflation and provides quarterly forecasts. However, under uncertain conditions, numerical forecasts are less reliable, and the inclusion of sentiment analysis in forecasts might lead to innovation in the field by improving the prediction accuracy. Sentiment analysis has become increasingly important in the field of economics, offering valuable insights and potentially improving economic forecasting and decision-making due to rapid technological progress. Sentiment analysis can identify potential changes in consumer behaviour and business decisions before they are translated into actual economic data, providing an early warning system for economic trends and potential crises. The methodological background relies on natural language processing to extract sentiment indices for large amounts of texts in Inflation Reports provided by NBR. Moreover, the sentiment indices calculated by IntelliDocker are incorporated into autoregressive distributed lag (ARDL) models to provide quarterly inflation forecasts. This type of econometric model has the advantage of addressing endogeneity. Moreover, the unemployment rate is considered an inflation predictor since tensions in the labour market might impact inflation. This paper contributes to empirical forecasting by proposing sentiment forecasts that are more accurate than NBR numerical forecasts corresponding to the 2006: Q1-2023: Q4 horizon. The new forecasting method might be used to make inflation predictions for the next quarters. More accurate forecasts would be valuable for businesses, the central bank, policymakers, and the general public. However, while sentiment analysis offers valuable insights, it is important to remember that human judgment and expertise remain essential for interpreting the data and making informed economic decisions.
Publisher
Sumy State University
Reference51 articles.
1. Angeletos, G. M., Collard, F., & Dellas, H. (2018). Quantifying confidence. Econometrica, 86(5), 1689–1726. 2. Angeletos, G. M., & La’o, J. (2013). Sentiments. Econometrica, 81(2), 739-779. 3. Ardia, D., Bluteau, K., Borms, S., & Boudt, K. (2020). Econometrics meets sentiment: an overview of methodology and applications. Journal of Economic Survey, 34(3), 512–547. 4. Ardia, D., Bluteau, K., Borms, S., & Boudt, K. (2021). The R package sentometrics to compute, aggregate and predict with textual sentiment. Journal of Statistical Software, 99(2), 1–40. 5. Ardia, D., Bluteau, K., & Boudt, K. (2019). Questioning the news about economic growth: Sparse forecasting using thousands of news-based sentiment values. International Journal of Forecasting, 35(4), 1370–1386.
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