Does High Frequency Social Media Data Improve Forecasts of Low Frequency Consumer Confidence Measures?

32 Pages Posted: 3 Dec 2019 Last revised: 2 Dec 2024

See all articles by Steven F. Lehrer

Steven F. Lehrer

Queen's University (Canada), Faculty of Arts & Science, Department of Economics, Students; National Bureau of Economic Research (NBER)

Tian Xie

Shanghai University of Finance and Economics - College of Business

Tao Zeng

Zhejiang University - College of Economics

Date Written: November 2019

Abstract

Social media data presents challenges for forecasters since one must convert text into data and deal with issues related to these measures being collected at different frequencies and volumes than traditional financial data. In this paper, we use a deep learning algorithm to measure sentiment within Twitter messages on an hourly basis and introduce a new method to undertake MIDAS that allows for a weaker discounting of historical data that is well-suited for this new data source. To evaluate the performance of approach relative to alternative MIDAS strategies, we conduct an out of sample forecasting exercise for the consumer confidence index with both traditional econometric strategies and machine learning algorithms. Irrespective of the estimator used to conduct forecasts, our results show that (i) including consumer sentiment measures from Twitter greatly improves forecast accuracy, and (ii) there are substantial gains from our proposed MIDAS procedure relative to common alternatives.

Suggested Citation

Lehrer, Steven F. and Xie, Tian and Zeng, Tao, Does High Frequency Social Media Data Improve Forecasts of Low Frequency Consumer Confidence Measures? (November 2019). NBER Working Paper No. w26505, Available at SSRN: https://ssrn.com/abstract=3496482

Steven F. Lehrer (Contact Author)

Queen's University (Canada), Faculty of Arts & Science, Department of Economics, Students ( email )

99 University Avenue
Kingston, Ontario
Canada

HOME PAGE: http://econ.queensu.ca/faculty/lehrer/

National Bureau of Economic Research (NBER)

1050 Massachusetts Avenue
Cambridge, MA 02138
United States

Tian Xie

Shanghai University of Finance and Economics - College of Business ( email )

777 Guoding Road
Shanghai, 200433
China

Tao Zeng

Zhejiang University - College of Economics ( email )

Yuquan Campus 38 Zheda Road
Hangzhou, Zhejiang 310027
China

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