Nowcasting Private Consumption: Traditional Indicators, Uncertainty Measures, Credit Cards and Some Internet Data

The focus of this paper is on nowcasting and forecasting quarterly private consumption. The selection of real-time, monthly indicators focuses on standard (“hard” / “soft” indicators) and less-standard variables. Among the latter group we analyze: i) proxy indicators of economic and policy uncertainty; ii) payment cards’ transactions, as measured at “Point-of-sale” (POS) and ATM withdrawals; iii) indicators based on consumption-related search queries retrieved by means of the Google Trends application. We estimate a suite of mixed-frequency, time series models at the monthly frequency, on a real-time database with Spanish data, and conduct out-of-sample forecasting exercises to assess the relevant merits of the different groups of indicators. Some results stand out: i) “hard” and payments cards indicators are the best performers when taken individually, and more so when combined; ii) nonetheless, “soft” indicators are helpful to detect qualitative signals in the nowcasting horizon; iii) Google-based and uncertainty indicators add value when combined with traditional indicators, most notably at estimation horizons beyond the nowcasting one, what would be consistent with capturing information about future consumption decisions; iv) the combinations of models that include the best performing indicators tend to beat broader-based combinations.

[1]  Efrem Castelnuovo,et al.  Working Paper No . 12 / 14 Uncertainty Shocks and Unemployment Dynamics in U . S . Recessions , 2014 .

[2]  Martín Gonzalez-Eiras,et al.  Women’s Representation in Politics: Voter Bias, Party Bias, and Electoral Systems , 2018 .

[3]  Jacopo Timini,et al.  Chinese Exports and Non-Tariff Measures: Testing for Heterogeneous Effects at the Product Level , 2018, Journal of Economic Integration.

[4]  R. Hall Stochastic Implications of the Life Cycle-Permanent Income Hypothesis: Theory and Evidence , 1978, Journal of Political Economy.

[5]  N. Bloom The Impact of Uncertainty Shocks , 2007 .

[6]  J. Mencía,et al.  Empirical Assessment of Alternative Structural Methods for Identifying Cyclical Systemic Risk in Europe , 2018 .

[7]  Konstantin A. Kholodilin,et al.  Do Google Searches Help in Nowcasting Private Consumption? A Real-Time Evidence for the US , 2010 .

[8]  Toni M. Whited,et al.  The Effect of Uncertainty on Investment: Some Stylized Facts , 1995 .

[9]  Juri Marcucci,et al.  News and consumer card payments , 2019 .

[10]  Stephen G. Hall,et al.  Creating high‐frequency national accounts with state‐space modelling: a Monte Carlo experiment , 2001 .

[11]  D. De SOVEREIGN DEFAULT , DOMESTIC BANKS AND EXCLUSION FROM INTERNATIONAL CAPITAL MARKETS , 2018 .

[12]  Frédéric Karamé,et al.  Can Google Data Help Predict French Youth Unemployment , 2012 .

[13]  Nicolás Della Penna,et al.  Constructing Consumer Sentiment Index for U.S. Using Google Searches , 2010 .

[14]  A. Popescu,et al.  Uncertainty, Risk-taking, and the Business Cycle in Germany , 2010 .

[15]  Benjamin L. Edelman,et al.  Using Internet Data for Economic Research , 2012 .

[16]  Omar Rachedi,et al.  The Changing Structure of Government Consumption Spending , 2018 .

[17]  Yan Carrière-Swallow,et al.  Nowcasting With Google Trends in an Emerging Market , 2013 .

[18]  Michael P. Clements,et al.  Macroeconomic Forecasting With Mixed-Frequency Data , 2008 .

[19]  Chiara Scotti Surprise and Uncertainty Indexes: Real-Time Aggregation of Real-Activity Macro Surprises , 2016 .

[20]  A. Urtasun,et al.  Macroeconomic Uncertainty: Measurement and Impact on the Spanish Economy , 2017 .

[21]  G. Chow,et al.  Best Linear Unbiased Interpolation, Distribution, and Extrapolation of Time Series by Related Series , 1971 .

[22]  Gian Luigi Mazzi Some guidance for the use of Big Data in macroeconomic nowcasting , 2016 .

[23]  S. Davis,et al.  Measuring Economic Policy Uncertainty , 2013 .

[24]  Jesús Vázquez,et al.  Term Structure and Real-Time Learning , 2018 .

[25]  Marianna Kudlyak,et al.  What Does Online Job Search Tell Us about the Labor Market , 2016 .

[26]  H. Varian,et al.  Predicting the Present with Google Trends , 2009 .

[27]  Isabel Argimón The Relevance of Currency-Denomination for the Cross-Border Effects of Monetary Policy , 2018 .

[28]  M. Roth International Co-Movements in Recessions , 2018 .

[29]  Alex Pentland,et al.  Methods for quantifying effects of social unrest using credit card transaction data , 2018, EPJ Data Science.

[30]  Aitor Lacuesta,et al.  Price Strategies of Independent and Branded Dealers in Retail Gas Market. The Case of a Contract Reform in Spain , 2018 .

[31]  Reza Zafarani,et al.  The good, the bad, and the ugly: uncovering novel research opportunities in social media mining , 2016, International Journal of Data Science and Analytics.

[32]  R. Mariano,et al.  A New Coincident Index of Business Cycles Based on Monthly and Quarterly Series , 2002 .

[33]  Andrew Harvey,et al.  Estimating the underlying change in unemployment in the UK , 2000 .

[34]  Enrique Moral-Benito,et al.  On the Direct and Indirect Real Effects of Credit Supply Shocks , 2018, Journal of Financial Economics.

[35]  Eric Ruscher,et al.  Assessing the impact of uncertainty on consumption and investment , 2013 .

[36]  Torsten Schmidt,et al.  A monthly consumption indicator for Germany based on Internet search query data , 2010 .

[37]  Paul Newbold,et al.  Testing the equality of prediction mean squared errors , 1997 .

[38]  Maria Elena Bontempi,et al.  A New Index of Uncertainty Based on Internet Searches: A Friend or Foe of Other Indicators? , 2016 .

[39]  Jose Asturias,et al.  Competition and the Welfare Gains from Transportation Infrastructure: Evidence from the Golden Quadrilateral of India , 2016, Journal of the European Economic Association.

[40]  Christian Dreger,et al.  Forecasting Private Consumption by Consumer Surveys , 2010 .

[41]  Jacopo Timini The Margins of Trade: Market entry and Sector Spillovers, The Case of Italy (1862-1913) , 2018 .

[42]  R. Gimeno,et al.  Extraction of Inflation Expectations from Financial Instruments in Latin America , 2018 .

[43]  V. Salas-Fumás,et al.  Corporate Cost and Profit Shares in the Euro Area and the US: The Same Story? , 2018 .

[44]  C. Keuschnigg,et al.  Trade and Credit Reallocation: How Banks Help Shape Comparative Advantage , 2015 .

[45]  Enrique Moral-Benito,et al.  The Costs of Trade Protectionism: Evidence from Spanish Firms and Non-Tariff Measures , 2018 .

[46]  George Kapetanios,et al.  Big Data and Macroeconomic Nowcasting : From Data Access to Modelling , 2016 .

[47]  Juan S. Mora-Sanguinetti,et al.  Industry vs Services: Do Enforcement Institutions Matter for Specialization Patterns? Disaggregated Evidence from Spain , 2018 .

[48]  Andrew Harvey,et al.  Forecasting, Structural Time Series Models and the Kalman Filter. , 1991 .

[49]  Jonathan Levin,et al.  The Data Revolution and Economic Analysis , 2013, Innovation Policy and the Economy.

[50]  Ralph Schroeder,et al.  UvA-DARE ( Digital Academic Repository ) Emerging practices and perspectives on Big Data analysis in economics : Bigger and better or more of the same ? , 2014 .

[51]  Hal R. Varian,et al.  Big Data: New Tricks for Econometrics , 2014 .

[52]  Namwon Hyung Linking series generated at different frequencies and its applications , 1998 .

[53]  Thomas B. Götz,et al.  Google Data in Bridge Equation Models for German GDP , 2017 .

[54]  Roberto Blanco,et al.  Credit Allocation Along the Business Cycle: Evidence from the Latest Boom Bust Credit Cycle in Spain , 2018 .

[55]  Paulo M.M. Rodrigues,et al.  A mixed frequency approach to the forecasting of private consumption with ATM/POS data , 2017 .

[56]  Siem Jan Koopman,et al.  Time Series Analysis by State Space Methods , 2001 .

[57]  Sonia Gilbukh,et al.  Firm Dynamics and Pricing Under Customer Capital Accumulation , 2017, Journal of Monetary Economics.

[58]  Henrique S. Basso,et al.  The Young, the Old, and the Government: Demographics and Fiscal Multipliers , 2018, American Economic Journal: Macroeconomics.

[59]  B. Rossi,et al.  Confidence Intervals for Bias and Size Distortion in IV and Local Projections — IV Models , 2018 .

[60]  U. Fritsche,et al.  Disagreement Among Forecasters in G7 Countries , 2009, Review of Economics and Statistics.

[61]  Diego J. Bodas-Sagi,et al.  Measuring Retail Trade Using Card Transactional Data , 2018 .

[62]  Giselle C. Guzman,et al.  Internet Search Behavior as an Economic Forecasting Tool: The Case of Inflation Expectations , 2011 .

[63]  Eugenia Vella,et al.  Should I Stay or Should I Go? Austerity, Unemployment and Migration , 2018 .

[64]  Pablo Burriel,et al.  Fiscal Policies in the Euro Area: Revisiting the Size of Spillovers , 2018, Journal of Macroeconomics.

[65]  Ruediger Bachmann,et al.  Uncertainty and Economic Activity: Evidence from Business Survey Data , 2010 .

[66]  Torsten Schmidt,et al.  Using Internet Data to Account for Special Events in Economic Forecasting , 2012 .

[67]  E. Ghysels,et al.  MIDAS Regressions: Further Results and New Directions , 2006 .

[68]  Todd E. Clark,et al.  Tests of Equal Forecast Accuracy and Encompassing for Nested Models , 1999 .

[69]  Athanasios Orphanides,et al.  Uncertainty and disagreement in economic forecasting , 2008 .

[70]  John W. Galbraith,et al.  Nowcasting with payments system data , 2017 .

[71]  M. Hashem Pesaran,et al.  A Simple Nonparametric Test of Predictive Performance , 1992 .

[72]  Paul Smith,et al.  Google's MIDAS Touch: Predicting UK Unemployment with Internet Search Data , 2015 .

[73]  G. Bandeira,et al.  Fiscal Transfers in a Monetary Union with Sovereign Risk , 2018 .

[74]  D. J. Pedregal,et al.  Should Quarterly Government Finance Statistics Be Used for Fiscal Surveillance in Europe? , 2008, SSRN Electronic Journal.

[75]  Torsten Schmidt,et al.  Forecasting Private Consumption: Survey-Based Indicators vs. Google Trends , 2009 .

[76]  Valentina Aprigliano,et al.  Using the Payment System Data to Forecast the Italian GDP , 2017 .

[77]  Enrique Moral-Benito,et al.  The Financial Transmission of Housing Bubbles: Evidence from Spain , 2018, SSRN Electronic Journal.

[78]  Angela Abbate,et al.  Monetary Policy and the Asset Risk-Taking Channel , 2018, Journal of Money, Credit and Banking.

[79]  M. Marcellino,et al.  EuroMInd-C: A Disaggregate Monthly Indicator of Economic Activity for the Euro Area and Member Countries , 2013 .

[80]  Predicting New Car Registrations: Nowcasting with Google Search and Macroeconomic Data , 2015 .