NOWCASTING THE OBAMA VOTE: PROXY MODELS FOR 2012

Similar documents
Accuracy of Combined Forecasts for the 2012 Presidential Election: The PollyVote

Ever since elections for office have been held, people. Accuracy of Combined Forecasts for the 2012 Presidential Election: The PollyVote FEATURES

Chapter 12: Model Specification and Development

Statistics, continued

While there is general agreement in the literature

Forecasting the 2012 Presidential Election from History and the Polls

Solutions: Monday, October 22

Presidential and Congressional Vote-Share Equations

Dummies and Interactions

Carolyn Anderson & YoungShil Paek (Slide contributors: Shuai Wang, Yi Zheng, Michael Culbertson, & Haiyan Li)

Do Markov-Switching Models Capture Nonlinearities in the Data? Tests using Nonparametric Methods

Empirical Methods in Applied Economics Lecture Notes

The Importance of the Median Voter

Econ 325: Introduction to Empirical Economics

Political Cycles and Stock Returns. Pietro Veronesi

Testing for Regime Switching in Singaporean Business Cycles

On inflation expectations in the NKPC model

Political Science Fall 2018

Regression Discontinuity

Voting Prediction Using New Spatiotemporal Interpolation Methods

Regression Discontinuity

ESRI Research Note Nowcasting and the Need for Timely Estimates of Movements in Irish Output

where Female = 0 for males, = 1 for females Age is measured in years (22, 23, ) GPA is measured in units on a four-point scale (0, 1.22, 3.45, etc.

Class business PS is due Wed. Lecture 20 (QPM 2016) Multivariate Regression November 14, / 44

Nowcasting and Short-Term Forecasting of Russia GDP

Regression Discontinuity Designs

On the Use of Forecasts when Forcing Annual Totals on Seasonally Adjusted Data

Forecasting: Intentions, Expectations, and Confidence. David Rothschild Yahoo! Research, Economist December 17, 2011

Estimating and Testing the US Model 8.1 Introduction

Nowcasting gross domestic product in Japan using professional forecasters information

Do we need Experts for Time Series Forecasting?

Use of Dummy (Indicator) Variables in Applied Econometrics

Polling and sampling. Clement de Chaisemartin and Douglas G. Steigerwald UCSB

Amherst College Department of Economics Economics 360 Fall 2012

TABLE A-1. Economic Variables Observations Variable Description 3 Month Maturity

Forecasting the term structure interest rate of government bond yields

Seasonality in macroeconomic prediction errors. An examination of private forecasters in Chile

TIME SERIES ANALYSIS AND FORECASTING USING THE STATISTICAL MODEL ARIMA

Do econometric models provide more accurate forecasts when they are more conservative? A test of political economy models for forecasting elections

Assessing the 2016 U.S. Presidential Election Popular Vote Forecasts

Erasmus University Rotterdam. Erasmus School of Economics. Non-parametric Bayesian Forecasts Of Election Outcomes

HOG PRICE FORECAST ERRORS IN THE LAST 10 AND 15 YEARS: UNIVERSITY, FUTURES AND SEASONAL INDEX

Approximating Fixed-Horizon Forecasts Using Fixed-Event Forecasts

Midterm 2 - Solutions

PS 203 Spring 2002 Homework One - Answer Key

Forecasting. Copyright 2015 Pearson Education, Inc.

Becky Bolinger Water Availability Task Force November 13, 2018

Empirical Approach to Modelling and Forecasting Inflation in Ghana

Economics 326 Methods of Empirical Research in Economics. Lecture 1: Introduction

FORECASTING COARSE RICE PRICES IN BANGLADESH

Variables and Variable De nitions

Finite Dictatorships and Infinite Democracies

LODGING FORECAST ACCURACY

arxiv: v1 [stat.me] 5 Nov 2008

Public Library Use and Economic Hard Times: Analysis of Recent Data

Conducting Multivariate Analyses of Social, Economic, and Political Data

Online Appendix to The Political Economy of the U.S. Mortgage Default Crisis Not For Publication

(1) If Bush had not won the last election, then Nader would have won it.

Section 7: Local linear regression (loess) and regression discontinuity designs

Combining forecasts: An application to U.S. Presidential Elections

Are Forecast Updates Progressive?

Michigan Results. For 9/21/2012-9/22/2012. Contact: Doug Kaplan,

Overview. DS GA 1002 Probability and Statistics for Data Science. Carlos Fernandez-Granda

Introduction to Statistical Data Analysis Lecture 4: Sampling

NOWCASTING REPORT. Updated: October 21, 2016

Supplemental Appendix to "Alternative Assumptions to Identify LATE in Fuzzy Regression Discontinuity Designs"

IIF Economic Forecasting Summer School 2018, Boulder Colorado, USA

In the previous chapter, we learned how to use the method of least-squares

Granger Causality Testing

e Yield Spread Puzzle and the Information Content of SPF forecasts

Approximating fixed-horizon forecasts using fixed-event forecasts

Multivariate Regression Model Results

NOWCASTING REPORT. Updated: September 23, 2016

Chapter 18: Sampling Distributions

11 Correlation and Regression

Euro-indicators Working Group

A. Windnagel M. Savoie NSIDC

Splitting a predictor at the upper quarter or third and the lower quarter or third

Coimisiún na Scrúduithe Stáit State Examinations Commission. Leaving Certificate Examination Mathematics

Econometric Forecasting Overview

Nowcasting Norwegian GDP

Math 138 Summer Section 412- Unit Test 1 Green Form, page 1 of 7

Package EBMAforecast

DEPARTMENT OF ECONOMICS AND FINANCE COLLEGE OF BUSINESS AND ECONOMICS UNIVERSITY OF CANTERBURY CHRISTCHURCH, NEW ZEALAND

Testing for Unit Roots with Cointegrated Data

Multilevel Modeling Day 2 Intermediate and Advanced Issues: Multilevel Models as Mixed Models. Jian Wang September 18, 2012

YEAR 10 GENERAL MATHEMATICS 2017 STRAND: BIVARIATE DATA PART II CHAPTER 12 RESIDUAL ANALYSIS, LINEARITY AND TIME SERIES

2. AXIOMATIC PROBABILITY

Euro-indicators Working Group

Two-Variable Regression Model: The Problem of Estimation

Lecture 10 and 11: Text and Discrete Distributions

GALLUP NEWS SERVICE JUNE WAVE 1

Seasonal Hazard Outlook

A COMPARISON OF REGIONAL FORECASTING TECHNIQUES

Inferences About Two Proportions

Spring Break Assignment- 3 of 3. Question 1.

Wooldridge, Introductory Econometrics, 4th ed. Chapter 2: The simple regression model

CORRELATION AND REGRESSION

As good as the rest? Comparing IMF forecasts with those of others

1 Quantitative Techniques in Practice

Transcription:

JANUARY 4, 2012 NOWCASTING THE OBAMA VOTE: PROXY MODELS FOR 2012 Michael S. Lewis-Beck University of Iowa Charles Tien Hunter College, CUNY

IF THE US PRESIDENTIAL ELECTION WERE HELD NOW, OBAMA WOULD WIN. THE CURRENT (JANUARY) NOWCAST = 51.1% FOR OBAMA. * * (For this updated Nowcast, read the bold italics below. For the back story, read the whole article.) In contrast to the usual election forecasting approaches, we offer nowcasting. An election nowcast predicts what would happen if the election were held now (Lewis-Beck, Nadeau, Bélanger, 2011). Thus, the nowcast acts as an invaluable early warning device, signaling what will come to pass unless things change. The nowcast comes from a relevant statistical model, whose parameter estimates are held valid across current moments. That is, the model (with its fixed constant and slope values) predicts the election outcome based on current (changing) X values, as the final contest approaches. Nowcasting, then, is dynamic, and election predictions may be issued on a quarterly, monthly, or even daily basis, with updates until the actual election occurs. For example, a nowcast of the November 2012 US presidential election can be issued now (November 2011) twelve months before the actual election, in December 2011 (eleven months before), or in January 2012 (ten months before), and so on to the eve of the actual contest itself. To illustrate, our contemporary nowcasts predict a narrow victory for Obama: the November 2011 nowcast = 51.0 percent for Obama, the December 2011 nowcast = 51.9 percent for Obama; the January 2012 nowcast = 51.1 percent for Obama. We will continue to issue further monthly nowcasts until the election has past, to signal the increasing (or decreasing) likelihood of an Obama victory. Below, we explicate the theory and data behind our nowcast equation, which we label a proxy model. THEORY

US presidential election forecasting models abound (see the recent review in Lewis-Beck and Tien, 2011). Virtually without exception these models base themselves on substantive explanations of the presidential vote. Our nowcasting approach, however, does not depend on a substantive model. Instead, it rests on identification of a variable that proxies the presidential vote share. Through location of such a proxy, precise prediction of that vote share becomes possible. Proxy variables are standard econometric fare. If a variable is unobservable, as is a future election outcome, then a proxy for it may be sought. For the proxy to be a good one, it must correlate highly with the unobserved variable. In a forecasting context, that means the proxy must approach empirical redundancy with the variable proxied. One successful example of a proxy model in presidential forecasting comes from the French case (Nadeau, Lewis-Beck, and Bélanger, 2011). Here we use a proxy model as the basis for our nowcasts of the US presidential election outcome. PRACTICE Our proxy notion expresses itself in the following equation, Vote = ƒ (Vote Proxy). (eq. 1) where Vote = the two-party popular presidential vote share; Vote Proxy = an observed indicator of the unobserved vote. We offer as a proxy the National Business Index (NBI), yielding Vote = f(nbi) (eq.2) where NBI = the percentage of respondents who say business conditions are better minus the percentage of respondents who say business conditions are worse, as measured in the national

University of Michigan Survey of Consumers. This variable shows itself to be quite sensitive to actual US business conditions. For example, in the Great Recession year of 2008, it achieves its maximum negative value, at -81 (meaning overwhelmingly see worse business conditions). At the other extreme is its maximum positive value, at +47, registering the prosperous year of 1984. This NBI, measured in April six months before the November election, correlates highly with incumbent vote share, r =.83. Figure 1 shows this strong link, in a scatterplot over the election sample, 1980-2008. From a forecasting perspective, the six-month lead time offers considerable advantage. Firstly, its high accuracy comes at an impressive distance from the election itself, far from the trivialities day-before (or month-before) forecasts offer. Moreover, this longer lead performs better empirically than the commonly used three-month lag (r =.70). The strength of the six month lead comes as no surprise. Other forecasting work, in the US, UK, and France suggests it is in fact optimal; Lewis-Beck and Rice, 1992; Nadeau, Lewis-Beck, and Bélanger, 2010; Gibson and Lewis-Beck, 2011). [FIGURE 1 ABOUT HERE] The regression estimation (ordinary least squares) of this Proxy Model yields the following: Vote = 51.67* +.09* NBI t-6 + e (eq.3) (48.23) (3.69) R-sq. =.69, Adj. R-sq. =.64, SEE = 2.96 D-W = 2.45, n = 8, where the variables are defined as with eq. 2; the asterisk indicates statistical significance at.05, two-tail; the figures in parentheses are t-ratios; the R-squared = the coefficient of multiple determination; the Adj. R-squared = the R-squared adjusted for degrees of freedom; SEE = the

standard error of estimate; D-W = the Durbin-Watson test; n = 8 observations on US presidential elections 1980-2008. The Proxy Model of eq.3 has promising properties. In addition to the fit statistics (of the R-squared, the Adjusted R-squared, and the SEE), it is worth examining the error produced from predicting the individual elections under study. Here are these within sample errors: 1980 = - 1.06, 1984 = 3.49, 1988 = 1.33, 1992 = -1.61, 1996 = 2.39; 2000 = -5.08; 2004 = -1.02; 2008 = 1.56. Note that the most extreme NBI year, 2008 = -81, is still predicted with little error (under 2 points). Further, we see that, with the exception of 2000, the winning party is correctly predicted, though one could argue that the 2000 popular vote winner was correctly predicted. Moreover, the exceptional case itself encourages acceptance of the model, since virtually all forecasting efforts for the Gore-Bush contest were well off, (Lewis-Beck and Tien, 2001). In addition, a healthy distribution of residuals can be observed, with four positive and four negative signs. Overall, we see the mean absolute error (MAE) is only about 2.19 points. And, if the series is trimmed, by removing the curious 2000 case, the MAE falls to 1.78 points. These results suggest that the model can pick the winner in all but the closest races. A final diagnostic is that its fit could not be improved, despite the addition of other obvious variables, i.e. incumbency and presidential popularity, at different lags. In particular, it should be noted that presidential popularity fails to add significantly to the model, due to its high collinearity with NBI e.g., r =.85 in October. The interesting implication is that the effects of popularity are absorbed by NBI. As well, the effects of the macro-economy appear transmitted by NBI, e.g., for the correlation of NBI and GNP growth, r =.68 in October. (Nadeau and Lewis-Beck, 2001, show that NBI outperforms standard macro-economic measures in predicting presidential vote support). One implication is that the strong correlation between presidential

vote share and NBI is far from spurious. Instead, NBI succeeds in empirically capturing fundamentals that operate on voters, such as presidential popularity and the macro-economy. NOWCASTS FROM THE PROXY MODEL The Proxy Model has several desirable properties as a forecasting equation: complete parsimony, long lead time, ease of replication and good model fit (Lewis-Beck, 2005). In the nowcasting context, we simply apply the proxy model as if the election were upon us this month, or next month, or the month after so generating a series of nowcasts stretching to the election itself. To begin, let us employ it to generate a current month nowcast, assuming the current month is November 2011. Then, the equation estimates the (November 2011) election outcome from the NBI six months before (April 2011), as follows: Vote nov 2011 = 51.67 +.09 (-8) (eq.4) = 50.95 Nov 2011 nowcast where the prediction equation is as with eq.3, and 8 is the NBI for April 2011 (where 40% thought the economy was better now minus 48 % who thought it was worse now ). As a further example, consider the nowcast for the subsequent month of December 2011 from the May 2011 NBI (where 48% thought the economy was better now minus 46% who thought it was worse now = +2): Vote dec 2011 = 51.67 +.09 (2) = 51.85 Dec 2011 nowcast.

For the most current example, consider the nowcast for the month of January 2012 (from the June 2011 NBI,where 42% thought the economy was better now minus 48 percent who thought it was worse now = -6): Vote jan 2011 = 51.67 +.09(-6) = 51.13 January 2012 nowcast. CONCLUSION On the basis of current nowcast under one year away from the actual election, President Obama looks like a winner, although the margin of victory will be quite small. Over these initial three months of nowcasting (November, December, and January) we see that opinion is changing little, with Americans almost evenly divided on whether the economy is getting worse or better. This close division mirrors itself in Obama support so far. To this point, the economy appears just good enough to put Obama back in office. These results provide an early warning signal to Republicans, implying that unless things change they will not occupy the White House this coming fall. Of course, things can still change, and those changes will be tracked in our subsequent nowcasts as the months pass, and we move closer to the actual November 2012 election. We plan to offer monthly, up-to-date nowcasts on these pages, until the election arrives. Of course, as we approach April 2012, which affords the NBI data for our final prediction, confidence in these nowcasts will increase. Will Obama hold his lead? As the months unfold, we shall see.

REFERENCES Rachel Gibson and Michael S. Lewis-Beck, 2011. Methodologies of Election Forecasting: Calling the UK Hung Parliament, Electoral Studies,Vol.30(2),June, pp.247-249. Michael S. Lewis-Beck, Richard Nadeau and Eric Bélanger. 2011. Nowcasting v. Polling: The 2010 UK Election Trials, Electoral Studies,Vol.30(2), pp.284-287. Michael S. Lewis-Beck, Eric Bélanger and Richard Nadeau. 2010. Election Forecasting in France: A Multi-Equation Solution, International Journal of Forecasting, Vol.25:1,pp.11-18. Michael S. Lewis-Beck. 2005. Election Forecasting: Principles and Practice, British Journal of Politics and International Relations, Volume 7,No.2,pp.145-164. Michael S. Lewis-Beck and Tom W. Rice. 1992. Forecasting Elections, Washington, DC: CQ Press. Michael S. Lewis-Beck and Charles Tien. 2001. "Modeling the Future: Lessons from the Gore Forecast," PS: Political Science and Politics, Vol. 34, No.1,pp.21-23. Michael S. Lewis-Beck and Charles Tien. 2011. Election Forecasting, in The Oxford Handbook of Political Methodology, eds., Michael Clements and David Hendry, chapter 24, pp.655-671. Richard Nadeau and Michael S. Lewis-Beck. 2001. "National Economic Voting in U.S. Presidential Elections," Journal of Politics, Vol. 63 (No.1,February), pp.159-181. Richard Nadeau, Michael S. Lewis-Beck and Eric Bélanger. 2011. Proxy Models for Presidential Election Forecasting; The 2012 French Test, French Politics, forthcoming.