Finance model says Biden will win

Joe Biden will win the US election according to a technique used in finance to predict factor returns and the correlation of stock and bond returns.

The past as a prologue: how to forecast presidential elections, a MIT working paper, co-authored by MIT’s Mark Kritzman and Dave Turkington and Megan Czsasonis from State Street, uses a model that correctly predicted the outcomes of the past five presidential elections. It is now predicting a strong Democratic victory for 2020, with a Democratic loss within a confidence band of one standard deviation. Interestingly, the technique correctly predicted the 2016 election, which the polls failed to do.

The authors apply a novel forecasting technique called Partial Sample Regression which measures the statistical relevance of past elections, and then employs an “obscure mathematical equivalence” – that the prediction from a linear regression equation equals a relevance-weighted average of the values for the dependent variable. It uses this to forecast election outcomes from a subsample of prior relevant elections.

The technique predicts the elections in a mathematically formal way and uses no poll data.

“The essence of our methodology is to measure the relevance of historical elections in a statistically rigorous way. We then rely on an obscure mathematical equivalence to form predictions from the more relevant elections,” the authors say.

“When political scientists or pundits forecast presidential elections, they often analyse past elections for clues about upcoming elections. But they don’t treat all past elections alike. They judge some to be more relevant than others. This behaviour is true in general when we try to predict an outcome based on prior experiences. We look for those events that bear some resemblance to current conditions. We apply this concept to predict the outcomes of presidential elections, but we do so in a mathematically formal way.”

Sponsored Content

The authors then add to this the less obvious component of “relevance”.

“We consider the unusualness of the past experiences. The intuition is that unusual occurrences are more informative than common occurrences, which simply might be a manifestation of noise in the data. Once we identify a subsample of relevant historical elections, we invoke an obscure mathematical equivalence. The prediction from a linear regression equation equals a weighted average of the past values of the dependent variable in which the weights are the relevance of the values for the independent variables. We apply this equivalence to our relevant subsample of political, geopolitical, and economic data to form our predictions.”

The methodology used to predict election results is similar to that used by Kritzman and Turkington and their co-authors Ding Li and Grace Qiu from GIC in the paper, Portfolio Choice with Path Dependent Preferences, which is forthcoming in the Financial Analysts Journal. That study, which revolutionises scenario analysis by reorienting it towards a path rather than a single period outcome,  finds that a U-shaped recovery is the most likely economic outcome in the US for the next two years, but stagflation has a higher than anticipated chance of occurring.

Leave a Comment

GIC, Temasek eye trillions of growth in climate adaptation market

GIC, Temasek eye trillions of growth in climate adaptation market

Singapore’s two largest asset owners, GIC and Temasek, see attractive opportunities in climate adaptation solutions – a relatively underfunded area compared to decarbonisation. The former has already made selective adaptation investments and said the opportunity set across public and private debt and equity could increase to $9 trillion by 2050.

Sort content by

The arithmetic of “all-in” investment expenses

In the January/February issue of the Financial Analysts Journal, Jack Bogle, founder and former chief executive of the Vanguard Group, looks at the “all-in” investment expenses including not only expense ratios byt transaction costs, sales loads and cash drag. He highlights, in particular, how damaging these costs can be over the long run, and reaffirms

How to estimate the equity risk premium

Given the importance of equity risk premium, it is surprising how haphazard the estimation of equity risk premiums remains in practice. This paper by Aswath Damodaran at the New York University Stern School of Business examines a number of different approaches to determining the equity risk premium and why different approaches yield different values. It

Risk parity and beyond

This paper analyses whether the use of uncorrelated underlying risk factors, as opposed to correlated asset returns, can lead to a more efficient framework for measuring and managing portfolio diversification. The paper, by academics at EDHEC Business School and SYMMYS, acknowledges that the ability to construct well-diversified portfolios is a challenge of critical importance in

Emerging equity markets in a globalising world

Even though there has been dramatic globalisation over the past 20 years it still makes sense to segregate global equities into “developed” and “emerging” market buckets, according to a paper by Columbia and Duke academics. The research, which has important policy implications for institutional and pension fund management, shows that while correlations between developed and

Citigroup: a case study in managerial and regulatory failures

This article by Arthur Wilmarth from George Washington University Law School uses Citigroup as a case study to demonstrate the question of whether bank executives and regulators are able to supervise and control today’s complex megabanks. The study shows that post-mortem evaluations of Citigroup’s near-collapse revealed that neither Citigroup’s managers nor its regulators recognized the

Macroeconomic risk and hedge fund returns

This paper estimates hedge fund and mutual fund exposure to newly proposed measures of macroeconomic risk that are interpreted as measures of economic uncertainty. The academics, from Georgetown and Stern, find the resulting uncertainty betas explain a significant proportion of the cross-sectional dispersion in hedge fund returns. However, the same is not true for mutual

Previous