Is portfolio construction up to the task

How can portfolio construction handle the challenge of ‘good and bad’ scenarios?

Uncertainty is ever-present whether related to health, social, economic, market, geopolitical or a myriad of other areas. There are many possible scenarios which form in our minds and the challenge is to incorporate these insights into our portfolio construction decisions. The question is how to best integrate scenarios into portfolio construction.

Academics have been actively exploring these types of problems for decades – indeed it has been a research interest for some of the most well-known and respected names in financial academia. In this article I look at some of these techniques and their usefulness for investors, but first we need some background. Some of the academic approaches have great merit but are difficult to apply in practice.

A primer on portfolio construction

Basic portfolio construction theory, as applied by industry, is built on three inputs: estimates of expected return and variability (typically volatility) to summarise the distribution of asset returns, accompanied by a clear objective. Given the prevalence of labelled products (e.g. balanced, growth etc.) and peer group awareness in industry, the objective is commonly to maximise return for a fixed level of risk. This is broadly reflected in what is classically known as the mean-variance framework.

Commonly this standard approach is complemented by stress tests and scenario analysis to explore the impact of extreme events.

Sponsored Content

How do we account for uncertainty and possible scenarios?

Return to the outlined problem: investors are uncertain of the future and identify many possible scenarios. Can these scenarios be accounted for in portfolio construction? To keep the analysis as simple as possible consider only one risky asset (stocks) and define two scenarios (good and bad). Then consider the more detailed problem (a “real world” setting) of multiple asset classes which helps to illustrate the complexity-based barriers to industry adoption.

Simplified case of stocks only

I assume a one-year timeframe because it most conveniently illustrates the outcomes of different techniques. Our two scenarios are defined as follows:

  1. A good scenario (70% likely) where expected real stock returns are 20%
  2. A bad scenario (30% chance) where expected real stock returns are -10%

For both scenarios stock volatility is assumed to be 12%.

The first approach uses the most likely scenario, in this case the good scenario where expected real stock returns are 20%. The problem with this approach is obvious: by not incorporating our knowledge of the alternative scenario it fails to consider the full range of possible market outcomes. As can be seen in the diagram and table below (blue line) the expected return is overstated and volatility is understated (compared to the more advanced techniques). This would result in a flawed decision to over-allocate to stocks.

A second approach calculates expected return as a probability-weighted average of these two scenarios (so expected stock returns are 11% real). As displayed by the orange line in the diagram, the bias in expected returns identified in the first approach is removed, but the range of potential outcomes remains understated as this approach ignores the existence of two distinct scenarios. This approach would still result in over-allocating to stocks.

A third approach applies a technique known as parameter uncertainty. This approach also uses the weighted average expected return, but acknowledges that there is uncertainty around the expected return itself (after all it is unknown which scenario will be experienced). The expected real return is 11% real but, based on two possible scenarios, the expected return itself has a standard deviation of 12%[i]. So, in simulating possible outcomes the expected return itself is simulated and then the return itself. The return distribution (illustrated by the grey line) is much wider (simulated volatility is over 18%) which would reduce the optimal demand for stocks. However, this approach still doesn’t perfectly translate our two-scenario view into portfolio construction.

The final approach does just that. It samples from the two scenarios to form a distribution of possible outcomes from investing in stocks. The volatility remains high but the diagram (yellow line) shows the presence of two scenarios in the return distribution itself. This approach best incorporates knowledge of possible scenarios.

 

Simulation results Approach 1 – “Most likely” Approach 2 – “Weighted average” Approach 3 – “Parameter uncertainty” Approach 4 – “Sample from both scenarios”
Average 20.1% 11.1% 10.3% 11.9%
Standard Deviation 12.1% 12.1% 18.4% 18.6%

In practice it is complex

It appears logical for portfolio construction approaches to account for possible scenarios. I’ve illustrated the benefits using the simple case of stocks. But this is the crux of the issue: it is a simplified setting. Let’s consider a more detailed problem.

To apply the scenario sampling approach in a broader setting requires the need for parameter estimates (expected return) for every candidate asset under each scenario. There is an important reflection here: unless all the individual asset return forecasts move in perfect unison across each scenario, there will be a different optimal portfolio for each scenario. So, what is the optimal portfolio across all scenarios? This is a complex problem which requires a lot of computational power to solve, which becomes even more complex as more scenarios are considered.

Hopefully it is now easier to understand why the theoretically appealing portfolio construction practices used by academics aren’t commonly replicated in industry. However, there are two important learnings that can be taken from academia. First, forecasts are only point estimates and are uncertain so it would make sense to acknowledge this forecasting uncertainty when constructing portfolios. The second learning is that scenario analysis, already part of good industry practice, could be extended to consider not only extreme scenarios, but likely scenarios as well.

[i] This is estimated based on a Bernoulli distribution.

David Bell is executive director of The Conexus Institute.

Leave a Comment

Long term lens shields Colorado from private credit jitters

Long term lens shields Colorado from private credit jitters

As concerns in private credit mount, Colorado PERA CIO and COO Amy McGarrity says the pension fund isn’t seeing any strains in its growing allocation to the asset class, arguing that long-term investors are shielded from the risks because they can lock up their capital to weather market cycles.

Sort content by

TRS strikes gold: Tiny allocation crushes its benchmark

This year, TRS doubled its tiny allocation to gold via a special fund that buys gold ETFs and mining companies. The strategy returned nearly 60 per cent, thanks to market conditions including inflation, geopolitics, government debt levels and de-dollarisation pushing gold higher.

Limited alternatives keep global capital anchored to the US

Singapore’s Temasek said while US exceptionalism may be “fraying”, there aren’t many alternative markets that can handle the same volume of global capital. Meanwhile, fellow sovereign fund GIC believes the greenback’s reserve currency status remains solid even though currency swings could spell trouble for foreign investors.

LP demands for bespoke solutions define new era for private managers

Private asset managers can expect to work harder for LP capital as allocators increasingly look for more bespoke, flexible structures that meet their changing needs around liquidity, fee and types of exposures. Investors at FIS Oxford unpack how they approach manager relationships in the new era of private investments. 

Fordham University dials up growth equity, cools on private credit

Fordham University CIO Geeta Kapadia is cutting back on private credit, calling it an asset class “less able to financially engineer returns” in a higher-rate world. She’s instead redirecting the $1.1 billion endowment to venture and growth equity and entrusting larger mandates to a smaller roster of high-conviction managers.

South Carolina lifts private equity and credit as cashflow turns positive

The South Carolina Retirement System Investment Commission's improved liquidity position has allowed the plan to tilt its portfolio towards unlisted asset classes, including private equity and private credit. The fund grew fast thanks to funding reform, improved salaries, and positive investment returns and is now looking to boost long-term performance.

Investors unpack regime-based portfolio thinking 

Funds are operating in an extraordinary environment, with Scott Chan, chief investment officer of CalSTRS, saying he has never witnessed so many “large shifts stacked on top of the other” in his investment career. Amid the change, investors are increasingly shifting to a scenario and regime-based asset allocation.