Long-term investors will need to adopt next-generation strategic asset allocation practices to successfully play their part in a rapidly changing world. Truths, practices, and principles traditionally accepted by long-term investors face reduced significance and potential obsolescence. We will examine the key topics and expected changes to how long-term investors will make investment decisions in a series of articles on multi-horizon strategic asset allocation applications. In this article, we examine the benefits of dynamic rebalancing vs. the constant-mix (fixed-mix) approach in strategic asset allocation.
In our previous article, we introduced multi-horizon analysis and argued that few long-term investors take a purely buy-and-hold approach to their investments. Constant-mix (fixed-mix) was presented as a practical alternative, whereby an investor rebalances back to the original allocations periodically. The impact of doing so changes the investment risk/return and presents a different efficient frontier to the investor.
A single set of weights for the entire investment horizon ignores many investors’ flexibility in changing their asset allocation to exploit investment opportunities and manage risk.
Few investors expect that asset class return and risk will remain static throughout the entire investment horizon. Allowing weights to dynamically change over time to take advantage of market opportunities is a natural extension to the fixed-mix approach. We refer to this as a dynamic-rebalancing strategy or dynamic asset allocation.
To illustrate, we use the following Capital Market Assumptions (CMA) inputs. Risk (volatility) is estimated from historical returns data.
Asset Classes |
Forecasted Return (Annualized) |
Volatility |
||
|
5Y |
10Y |
20Y |
|
U.S. Equities |
6.4% |
6.6% |
6.9% |
15.5% |
Europe Equities |
7.5% |
7.5% |
7.5% |
19.3% |
EM Equities |
6.6% |
7.0% |
7.6% |
20.1% |
Government Bonds |
0.8% |
1.3% |
2.0% |
3.7% |
Aggregate bonds |
1.2% |
2.0% |
2.8% |
3.0% |
Credit 3-10yrs |
0.2% |
1.7% |
3.4% |
4.5% |
Credit +10yrs |
-0.8% |
0.7% |
3.2% |
8.9% |
Long Govt |
-0.1% |
0.9% |
2.0% |
11.3% |
Source: FactSet
When using a traditional single-period asset allocation approach, an investor with a 20-year investment horizon is forced to select a single set of return forecasts when constructing the optimal allocation. The appropriate choice is not obvious as there are several available options:
Dynamic asset allocation doesn’t force a choice and allows you to use all the information in Table 1. At each period, the portfolio is optimized based on all information provided; weights are allowed to dynamically change period-to-period to exploit investment opportunities. Focusing on the Credit 3-10-year asset class, we can see that it is expected to experience the most significant improvement in returns over the investment horizon. Intuitively, we’d expect to see a corresponding increase in allocation throughout the investment horizon.
Below is the ex-ante evolution of portfolio weights for a dynamically rebalanced portfolio compared to a fixed-mix portfolio with the same inputs from Table 1.
Dynamic allocation provides a much richer output and drives healthy analysis, observations, and discussions between investors and investment managers. Enhancing the communication and understanding of the investment strategy and likely outcomes helps to promote long-term investment behaviors in managers and investors alike.
Examples of areas enhanced by dynamic asset allocation are:
Not surprisingly, allowing portfolio weights to change over time results in a greater range of risk/return possibilities. Critically, where the range coincides with other strategies such as buy-and-hold and constant-mix, the dynamic strategy's efficient frontier dominates other strategies.
Allowing for dynamic rebalancing is a powerful component in the next generation of strategic asset allocation tools. Providing an idea of how weights are likely to evolve over time allows for better questions to be asked and a greater understanding of the characteristics of a particular investment strategy.
Our next article will explore how multi-horizon analysis can help provide more suitable analytics and approach for long-term investors to manage risk.
Todor Bilarev, PhD, Senior Quantitative Researcher, Analytics and Trading Solutions, contributed to this article.
Disclaimer: This blog post is for informational purposes only. The information contained in this blog post is not legal, tax, or investment advice. FactSet does not endorse or recommend any investments and assumes no liability for any consequence relating directly or indirectly to any action or inaction taken based on the information contained in this article.