Asset Allocation - Part 2
Marginal Contribution to Total Risk - Formula
Asset Beta Relative to Portfolio * Portfolio Standard Deviation
Absolute Contribution to Total Risk - Formula
Asset Class Weight in Portfolio * MCTR
Risk Parity Approach - Asset Weight Equation
Asset Weight * Covariance of Asset with Portfolio = Portfolio Variance / Number of Assets
Surplus Optimization - Utility Function
Expected Utility for Asset Mix = Expected Surplus Return for Asset Mix - (0.005 * Risk Aversion Coefficient * Expected Variance of Asset Mix * Surplus Return)
Liability-Relative Asset Allocation - Best for Risk-Averse Investors
Hedging/Return-Seeking Approach
Liability-Relative Asset Allocation - Best for Changing Liability
Integrated Asset/Liability Approach
Liability-Relative Asset Allocation - Most Complex and Dynamic
Integrated Asset/Liability Approach
Liability Surplus - Formula
MV of Assets - PV of Liabilities
Funding Ratio - Formula
MV of Assets / PV of Liabilities
Markowitz Objective Function - Investor Utility
Percentage Utility for the Asset Mix = Percentage Expected Return - (0.005 * Risk Aversion Coefficient * Percentage Expected Variance)
Liability-Relative Asset Allocation - Best for a Single Period
Surplus Optimization
Liability-Relative Asset Allocation - Best for any Funded Ratio/Risk Level
Surplus Optimization
Liability-Relative Asset Allocation - Most Basic Approach
Surplus Optimization
Re-Sampled Mean-Variance Optimization - Definition
a combination of regular MVO and a Monte Carlo simulation that improves diversification compared to setting lots of constraints on MVO
60/40 Rule
allocation heuristic where you allocate 60% to stocks and 40% to bonds to get a balance of long-term growth and risk reduction that mimics the global investable portfolio
Endowment Model
allocation model for institutional investors with large allocations to alternatives and lots of active management, making it best for investors with a long time horizon with low cash flow needs
Norway Model
allocation model for smaller investors that focuses on passive management and includes almost exclusively public equities and fixed income and often follows the 60/40 rule
Multistage Simulation Analysis
allows you to set rules that guide the asset and liability portfolios along different scenarios instead of changing multiple variables
Minimum Expectations Approach
approach used with goals-based asset allocation where your goal is to achieve the minimum return expected over a given time horizon based on a minimum required probability of success
Risk Parity Approach - Definition
asset allocation approach that focuses on the belief that each asset should contribute equally to the total risk of the portfolio
Integrated Asset/Liability Approach - Definition
asset allocation approach that uses multiperiod models to adjust assets to reflect a better correlation with a changing liability
Hedging/Return-Seeking Approach - Definition
asset allocation approach where you develop one strategy for hedging the liability and then a separate return-seeking strategy for the surplus
5 Criticisms of Mean-Variance Optimization
asset allocations produced are highly sensitive to small changes in inputs, relies on forecasted inputs for estimations, often results in highly concentrated weightings based on the best risk/reward, doesn't consider other investor constraints like liability payments, reliance on normal distribution makes it unable to consider skewness and kurtosis
3 Benefits of Monte Carlo Simulation
can be run over different time periods, helps reveal investor's true risk tolerance by testing many inputs, can account for portfolio withdrawals and big life events
Markowitz Objective Function - Risk Aversion Coefficient
captures the investor's risk-return tradeoff ranging from 0-10, with 0 being completely risk tolerant, 10 being completely risk averse, and 4 being moderately risk-averse
Tangency Theory to Cash Allocation
cash allocation method based on a combination of the risk-free asset and the tangency portfolio, where leverage can be used to increase risk with more investment in the tangency portfolio or risk can be decreased with more cash
Surplus Optimization - Steps
choose asset classes and time horizon, estimate expected returns and volatilities for asset classes and liabilities based on capital market expectations, factor in investor constraints, use capital market expectations and constraints to estimate the correlation mix, create surplus efficient frontier
Reverse Optimization - Process
establish optimal asset allocation weights from the efficient frontier, use CAPM to find the expected return of each asset class, use market cap weights to solve for a weighted average and get total portfolio expected return
Integrated Asset/Liability Approach - Investor Types
good for banks, hedge funds, and certain insurance companies that have changing liabilities
Hedging/Return-Seeking Approach - Investor Types
good for conservative, non-risk seeing investors with a surplus balance and a fixed liability, such as insurance companies
Efficient Frontier
graph representing a set of portfolios that maximizes expected return at each level of portfolio risk
Optimal Asset Allocation - Risk Budgeting POV
happens when the ratio of excess return to MCTR is the same for all asset classes and matches the Sharpe ratio of the tangency portfolio
120 Minus Your Age Rule
heuristic for equity allocation where you take 120 minus your age to solve for the percentage allocation you should have to equities
Re-Sampled Mean-Variance Optimization - Benefit
improves the quality of inputs by replacing forward-looking estimates with averages from hundreds of thousands of simulations
Hedging/Return-Seeking Approach - Important Tool
inflation-linked bonds are important because they move in value as the liability does with inflation, which helps keep the correlation between the liability and the hedging portfolio close to 1
Reverse Optimization - Criticsm
just like MVO, it is very sensitive to changes in specific inputs, such as individual asset class expected return
Risk Parity Approach - Common Asset Class
leads to a focus on fixed income, as the goal of equalizing standard deviations across asset classes leads to the use of fixed income to help balance risk
Risk Parity Approach - Use of Leverage
leads to a higher use of leverage, as the bias towards fixed income means that leverage needs to be used to gain higher returns
Absolute Contribution to Total Risk (ACTR) - Defintion
measures how much the asset class contributes to portfolio return volatility
Integrated Asset/Liability Approach - Risk Measures
measures of tail risk, such as VaR and CVaR
Reverse Optimization - Definition
process of taking efficient asset allocation weights, covariances, and the risk-aversion coefficient and then solving for an expected return
Corner Portfolios
represent points along the efficient frontier at which the weight for constituents goes from positive to zero, or from zero to positive
Bottom-Up Risk Determination
second approach used with goals-based allocation after the minimum expected return is found so that a discount rate can be calculated to solve for the PV of expected cash flows, which is the amount of money needed to fund a goal
Heuristics
simple guidelines that some investors use to direct their asset allocation strategy
Black-Litterman Model
software that takes the returns in excess of the risk-free rate produced from reverse optimization and alters it to incorporate your own personal views on asset returns
3 Approaches for Liability-Relative Asset Allocation
surplus optimization, hedging/return-seeking approach, integrated asset/liability approach
Surplus Optimization - Definition
the adoption of MVO specifically to generate returns on the surplus assets in a liability relative approach, with a penalty for return volatility
Marginal Contribution to Total Risk (MCTR) - Definition
the amount of incremental risk a security or asset class brings to the overall portfolio
Tangency Portfolio
the portfolio on the efficient frontier with the highest Sharpe ratio
Global Minimum Variance Portfolio
the portfolio on the efficient frontier with the least risk
Re-Sampled Mean-Variance Optimization - Process
use Monte Carlo simulations to estimate lots of capital market expectations and then efficient frontiers, and then create asset allocations from averages of these simulated frontiers
Reverse Optimization - Benefit
use of asset class betas applied to each market risk premium captures a more stable expected return by incorporating global (systematic) risk and increasing diversification
Surplus Return - Formula
(Change in Asset Value - Change in Liability Value) / Initial Asset Value
Ratio of Excess Return to MCTR
(Expected Return - Risk-Free Rate) / MCTR