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Published bySidsel Carlsen Modified over 5 years ago
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Top Down Investing Bottom-up Approach Top-Down Approach
Choose under-valued securities Buying performance cheaply Top-Down Approach Build the ideal portfolio Structure portfolio to investor needs May have “expensive” & “cheap” stocks 5/3/2019
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The Ideal Portfolio High return Low risk Inexpensive to manage
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Measures of Return Total return Geometric mean = growth
After tax income and appreciation Geometric mean = growth [V(T) / V(o) ](1/T) - 1 5/3/2019
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Measures of Risk Volatility Downside Risk Value-at-Risk
2 = variance: average squared deviation from historical mean Downside Risk semi-variance: average squared negative deviation from historical mean Value-at-Risk Minimum expected loss for a given horizon and probability level 5/3/2019
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Measures of Expense Transactions Information acquisition
Monitoring costs Probability of losing client 5/3/2019
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Technology of Return and Risk
Harry Markowitz , 1959 Reduced investment to two dimensions Showed that portfolio mix matters most Turned investing into statistics 5/3/2019
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Mean and Standard Deviation
Mean measures expected return Standard deviation measures investor risk Example: six asset classes 5/3/2019
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Correlation: the Third Statistic
Correlation and co-movement One asset “hedges” the other Two assets are better than one 5/3/2019
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Gold and the Stock Market
Correlation of -.3 since 1970 Hedged 70’s crash 5/3/2019
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Gold in the Portfolio? 25% risk reduction 3/4 stocks, 1/4 gold
Is gold dominated? 5/3/2019
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The Efficient Frontier
More assets move frontier Frontier is a continuous set of efficient portfolios Highest return for each level of risk 5/3/2019
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The First Frontier Markowitz took stocks from the NYSE
Mixed them with cash Created the first frontier 5/3/2019
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Risk Reduction by Adding Assets
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International Equity Groups
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Risk and Return Inputs N Periods Geometric Arithmetic Standard
Mean (%) Mean (%) Deviation (%) MSCI Automobiles Cap App MSCI Banking Cap App MSCI Chemicals Cap App MSCI Energy Sources Cap App MSCI Gold Mines Cap App MSCI Telecomm Cap App MSCI Textiles & Apparel Cap App MSCI Transport - Airlines Cap App MSCI Utilities - Elec&Gas Cap Ap 5/3/2019
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Capital Appreciation Indices
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Results 5/3/2019
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Minimum Variance Portfolio
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Value at Risk How much do I expect to lose 1 in 20 times?
E.G. VAR for a $100 million portfolio with a std. of 12% at the 1/20 confidence level is: VAR = $100m * 1.64 * 12% - 8% = 12% 5/3/2019
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Value at Risk Minimum expected annual loss at a 95% confidence
level for the lowest risk portfolio = -12% 5/3/2019
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New Risk Technology VAR with simulations VAR with non-normal returns
VAR with derivatives VAR with chaotic systems 5/3/2019
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Systematic Risk Non-diversifiable risk Market risk Beta risk 5/3/2019
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Portfolio Investors Diversify away most risk
Demand return only for residual Have advantage over non-diversified investors Can bid more for risky assets Have less volatile portfolios 5/3/2019
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Portfolio Investors’ Expected Returns
Only market exposure matters Higher means higher expected return 5/3/2019
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Factor Models Assume price-setters are diversified
Ignore diversifiable risk Expected return must compensate remaining risk “Factors” are risk sources 5/3/2019
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Developing a Top-Down Portfolio
Assess sensitivity of client to: inflation shocks interest rate shifts GDP shocks Tilt portfolio away from stocks matching firm sensitivity Capture factor exposure with minimum transactions costs 5/3/2019
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Example Client is the pension fund of an international oil company
defined benefits ability to contribute depends upon oil prices Exposure to oil shocks APT allows them to “hedge” oil shocks Analysis lets them tilt towards risks they care less about 5/3/2019
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Measuring Beta Linear “Response” to Factor Returns
Example: MSCI is about a 50% “hedge” of the S&P 500. Better Fit = Better Hedge 5/3/2019
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Multi-Factor Models APT = Macro-economic risk factors
BARRA = Security-specific risk factors Fama-French = Size and book to market ratio as risk 5/3/2019
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Arbitrage Pricing Theory
Chen, Roll and Ross factors are: Production risk Inflation shocks term structure shifts investor confidence Explanatory factors Fundamental economic forces drive stocks 5/3/2019
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BARRA factor models Stock characteristics: No common factors Earnings
Leverage Growth Sales No common factors model works to explain returns 5/3/2019
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Fama and French Factors
Size Small stocks have a premium Book to market A “distress” premium? These beat S&P beta 5/3/2019
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Fma & French (1992) Results 5/3/2019
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New Directions in Asset Pricing
Statistical methods for identifying factors Style analysis Economic modeling of risk International Factors Diversity of markets Diversity of environments Diversity of historical experiences 5/3/2019
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