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Stephen Brown, NYU William Goetzmann, Yale Bing Liang, U Mass Christopher Schwarz, UC Irvine. Hedge Fund Due Diligence. Previous Work: Lessons From Hedge Fund Registration Brown Goetzmann Liang and Schwarz . Is SEC registration useful? What correlates to operational risk?
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Stephen Brown, NYU William Goetzmann, Yale Bing Liang, U Mass Christopher Schwarz, UC Irvine Hedge Fund Due Diligence
Previous Work: Lessons From Hedge Fund RegistrationBrown Goetzmann Liang and Schwarz • Is SEC registration useful? • What correlates to operational risk? • Can we predict operational event?
SEC Registration Form ADV • Form ADV Item 11: legal and regulatory problems. • A “Problem” fund = a fund whose management company answered ‘Yes’ to ANY question on Item 11 of Form ADV. • Past Suspension • Past Fine • Other Legal or Regulatory issue
1526 358 Problem 1814 10295 Non-Problem Problem vs. Non-Problem Funds 100% 80% 60% 40% 20% 0% Hedge Funds All Advisers
Problems and External Conflicting Relationships **, * significant at one and five percent respectively Mandatory Disclosure and Operational Risk: Evidence from Hedge Fund Registration, Stephen Brown, William Goetzmann, Bing Laing, Christopher Schwartz, Not for reproduction or citation or quotation without authors’ permission
5 4.17 4.19 3.57 4 3.38 3 2.14 1.8 2 1.31 0.58 0.52 1 0.44 0 t-value -0.25 -1 -1.18 -1.21 -1.56 -1.56 -2 -2.15 -2.53 -3 -4 -5 -4.73 -6 Log(Assets) Fund Age Std Dev Onshore Incentive Fee High Water Relationship Direct Percent own (Years) Mark Domestic 75% Conflict of Interest and Future Performance Regression t-values. Blue = problem fund **, * significant at one and five percent respectively From Mandatory Disclosure and Operational Risk: Evidence from Hedge Fund Registration, Stephen Brown, William Goetzmann, Bing Laing, Christopher Schwartz, Draft: October 11, 2007. Not for reproduction or citation or quotation without authors’ permission
Predicting Problems • We need PAST ADV problems • Difficult to get from SEC • Instead, we can use observables • “Rotation” of Lipper-TASS variables and “Rotation” of ADV characteristics that are most highly correlated. • Canonical correlation. • Use this model with historical data.
The ω-Score: • A propensity score for “problem” • Uses TASS data (widely available) • As good as we can do without a research and due diligence team • A linear factor model • Does it predict fund disappearance? • Back-test
Operational Risk Measure Predicting Returns From Estimating Operational Risk For Hedge Funds, The Ω-Score, Stephen Brown, William Goetzmann, Bing Laing, Christopher Schwarz. Not for reproduction or citation or quotation without authors’ permission.
How About Fund Failure? • Is the half-life of the fund related to the omega score? • Other factors – age.
Operational risk and the half life of USD funds Half Life 0.7 90 months 0.6 80 0.5 70 Financial risk (prior monthly ) 0.4 0.3 60 0.2 50 0.1 40 0.8 0.4 0.6 1.0 1.2 Operational Risk -Score
Due Diligence • Market alternative to regulation • Not all funds register • Due diligence before investing
Current Study: Private Sector Data • 445 DD funds over past decade • DD decision endogenous • Past returns. • Different thresholds for problems based on returns. • Focus on honesty
Conclusion • Hedge fund opacity demands trust • Problem funds have: • Verification problems • Minor auditors • More likely to self-price