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A Non-Gaussian Asymmetric Volatility Model Geert Bekaert Columbia University and NBER Eric Engstrom Federal Reserve Board of Governors* * The views expressed herein do not necessarily reflect those of the Board of Governors of Federal Reserve System, or its staff.

A Non-Gaussian Asymmetric Volatility Model

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A Non-Gaussian Asymmetric Volatility Model. Geert Bekaert Columbia University and NBER Eric Engstrom Federal Reserve Board of Governors* * The views expressed herein do not necessarily reflect those of the Board of Governors of Federal Reserve System, or its staff. Overview. - PowerPoint PPT Presentation

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Page 1: A Non-Gaussian Asymmetric Volatility Model

A Non-Gaussian Asymmetric Volatility Model

Geert BekaertColumbia University and NBER

Eric EngstromFederal Reserve Board of Governors*

* The views expressed herein do not necessarily reflect those of the Board of Governors of Federal Reserve System, or its staff.

Page 2: A Non-Gaussian Asymmetric Volatility Model

Overview

• We extend asymmetric volatility models in the GARCH class– accommodates time-varying skewness, kurtosis,

and tail behavior– provides simple, closed-form expressions for

higher order conditional moments– outperforms a wide set of extant models in an

application to equity return data

Page 3: A Non-Gaussian Asymmetric Volatility Model

Motivation

Page 4: A Non-Gaussian Asymmetric Volatility Model

Standard GARCH

• The Glosten, Jagannathan, and Runkle (1993) extension of GARCH (GJR-GARCH) has been found to fit stock return data quite well– Engle and Ng (1993)

Page 5: A Non-Gaussian Asymmetric Volatility Model

Our Extension

• First, we define the “BEGE” distribution

Page 6: A Non-Gaussian Asymmetric Volatility Model

CenteredGamma Distributions

Page 7: A Non-Gaussian Asymmetric Volatility Model

Examples of the BEGE Density

Page 8: A Non-Gaussian Asymmetric Volatility Model

Examples of the BEGE Density

Page 9: A Non-Gaussian Asymmetric Volatility Model

Examples of the BEGE Density

Page 10: A Non-Gaussian Asymmetric Volatility Model

Examples of the BEGE Density

Page 11: A Non-Gaussian Asymmetric Volatility Model

Reasonable Acronym?

Bad

Environment

Good

Environment

Page 12: A Non-Gaussian Asymmetric Volatility Model

Narcissistic?

Bekaert

Engstrom

Geert

Eric

Page 13: A Non-Gaussian Asymmetric Volatility Model

Bee Gee Wannabes?

Page 14: A Non-Gaussian Asymmetric Volatility Model

Moments under BEGE

• Simple, closed-form solutions

2 2 21

3 3 31

4 4 4 2 21 1

1

2

6 3

t t p t n t

t t p t n t

t t p t n t t t

E u p n

E u p n

E u p n E u

Page 15: A Non-Gaussian Asymmetric Volatility Model

Embed BEGE inGJR-GARCH

• Shape parameters follow GJR GARCH-like process

Page 16: A Non-Gaussian Asymmetric Volatility Model

Application

• Monthly (log) stock return data 1926-2010• Estimate by maximum likelihood• Compare performance of a variety of models

– Standard GARCH (Gaussian and Student t)– GJR-GARCH (Gaussian and Student t)– Regime switching models (2,3 states, with and

without “jumps”)– BEGE GJR GARCH (including restricted versions)

Page 17: A Non-Gaussian Asymmetric Volatility Model

Comparing Models:Information Criteria

• BEGE also dominates in a variety of other tests

Page 18: A Non-Gaussian Asymmetric Volatility Model

BEGE: Filtered Series

Page 19: A Non-Gaussian Asymmetric Volatility Model

BEGE: Impact Curves

Page 20: A Non-Gaussian Asymmetric Volatility Model

Out of Sample Test: VIX

• The VIX index is the one-month ahead volatility of the stock market implied by equity option prices under the Q-measure.

Page 21: A Non-Gaussian Asymmetric Volatility Model

VIX Hypotheses

• Assume that investors have CRRA utility with respect to stock market wealth

Page 22: A Non-Gaussian Asymmetric Volatility Model

VIX versus Vol

Page 23: A Non-Gaussian Asymmetric Volatility Model

VIX Test Results

• Regression (1990-2012, monthly)

• Orthogonality test

Page 24: A Non-Gaussian Asymmetric Volatility Model

Portfolio Application

• An investor invests, period-by-period, in the risk free rate and the stock market. The portfolio return is

Page 25: A Non-Gaussian Asymmetric Volatility Model

Risk Management

• GJR weights are more aggressive

– GJR: “1 percent” VaR breached in 15 of 1050 periods– BEGE: 1 percent VaR breached in 10 of 1050 periods

Page 26: A Non-Gaussian Asymmetric Volatility Model

Macroeconomic Series

Slowdown = four quarter MA < 1% (annual)

Page 27: A Non-Gaussian Asymmetric Volatility Model

Monetary Policy

• Should policymakers care about upside versus downside risks to real growth or inflation?– standard “loss function” suggests maybe not

– But• typically arises from a second order approximation to

agents’ utility function. Why not third order?• is it plausible?• evidence of asymmetries in reaction functions (Dolado,

Maria-Dolores, Naveira (2003))

Page 28: A Non-Gaussian Asymmetric Volatility Model

Conclusion

• The BEGE distribution in a GARCH setting– Accommodates time-varying tail risk behavior in a tractable

fashion– Fits historical return data better than some models– Helps explain observed option prices

• Applications to macroeconomic time series analysis, term structure modeling, and monetary policy are planned.