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T. Ané, H. Geman (2000)
Order Flow, Transaction Clock, and Normality of Asset ReturnsJournal of Finance, 55
Andrew Patton, Modelling Asymmetric Exchange Rate Dependence
P. Hansen, Asger Lunde (2005)
Realized Variance and Market Microstructure NoiseJournal of Business & Economic Statistics, 24
F. Critchley, P. Marriott, Mark Salmon (2000)
An elementary account of Amari's expected geometry
A. Royen, D. Tambakis (1999)
Bootstrap predictability of daily exchange rates in ARMA models
Eric Bouyé, V. Durrleman, A. Nikeghbali, Gaël Riboulet, T. Roncalli (2001)
Copulas: An Open Field for Risk ManagementProject & Program Management eJournal
Christopher Neely, P. Weller (1999)
Predictability in International Asset Returns: A ReexaminationCapital Markets: Asset Pricing & Valuation eJournal
A. Wood, Ana‐Maria Fuertes, J. Coakley (2002)
Reinterpreting the Real Exchange Rate - Yield Diffential Nexus
(1999)
Intraday Technical Trading in the Foreign Exchange Market
C. Jones, Gautam Kaul, M. Lipson (1994)
Transactions, Volume, and VolatilityReview of Financial Studies, 7
S. Satchell, Soosung Hwang (2001)
Tracking error: Ex ante versus ex post measuresJournal of Asset Management, 2
Alessio Sancetta (2004)
Decoupling and Convergence to Independence with Applications to Functional Limit Theorems
Noise Training, Costly Arbitrage and Asset Prices: evidence from closed-end funds
Mark Salmon, Soosung Hwang (2001)
A new measure of herding and empirical evidence
S. Satchell, G. Christodoulakis (2000)
Evolving Systems of Financial Returns: Auto-Regressive Conditional Beta
P. Diggle, J. Marron (1988)
Equivalence of Smoothing Parameter Selectors in Density and Intensity EstimationJournal of the American Statistical Association, 83
Whitney Newey, K. West (1986)
A Simple, Positive Semi-Definite, Heteroskedasticity and Autocorrelationconsistent Covariance MatrixEconometrics eJournal
N. Webber, Claudia Riveiro (2002)
Valuing path dependent options in the variance-gamma model by Monte Carlo with a gamma bridgeComputing in Economics and Finance
Eric Bouyé, Nicolas Gaussel, Mark Salmon (2002)
Investigating Dynamic Dependence Using Copulae
Ana‐Maria Fuertes, J. Coakley (2001)
Rethinking the Forward Premium Puzzle in a Non-linear Framework
Implied Volatility Forecasting: A Compaison of Different Procedures Including Fractionally Integrated Models with Applications to UK Equity Options
Alessio Sancetta (2004)
Copula Based Monte Carlo Integration in Financial Problems
P. Protter (1990)
Stochastic integration and differential equations : a new approach
R. Batchelor, Ismail Orakçıoğlu (2003)
Event-related GARCH: the impact of stock dividends in TurkeyApplied Financial Economics, 13
Ana‐Maria Fuertes, J. Coakley, Ron Smith (2001)
Small Sample Properties of Panel Time-Series Estimators with I(1) ErrorsEconometrics eJournal
K. French, G. Schwert, R. Stambaugh (1987)
Expected stock returns and volatilityJournal of Financial Economics, 19
S. Satchell, Soosung Hwang (1999)
Improved testing for the efficiency of asset pricing theories in linear factor models
Mark Salmon, R. Hillman (1999)
From Market Micro-structure to Macro Fundamentals: is there Predictability in the Dollar-Deutsche Mark Exchange Rate?
Victor Niederhoffer, M. Osborne (1966)
Market Making and Reversal on the Stock ExchangeJournal of the American Statistical Association, 61
R. MacDonald, I. Marsh (2004)
Currency spillovers and tri-polarity: a simultaneous model of the US dollar, German mark and Japanese yenJournal of International Money and Finance, 23
Fulvio Corsi, G. Zumbach, Ulrich Müller, M. Dacorogna (2001)
Consistent High-Precision Volatility from High-Frequency DataEuropean Financial Management Association Meetings (EFMA) (Archive)
O. Barndorff-Nielsen, N. Shephard (2004)
Econometric Analysis of Realized Covariation: High Frequency Based Covariance, Regression, and Correlation in Financial EconomicsEconometrica, 72
I. Tsiakas (2004)
Is Seasonal Heteroscedasticity Real? An International Perspective
Abhay Abhyankar, Lucio Sarno, Giorgio Valente (2004)
Exchange Rates and Fundamentals: Evidence on the Economic Value of PredictabilityCEPR Discussion Paper Series
G. Christodoulakis (2002)
Generating Composite Volatility Forecasts with Radom Factor Betas
R. Oomen (2004)
Properties of realized variance for a pure jump process: calendar time sampling versus business time sampling
Xiaohong Chen, Yanqin Fan, Andrew Patton (2004)
Simple Tests for Models of Dependence between Multiple Financial Time Series, with Applications to U.S. Equity Returns and Exchange RatesEconometrics eJournal
Lan Zhang (2004)
Efficient Estimation of Stochastic Volatility Using Noisy Observations: A Multi-Scale ApproachEconometrics eJournal
B. Bollen, B. Inder (2002)
Estimating Daily Volatility in Financial Markets Utilizing Intraday DataJournal of Empirical Finance, 9
L. Hurwicz, A. Burns, W. Mitchell (1946)
Measuring Business Cycles.Journal of the American Statistical Association, 41
S. Satchell, Soosung Hwang (2001)
The asset allocation decision in a loss aversion world
S. Satchell, C. Pedersen (2000)
Evaluating the Performance of Nearest Neighbour Algorithms when Forecasting US Industry Returns
F. Bandi, Jeffrey Russell (2004)
Separating Microstructure Noise from VolatilityJohns Hopkins: Finance (Topic)
V. Corradi, W. Distaso (2004)
Testing for One Factor Models versus Stochastic Volatility Models, in the Presence of Jumps. ∗
Soosung Hwang (2000)
Properties of Cross-sectional Volatility
M. Dixon, A. Ledford, P. Marriott (1997)
Finite Sample Inference for Extreme Value Distributions
S. Satchell, G. Christodoulakis (2002)
On th Evolution of Global Style Factors in the MSCI Universe of AssetsOperational Research
R. Oomen (2006)
Properties of Realized Variance Under Alternative Sampling SchemesJournal of Business & Economic Statistics, 24
Eric Bouyé (2008)
Multivariate Extremes at Work for Portfolio Risk MeasurementERN: Estimation (Topic)
Soosung Hwang, S. Satchell (2005)
GARCH model with cross-sectional volatility: GARCHX modelsApplied Financial Economics, 15
(1994)
Transactions Review of Financial Studies
How do UK-Based Foreign Exchange Dealers Think Their Market Operates?
Soosung Hwang (2000)
THE EFFECTS OF SYSTEMATIC SAMPLING AND TEMPORAL AGGREGATION ON DISCRETE TIME LONG MEMORY PROCESSES AND THEIR FINITE SAMPLE PROPERTIESEconometric Theory, 16
Nour Meddahi (2002)
A theoretical comparison between integrated and realized volatilityJournal of Applied Econometrics, 17
Lucio Sarno, D. Thornton, Giorgio Valente (2004)
Federal Funds Rate PredictionJournal of Money, Credit, and Banking, 37
Soosung Hwang, Mark Salmon (2001)
An Analysis of Performance Measures Using Copulae
Forecasting Inflation with a Non-linear Output Gap Model
J. Coakley, Ana‐Maria Fuertes, Fabio Spagnolo (2004)
The Feldstein-Horioka puzzle is not as bad as you think
R. Batchelor, D. Peel (1998)
Rationality testing under asymmetric lossEconomics Letters, 61
Soosung Hwang, S. Satchell (2002)
Calculating the misspecification in beta from using a proxy for the market portfolioApplied Financial Economics, 12
P. Zaffaroni, Banca d’Italia (2003)
Gaussian inference on certain long-range dependent volatility modelsJournal of Econometrics, 115
P. Marriott, Mark Salmon (2000)
An introduction to differential geometry in econometrics
Damien Challet, A. Martino, Matteo Marsili, Isaac Castillo (2004)
Minority games with finite score memoryJournal of Statistical Mechanics: Theory and Experiment, 2006
Charles Engel, Ken West (2003)
Exchange Rates and FundamentalsJournal of Political Economy, 113
Lucio Sarno, Giorgio Valente (2005)
Empirical Exchange Rate Models and Currency Risk: Some Evidence from Density ForecastsJournal of International Money and Finance, 24
Richard Lewin, S. Satchell (2001)
The Derivation of a New Model of Equity Duration
Soosung Hwang, S. Satchell (1997)
Market Risk and the Concept of Fundamental Volatility
Richard Goldingy, Darrell Longz (2007)
Using an object-oriented framework to construct wide-area group communication mechanisms
S. Satchell, Soosung Hwang (2000)
Valuing Information Using Utility Functions
W. Distaso, V. Corradi (2004)
Estimating and Testing Sochastic Volatility Models using Realized Measures
O. Barndorff-Nielsen, N. Shephard (2004)
A feasible central limit theory for realised volatility under leverage
A. Hall, Soosung Hwang, S. Satchell (2000)
Using Bayesian Variable Selection Methods to Choose Style Factors in Global Stock Return ModelsJournal of Banking and Finance, 26
G. Gemmill (2002)
Testing Merton's Model for Credit Spreads on Zero-Coupon BondsBanking & Financial Institutions eJournal
I. Tsiakas (2005)
Periodic Stochastic Volatility and Fat TailsJournal of Financial Econometrics, 4
A. Kurpiel, T. Roncalli (1998)
Option Hedging with Stochastic VolatilityRisk Management
Zhou Zhou, Tuesday May, Eckhart Hall (2005)
“A Tale of Two Time Scales: Determining Integrated Volatility with Noisy High-Frequency Data”
Soosung Hwang, C. Pedersen (2002)
On Empirical Risk Measurement with Asymmetric Returns Data
S. Satchell, L. Middleton (2000)
Deriving the APT when the Number of Factors is Unknown
S. Press (1967)
A Compound Events Model for Security PricesThe Journal of Business, 40
Lucio Sarno, Giorgio Valente (2005)
Modelling and forecasting stock returns: exploiting the futures market, regime shifts and international spilloversJournal of Applied Econometrics, 20
R. Oomen (2003)
Three Essays on the Econometric Analysis of High Frequency Financial Data
Christopher Neely, P. Weller (2000)
Technical Analysis and Central Bank InterventionCapital Markets eJournal
Massimiliano Marcellino, Mark Salmon (2002)
ROBUST DECISION THEORY AND THE LUCAS CRITIQUEMacroeconomic Dynamics, 6
Richard Clarida, Lucio Sarno, Mark Taylor, Giorgio Valente (2005)
The Role of Asymmetries and Regime Shifts in the Term Structure of Interest RatesCapital Markets: Asset Pricing & Valuation
Testing and Modelling Market Microstructure Effects with an Application to the Dow Jones Industrial Average
J. Jacod, A. Shiryaev (1987)
Limit Theorems for Stochastic Processes
J. Coakley, Ana‐Maria Fuertes, María-Teresa Pérez (2003)
Numerical Issues in Threshold Autoregressive Modeling of Time SeriesJournal of Economic Dynamics and Control, 27
O. Barndorff-Nielsen, P. Hansen, Asger Lunde, N. Shephard (2004)
Regular and Modified Kernel-Based Estimators of Integrated Variance: The Case with Independent NoiseResearch Papers in Economics
Ian Marsha (1999)
AN ANALYSIS OF THE PERFORMANCE OF EUROPEAN FOREIGN EXCHANGE FORECASTERS
G. Christodoulakis (2001)
Co-Volatility and Correlation Clustering : A Multivariate Correlated ARCH Framework
P. Clark (1973)
A Subordinated Stochastic Process Model with Finite Variance for Speculative PricesEconometrica, 41
F. Critchley, P. Marriott, Mark Salmon (2002)
On preferred point geometry in statisticsJournal of Statistical Planning and Inference, 102
T. Andersen, T. Bollerslev, F. Diebold, Paul Labys (2001)
Modeling and Forecasting Realized VolatilityCapital Markets: Asset Pricing & Valuation eJournal
D. Power, I. Marsh (1999)
A Panel-Based Investigation into the Relationship Between Stock Prices and Dividends
S. Satchell, J. Knight, Soosung Hwang (1999)
Forecasting Volatility using LINEX Loss Functions
Soosung Hwang, S. Satchell (1999)
Modelling emerging market risk premia using higher momentsInternational Journal of Finance & Economics, 4
Renzo Avesani, G. Gallo, Mark Salmon (1999)
On the Evolution of Credibility and Flexible Exchange Rate Target Zones
In this article I study the statistical properties of a bias-corrected realized variance measure when high-frequency asset prices are contaminated with market microstructure noise. The analysis is based on a pure jump process for asset prices and explicitly distinguishes among different sampling schemes, including calendar time, business time, and transaction time sampling. Two main findings emerge from the theoretical and empirical analysis. First, based on the mean-squared error (MSE) criterion, a bias correction to realized variance (RV) allows for the more efficient use of higher frequency data than the conventional RV estimator. Second, sampling in business time or transaction time is generally superior to the common practice of calendar time sampling in that it leads to a further reduction in MSE. Using IBM transaction data, I estimate a 2.5-minute optimal sampling frequency for RV in calendar time, which drops to about 12 seconds when a first-order bias correction is applied. This results in a more than 65% reduction in MSE. If, in addition, prices are sampled in transaction time, a further reduction of about 20% can be achieved.
Journal of Financial Econometrics – Oxford University Press
Published: Aug 26, 2005
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