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Autoregressive Conditional Duration: A New Model for Irregularly Spaced Transaction Data

Robert F. Engle and Jeffrey R. Russell
Econometrica
Vol. 66, No. 5 (Sep., 1998), pp. 1127-1162
Published by: The Econometric Society
DOI: 10.2307/2999632
Stable URL: http://www.jstor.org/stable/2999632
Page Count: 36
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Autoregressive Conditional Duration: A New Model for Irregularly Spaced Transaction Data
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Abstract

This paper proposes a new statistical model for the analysis of data which arrive at irregular intervals. The model treats the time between events as a stochastic process and proposes a new class of point processes with dependent arrival rates. The conditional intensity is developed and compared with other self-exciting processes. Because the model focuses on the expected duration between events, it is called the autoregressive conditional duration (ACD) model. Asymptotic properties of the quasi maximum likelihood estimator are developed as a corollary to ARCH model results. Strong evidence is provided for duration clustering for the financial transaction data analyzed; both deterministic time-of-day effects and stochastic effects are important. The model is applied to the arrival times of trades and therefore is a model of transaction volume, and also to the arrival of other events such as price changes. Models for the volatility of prices are estimated with price-based durations, and examined from a market microstructure point of view.

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