Spelling suggestions: "subject:"time series analysis"" "subject:"lime series analysis""
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Some contributions to robust time series modelling /Lo, Chan-lam. January 1987 (has links)
Thesis (M. Phil.)--University of Hong Kong, 1987.
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Statistical analysis of high frequency data using autoregressive conditional duration models /Pang, Kwok-wing. January 2001 (has links)
Thesis (M. Phil.)--University of Hong Kong, 2002. / Includes bibliographical references (leaves 76-80).
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On the long memory autoregressive conditional duration modelsMa, Sai-shing, 馬世晟 January 2014 (has links)
In financial markets, transaction durations refer to the duration time between two consecutive trades. It is common that more frequent trades are expected to be followed by shorter durations between consecutive transactions, while less frequent trades are expected to be followed by longer durations. Autoregressive conditional duration (ACD) model was developed to model transaction durations, based on the assumption that the expected average duration is dependent on the past durations.
Empirically, transaction durations possess much longer memory than expected. The autocorrelation functions of durations decay slowly and are still significant after a large number of lags. Therefore, the fractionally integrated autoregressive conditional duration (FIACD) model was proposed to model this kind of long memory behavior.
The ACD model possesses short memory as the dependence of the past durations will die out exponentially. The FIACD model possesses much longer memory as the dependence of the past durations will decay hyperbolically. However, the modeling result would be misleading if the actual dependence of the past durations decays between exponential rate and hyperbolic rate. Neither of these models can truly reveal the memory properties in this case.
This thesis proposes a new duration model, named as the hyperbolic autoregressive conditional duration (HYACD) model, which combines the ACD model and the FIACD model into one. It possesses both short memory and long memory properties and allows the dependence of the past durations to decay between the exponential rate and the hyperbolic rate. It also indicates whether the dependence is close to short memory or long memory. The model is applied to the transaction data of AT&T and McDonald stocks traded on NYSE and statistically positive results are obtained when it is compared to the ACD model and the FIACD model. / published_or_final_version / Statistics and Actuarial Science / Master / Master of Philosophy
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Time series analysis in inventory management謝永然, Tse, Wing-yin. January 1993 (has links)
published_or_final_version / Applied Statistics / Master / Master of Social Sciences
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Some contributions to robust time series modelling盧燦霖, Lo, Chan-lam. January 1987 (has links)
published_or_final_version / Statistics / Master / Master of Philosophy
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On a double threshold autoregressive heteroskedastic time seriesmodel李振華, Li, Chun-wah. January 1994 (has links)
published_or_final_version / Statistics / Master / Master of Philosophy
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Time sequences: data mining丁嘉慧, Ting, Ka-wai. January 2001 (has links)
published_or_final_version / Mathematics / Master / Master of Philosophy
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Statistical analysis of discrete time series with application to the analysis of workers' compensation claims dataFreeland, R. Keith 05 1900 (has links)
This thesis examines the statistical properties of the Poisson AR(1) model of Al-Osh and Alzaid (1987) and McKenzie (1988). The analysis includes forecasting,
estimation, testing for independence and specification and the addition of regressors to
the model.
The Poisson AR(1) model is an infinite server queue, and as such is well suited
for modeling short-term disability claimants who are waiting to recover from an injury or
illness. One of the goals of the thesis is to develop statistical methods for analyzing series
of monthly counts of claimants collecting short-term disability benefits from the
Workers' Compensation Board (WCB) of British Columbia.
We consider four types of forecasts, which are the k-step ahead conditional mean,
median, mode and distribution. For low count series the k-step ahead conditional
distribution is practical and much more informative than the other forecasts.
We consider three estimation methods: conditional least squares (CLS),
generalized least squares (GLS) and maximum likelihood (ML). In the case of CLS
estimation we find an analytic expression for the information and in the GLS case we find
an approximation for the information. We find neat expressions for the score function and
the observed Fisher information matrix. The score expressions leads to new definitions of
residuals.
Special care is taken to test for independence since the test is on the boundary of
the parameter space. The score test is asymptotically equivalent to testing whether the
CLS estimate of the correlation coefficient is zero. Further we define a Wald and
likelihood ratio test.
Then we use the general specification test of McCabe and Leybourne (1996) to
test whether the model is sufficient to explain the variation found in the data.
Next we add regressors to the model and update our earlier forecasting, estimation
and testing results. We also show the model is identifiable.
We conclude with a detailed application to monthly WCB claims counts. The
preliminary analysis includes plots of the series, autocorrelation function and partial
autocorrelation function. Model selection is based on the preliminary analysis, t-tests for
the parameters, the general specification test and residuals. We also include forecasts for
the first six months of 1995.
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Using Lp-norm standardized time series variance estimators for output analysis of simulationsPicciuto, John A., Jr. 05 1900 (has links)
No description available.
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Initialization bias tests for stationary stochastic processes based upon standardized time series techniquesOckerman, Daniel H. 08 1900 (has links)
No description available.
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