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A study on a Kalman filter and recursive parameter estimation approach applied to stock prediction.

dc.contributor.advisorIonescu, Dan,
dc.contributor.authorMcGonigal, Denis.
dc.date.accessioned2009-03-25T20:06:23Z
dc.date.available2009-03-25T20:06:23Z
dc.date.created1996
dc.date.issued1996
dc.degree.levelMasters
dc.degree.nameM.Sc.
dc.description.abstractThis thesis describes a first experimental project using a recursive parameter estimation and Kalman filter approach to on-line modelling and prediction of stock market time-series. On-line (real-time) and daily closing price stock data are identified as Box-Jenkins ARIMA models. Differencing is performed to obtain a locally wide sense stationary process which is identified through spectral estimation methods. The initial model parameters are updated on-line via the Recursive Prediction Error algorithm and predictions are performed using the Kalman filter. This approach is studied and compared to the traditional Box-Jenkins SISO approach. The daily stock processes are also modeled as autoregressive processes embedded in white noise, which make an ideal investigation for the Kalman filter.
dc.format.extent121 p.
dc.identifier.citationSource: Masters Abstracts International, Volume: 35-05, page: 1521.
dc.identifier.isbn9780612164253
dc.identifier.urihttp://hdl.handle.net/10393/10127
dc.identifier.urihttp://dx.doi.org/10.20381/ruor-8136
dc.publisherUniversity of Ottawa (Canada)
dc.subject.classificationEconomics, Finance.
dc.titleA study on a Kalman filter and recursive parameter estimation approach applied to stock prediction.
dc.typeThesis

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