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Socio-Economic Objective : Mathematical sciences
Field of Research : Time-Series Analysis
Australian State/Territory : VIC
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  • Funded Activity

    Discovery Projects - Grant ID: DP0877424

    Funder
    Australian Research Council
    Funding Amount
    $231,000.00
    Summary
    Forecasting with single source of randomness state space models. The framework developed in this project, for identifying and extrapolating trends, seasonal patterns and economic cycles in time series, has a large and diverse range of useful applications in Australia. Some examples include its potential use in the development of appropriate monetary policy, its use to better inform finance markets of risk levels associated with shares, its use to forecast demand in supply chains to provide .... Forecasting with single source of randomness state space models. The framework developed in this project, for identifying and extrapolating trends, seasonal patterns and economic cycles in time series, has a large and diverse range of useful applications in Australia. Some examples include its potential use in the development of appropriate monetary policy, its use to better inform finance markets of risk levels associated with shares, its use to forecast demand in supply chains to provide a better service to customers, and its use in call centres to better tailor staff schedules to meet customer calls.
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    Funded Activity

    Discovery Projects - Grant ID: DP0450257

    Funder
    Australian Research Council
    Funding Amount
    $165,000.00
    Summary
    New Approaches to the Analysis of Count Time Series. The focus of this proposal is on the analysis of data that enumerate events over time. Occurrences of such count data abound in economics and business, examples being observations on insurance claims, loan defaults and individual product demand. This project develops a suite of innovative methods for modelling and predicting event counts. The methods explicitly accommodate both the discreteness of the data and possible complexities in its evo .... New Approaches to the Analysis of Count Time Series. The focus of this proposal is on the analysis of data that enumerate events over time. Occurrences of such count data abound in economics and business, examples being observations on insurance claims, loan defaults and individual product demand. This project develops a suite of innovative methods for modelling and predicting event counts. The methods explicitly accommodate both the discreteness of the data and possible complexities in its evolution over time. In so doing, they enable both accurate inferences regarding the dynamic structure of the data to be drawn and accurate forecasts of future event counts to be produced.
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    Funded Activity

    Discovery Projects - Grant ID: DP0664121

    Funder
    Australian Research Council
    Funding Amount
    $220,000.00
    Summary
    New Statistical Procedures for Analysing Dependence in Non-Gaussian Time Series Data. In the economic, finance and business spheres, statistical data is often discrete, binary, strictly positive, or characterized by an uneven distribution of values above and below the average. Prominent examples are the high frequency financial data that have become accessible with the computerization of financial markets, including the number of trades in successive time intervals, the direction of price change .... New Statistical Procedures for Analysing Dependence in Non-Gaussian Time Series Data. In the economic, finance and business spheres, statistical data is often discrete, binary, strictly positive, or characterized by an uneven distribution of values above and below the average. Prominent examples are the high frequency financial data that have become accessible with the computerization of financial markets, including the number of trades in successive time intervals, the direction of price changes, the time between trades and the return on a financial asset over short periods. This project develops a range of new statistical tools that will enable both researchers and practitioners to analyze the dynamic behaviour in such data and thereby validate and implement a range of financial models.
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    Funded Activity

    Discovery Projects - Grant ID: DP0343811

    Funder
    Australian Research Council
    Funding Amount
    $108,000.00
    Summary
    Inference in partially non-stationary time series models. Economic theories typically specify the long-run relationship between economic variables. However, researchers usually examine the long-run features of the data by fitting a restrictive class of models using criteria that have only proven useful for short-term forecasting. In this project we consider alternative models and modelling strategies that are appropriate for the study of the long-run. We also develop computer intensive (bootstra .... Inference in partially non-stationary time series models. Economic theories typically specify the long-run relationship between economic variables. However, researchers usually examine the long-run features of the data by fitting a restrictive class of models using criteria that have only proven useful for short-term forecasting. In this project we consider alternative models and modelling strategies that are appropriate for the study of the long-run. We also develop computer intensive (bootstrap) methods, which will provide a much-needed improvement over the existing (asymptotic) methods for making inference about the long-run. Our research will lead to more reliable models for long-term planning in business, industry and government.
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    Funded Activity

    Discovery Projects - Grant ID: DP0984399

    Funder
    Australian Research Council
    Funding Amount
    $387,943.00
    Summary
    Vector ARMA Models and Macroeconomic Modelling: Some New Methodology and Algorithms. Economic variables are strongly related to each other, as well as being strongly related to their recent history. As a result, good dynamic multivariate models are crucial for effective policy making and forecasting in areas of vital national importance such as monetary and fiscal policy, environmental policy and tourism. Our project advances the frontiers of knowledge in multivariate time series modelling. The .... Vector ARMA Models and Macroeconomic Modelling: Some New Methodology and Algorithms. Economic variables are strongly related to each other, as well as being strongly related to their recent history. As a result, good dynamic multivariate models are crucial for effective policy making and forecasting in areas of vital national importance such as monetary and fiscal policy, environmental policy and tourism. Our project advances the frontiers of knowledge in multivariate time series modelling. The outcome of this project will be immediately useful for macroeconomic policy makers such as the Reserve Bank of Australia and the Treasury, and for industry bodies such as Tourism Australia.
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    Funded Activity

    Discovery Projects - Grant ID: DP0452717

    Funder
    Australian Research Council
    Funding Amount
    $120,000.00
    Summary
    Fractional Integration, Power Laws and Econometric Models: Some Methodological and Theoretical Developments. The fundamental objectives of this project are to: (i) Extend current econometric practice and consider the use of power laws as a basis for the construction of a more flexible and realistic class of models for the analysis of economic and financial time series. (ii) To develop inferential techniques appropriate for the modelling of dynamic econometric systems that incorporate struc .... Fractional Integration, Power Laws and Econometric Models: Some Methodological and Theoretical Developments. The fundamental objectives of this project are to: (i) Extend current econometric practice and consider the use of power laws as a basis for the construction of a more flexible and realistic class of models for the analysis of economic and financial time series. (ii) To develop inferential techniques appropriate for the modelling of dynamic econometric systems that incorporate structure characterized by power laws. This will be achieved by building upon the class of fractionally integrated processes. New econometric models and methodologies for the analysis of non-stationarity series will be developed, along with the associated theoretical results.
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