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    Estimation of Conditional Weighted Expected Shortfall under Adjusted Extreme Quantile Autoregression

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    Date
    2021-07-14
    Author
    Kithinji, Martin M.
    Mwita, Peter N.
    Kube, Ananda O.
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    Abstract
    In this paper, we present an estimator that improves the well-calibrated coherent risk measure: expected shortfall by restructuring its functional form to incorporate dynamic weights on extreme conditional quantiles used in its definition. Adjusted Extreme Quantile Autoregression will is used in estimating intermediary location measures. Consistency and coherence of the estimator are also proved. The resulting estimator was found to be less conservative compared to the expected shortfall.
    URI
    http://ir.mksu.ac.ke/handle/123456780/8175
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    • School of Pure and Applied Sciences [259]

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