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  1. Nurul Hidayah Sadikon, Ibrahim Mohamed, Dharini Pathmanathan, Adriana Irawati Nur Ibrahim
    Sains Malaysiana, 2018;47:1319-1326.
    A cylindrical data set consists of circular and linear variables. We focus on developing an outlier detection procedure
    for cylindrical regression model proposed by Johnson and Wehrly (1978) based on the k-nearest neighbour approach.
    The procedure is applied based on the residuals where the distance between two residuals is measured by the Euclidean
    distance. This procedure can be used to detect single or multiple outliers. Cut-off points of the test statistic are generated
    and its performance is then evaluated via simulation. For illustration, we apply the test on the wind data set obtained
    from the Malaysian Meteorological Department.
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