We study the problem of intervention effects generating various types of outliers in an integer-valued autoregressive model with Poisson innovations. We concentrate on outliers which enter the dynamics and can be seen as effects of extraordinary events. We consider three different scenarios, namely the detection of an intervention effect of a known type at a known time, the detection of an intervention effect of unknown type at a known time and the detection of an intervention effect when both the type and the time are unknown. We develop F-tests and score tests for the first scenario. For the second and third scenarios we rely on the maximum of the different F-type or score statistics. The usefulness of the proposed approach is illustrated using monthly data on human brucellosis infections in Greece.
翻译:我们研究在普瓦松创新的整数值自动递减模型中产生各种异常值的干预效应问题,我们集中研究进入动态并可被视为非常事件影响的外部值,我们考虑三种不同的情况,即在已知时间发现已知类型的干预效应,在已知时间发现未知类型的干预效应,在类型和时间都未知时发现干预效应。我们为第一种情景开发F测试和得分测试。在第二种和第三种情景中,我们依靠不同的F型或得分统计数据的最大值。用希腊人类布鲁氏菌感染的月度数据来说明拟议方法的有用性。</s>