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A multiple inflated negative binomial hurdle regression model: analysis of the Italians' tourism behaviour during the Great Recession

机译:多膨胀的负二项式障碍回归模型:分析意大利人在巨大经济衰退期间的旅游行为

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We analyse tourism behaviour of Italian residents in the period covering the 2008 Great Recession. Using theTrips of Italian Residents in Italy and Abroadquarterly survey, carried out by the Italian National Institute of Statistics, we investigate whether and how the economic recession has affected the total number of overnight stays. The response variable is the result of a two-stage decision process: first we choose to take a holiday, then for how long. Moreover, since the number of overnight stays is typically concentrated on specific lengths (week-end, week, fortnight) we observe multiple peculiar spikes in its distribution. To take into account these two distinctive characteristics, we generalise the usual hurdle regression model by specifying a multiple inflated truncated negative binomial distribution for the positive responses. Results show that the economic recession impacted negatively on both components of the decision process and that, by controlling for the inflated nature of the response variable's distribution, the proposed formulation provides a better representation of the Italians' tourism behaviour in comparison with non-inflated hurdle models. Given this, we believe that our model can be a useful tool for policy makers who are trying to forecast the effects of new targeted policies to support tourism economy.
机译:在涵盖2008年巨大衰退的期间,分析意大利居民的旅游行为。通过意大利和国内居民的意大利居民的调查,由意大利国家统计研究所进行,我们调查了经济衰退是否影响了一夜之间的总数。响应变量是两级决策过程的结果:首先我们选择休假,然后是多久。此外,由于过夜停留的数量通常集中在特定长度(周末,周,两周)上,我们观察其分布的多个特殊尖峰。要考虑到这两个独特的特征,我们通过指定用于正反应的多个膨胀截断的负二项式分布来概括通常的障碍回归模型。结果表明,经济经济衰退对决策过程的两种组成部分产生负面影响,并且通过控制响应变量分配的膨胀性质,拟议的制定能够更好地代表意大利人的旅游行为与非膨胀障碍相比楷模。鉴于这一点,我们认为,我们的模型可以成为一项有用的政策制定者工具,他们试图预测新的目标政策支持旅游经济的影响。

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