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Model selection on tourism forecasting: A comparison between Bayesian model averaging and Lasso

机译:旅游预测模型选择:贝叶斯模型平均和套索的比较

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This study tries to tackle the tourism forecasting problem using online search queries. This recent-developed methodology is subject to several criticisms, one of which is how to choose satisfying search queries to be built in the forecasting model. This study compares two popular candidates, which are the Bayesian Model Averaging (BMA) approach and the Least Absolute Shrinkage and Selector Operator (Lasso) approach. Evidence shows that the two approaches produce similar forecasting performance but different query selection results.
机译:本研究试图使用在线搜索查询来解决旅游预测问题。该最近开发的方法受到几种批评,其中一个是如何选择满足预测模型中内置的令人满意的搜索查询。本研究比较了两个流行的候选者,这是贝叶斯模型平均(BMA)方法以及绝对的收缩和选择器操作员(套索)方法。证据表明,这两种方法产生了类似的预测性能,但不同的查询选择结果。

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