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Criteria for selecting model updating methods for better temporal transferability

机译:选择模型更新方法的标准,以获得更好的时间可转换性

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When older and more recent datasets have large and small numbers of observations, respectively, then discrete choice modellers must decide whether to utilise both datasets with model updating (transfer scaling, joint context estimation, Bayesian updating, and combined transfer estimation) or only the more recent dataset. This study investigates the case when the data collection time points and the number of observations from each time point differ. Bootstrapping was applied to commuting mode choice models utilising datasets from Nagoya, Japan. The following criteria are proposed: (1) when the more recent time point has a large number of observations, use only the more recent data; (2) when the more recent time point has a smaller number of observations, use transfer scaling or joint context estimation based on the differences in the contexts of the two time points and the sample size from the older time point.
机译:当较旧的数据集分别具有大而少量的观察时,然后离散选择典范必须决定是否利用具有模型更新的数据集(传输缩放,联合上下文估计,贝叶斯更新以及组合传输估计)或者最近的数据集。本研究调查数据收集时间点和每个时间点的观测次数不同。使用来自日本名古屋的数据集应用于通勤模式选择模型。提出了以下标准:(1)当最近的时间点具有大量观察时,仅使用更新的数据; (2)当最近的时间点具有较少数量的观察时,使用转移缩放或联合上下文估计基于两个时间点的上下文的差异和来自较旧的时间点的样本大小的差异。

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