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An artificial neural network based approach to investigate travellers' decision rules

机译:基于人工神经网络的旅行者决策规则调查方法

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This study develops a novel Artificial Neural Network (ANN) based approach to investigate decision rule heterogeneity amongst travellers. This complements earlier work on decision rule heterogeneity based on Latent Class discrete choice models. We train our ANN to recognise the choice patterns of four distinct decision rules: Random Utility Maximisation, Random Regret Minimisation, Lexicographic, and Random. Next, we apply our trained ANN to classify the respondents from a recent Value-of-Time Stated Choice experiment in terms of their most likely employed decision rule. We cross-validate our findings by comparing our results with those from: (1) single class discrete choice models estimated on subsets of the data, and (2) latent class discrete choice models. The cross-validations provide strong support for the notion that ANNs can be used to identify underlying decision rules in choice data. As such, we believe that ANNs provide a valuable addition to the toolbox of analysts who wish to investigate decision rule heterogeneity. The substantive contribution of this study is that we provide strong empirical evidence for the presence of decision rule heterogeneity amongst travellers.
机译:这项研究开发了一种新颖的基于人工神经网络(ANN)的方法,以研究旅行者之间决策规则的异质性。这是对基于潜在类离散选择模型的决策规则异质性早期工作的补充。我们训练我们的ANN来识别四个不同决策规则的选择模式:随机效用最大化,随机后悔最小化,词典编排和随机。接下来,我们使用训练有素的人工神经网络,根据最可能采用的决策规则,对来自最近的时间价值状态选择实验的受访者进行分类。我们通过将我们的结果与来自以下方面的结果进行比较来交叉验证我们的发现:(1)基于数据子集估计的单类离散选择模型,以及(2)潜在类离散选择模型。交叉验证为ANN可用于识别选择数据中的基础决策规则的概念提供了有力的支持。因此,我们认为人工神经网络为希望调查决策规则异质性的分析师工具箱提供了宝贵的补充。这项研究的实质性贡献是,我们为旅行者之间存在决策规则异质性提供了有力的经验证据。

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