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首页> 外文期刊>Journal of the American statistical association >Variational Inference for Large-Scale Models of Discrete Choice
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Variational Inference for Large-Scale Models of Discrete Choice

机译:离散选择的大规模模型的变分推理

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摘要

Discrete choice models are commonly used by applied statisticians in numerous fields, such as marketing, economics, finance, and operations research. When agents in discrete choice models are assumed to have differing preferences, exact inference is often intractable. Markov chain Monte Carlo techniques make approximate inference possible, but the computational cost is prohibitive on the large datasets now becoming routinely available. Variational methods provide a deterministic alternative for approximation of the posterior distribution. We derive variational procedures for empirical Bayes and fully Bayesian inference in the mixed multinomial logit model of discrete choice. The algorithms require only that we solve a sequence of unconstrained optimization problems, which are shown to be convex. One version of the procedures relies on a new approximation to the variational objective function, based on the multivariate delta method. Extensive simulations, along with an analysis of real-world data, demonstrate that variational methods achieve accuracy competitive with Markov chain Monte Carlo at a small fraction of the computational cost. Thus, variational methods permit inference on datasets that otherwise cannot be analyzed without possibly adverse simplifications of the underlying discrete choice model. Appendices C through F are available as online supplemental materials.
机译:应用统计学家通常在许多领域中使用离散选择模型,例如市场营销,经济学,金融和运营研究。当假设离散选择模型中的主体具有不同的偏好时,准确的推断通常很棘手。马尔可夫链蒙特卡洛技术使近似推断成为可能,但计算成本对于现在可以常规使用的大型数据集来说是过高的。变分方法为近似后验分布提供了确定性替代方法。我们导出了离散选择的混合多项式logit模型中经验贝叶斯的变分程序和完全贝叶斯推断。该算法仅要求我们解决一系列无约束的优化问题,这些问题被证明是凸的。该过程的一种版本依赖于基于多变量增量法的变分目标函数的新近似值。大量的模拟以及对现实世界数据的分析表明,变分方法可以在很小的计算成本上达到与马尔可夫链蒙特卡洛相当的精度。因此,变分方法允许推断数据集,否则可能无法对基础的离散选择模型进行不利的简化而无法进行分析。附录C至F可作为在线补充材料获得。

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