The identification of choice models is crucial for understanding consumer behavior and informing marketing or operational strategies, policy design, and product development. The identification of parametric choice-based demand models is typically straightforward. However, nonparametric models, which are highly effective and flexible in explaining customer choice, may encounter the challenge of the dimensionality curse, hindering their identification. A prominent example of a nonparametric model is the ranking-based model, which mirrors the random utility maximization (RUM) class and is known to be nonidentifiable from the collection of choice probabilities alone. Our objective in this paper is to develop a new class of nonparametric models that is not subject to the problem of nonidentifiability. Our model assumes bounded rationality of consumers, which results in symmetric demand cannibalization and intriguingly enables full identification. Additionally, our choice model demonstrates competitive prediction accuracy compared to the state-of-the-art benchmarks in a real-world case study, despite incorporating the assumption of bounded rationality which could, in theory, limit the representation power of our model. In addition, we tackle the important problem of finding the optimal assortment under the proposed choice model. We demonstrate the NP-hardness of this problem and provide a fully polynomial-time approximation scheme through dynamic programming. Additionally, we propose an efficient estimation framework using a combination of column generation and expectation-maximization algorithms, which proves to be more tractable than the estimation algorithm of the aforementioned ranking-based model.
翻译:选择模型的确定对于了解消费者行为和了解营销或业务战略、政策设计和产品开发至关重要。确定基于选择的参数需求模型通常是直截了当的。然而,非参数模型在解释客户选择时非常有效和灵活,可能会遇到维度诅咒的挑战,阻碍其识别。非参数模型的一个突出例子是排名模型,该模型反映了随机效用最大化(RUM)类别,并且仅从收集选择概率即可得知无法识别。我们本文件的目标是开发一个新的非参数型非参数型模型,不受不可识别性问题的影响。我们的模型假定消费者具有界限性的合理性,其结果是对等性需求被拆解,并令人好奇地能够充分识别。此外,我们的选择模型显示了与现实世界案例研究中最先进的基准相比的竞争性预测准确性,尽管在理论上,这可能会限制我们模型的代表性。此外,我们用一个重要的非参数模型问题来寻找最优化的、最优化的生成率排序框架。我们用这个模型来展示一个最优化的动态的模型。我们用一个最精确的模型来展示一个最精确的模型,在现实的层次上展示一个最精确的模型。