A Neural Network Based Choice Model for Assortment Optimization

ArXiv Pub Date : 2023-08-10 DOI:10.48550/arXiv.2308.05617
Hanrui Wang, Zhongze Cai, Xiaocheng Li, K. Talluri
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引用次数: 1

Abstract

Discrete-choice models are used in economics, marketing and revenue management to predict customer purchase probabilities, say as a function of prices and other features of the offered assortment. While they have been shown to be expressive, capturing customer heterogeneity and behaviour, they are also hard to estimate, often based on many unobservables like utilities; and moreover, they still fail to capture many salient features of customer behaviour. A natural question then, given their success in other contexts, is if neural networks can eliminate the necessity of carefully building a context-dependent customer behaviour model and hand-coding and tuning the estimation. It is unclear however how one would incorporate assortment effects into such a neural network, and also how one would optimize the assortment with such a black-box generative model of choice probabilities. In this paper we investigate first whether a single neural network architecture can predict purchase probabilities for datasets from various contexts and generated under various models and assumptions. Next, we develop an assortment optimization formulation that is solvable by off-the-shelf integer programming solvers. We compare against a variety of benchmark discrete-choice models on simulated as well as real-world datasets, developing training tricks along the way to make the neural network prediction and subsequent optimization robust and comparable in performance to the alternates.
基于神经网络的分类优化选择模型
离散选择模型被用于经济学、市场营销和收益管理,以预测消费者购买概率,比如作为价格和所提供商品组合的其他特征的函数。虽然它们已被证明具有表现力,捕捉了客户的异质性和行为,但它们也很难估计,通常基于许多不可观察的因素,如公用事业;此外,它们仍然未能捕捉到客户行为的许多显著特征。考虑到它们在其他环境中的成功,一个自然的问题是,神经网络是否可以消除仔细构建依赖于环境的客户行为模型以及手工编码和调整估计的必要性。然而,目前尚不清楚如何将分类效应纳入这样的神经网络,以及如何使用这种选择概率的黑盒生成模型来优化分类。在本文中,我们首先研究了单个神经网络架构是否可以预测来自不同背景和在不同模型和假设下生成的数据集的购买概率。接下来,我们开发了一个可由现成的整数规划求解器求解的分类优化公式。我们比较了模拟和现实世界数据集上的各种基准离散选择模型,开发了训练技巧,使神经网络预测和随后的优化在性能上具有鲁棒性和可比性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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