差异化产品的嵌入与距离需求

Lorenzo Magnolfi, J. McClure, Alan T. Sorensen
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引用次数: 1

摘要

我们提出了一种简单的方法来估计市场对差异化产品的需求。该方法使用从在线调查中获得的三元组数据(形式为“产品A比产品C更接近B”)来增加价格和数量数据。使用机器学习算法,三胞胎数据用于估计嵌入-即。潜在积空间的低维表示。产品对之间的距离,从嵌入计算,纪律替代模式在一个简单的对数线性需求模型。该方法解决了产品空间需求模型的维数问题(交叉价格弹性参数太多难以估计)。我们通过估计即食谷物的需求来说明该方法的性能,并将我们的估计与从(BLP)的标准方法获得的估计进行比较。我们发现我们的弹性估计隐含可信的替代模式,并比较有利的BLP估计。除了我们目前的方法实现之外,嵌入数据可以合并到特征空间需求方法中,也可以合并到更复杂的产品空间模型中。全文可在https://papers.ssrn.com/ sol3/papers.cfm?abstract_id=4113399。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Embeddings and Distance-based Demand for Differentiated Products
We propose a simple method to estimate demand in markets for differentiated products. The method augments price and quantity data with triplets data (of the form "product A is closer to B than it is to C'') obtained from an online survey. Using a machine learning algorithm, the triplets data are used to estimate an embedding---i.e., a low-dimensional representation of the latent product space. Distances between pairs of products, computed from the embedding, discipline substitution patterns in a simple log-linear demand model. This approach solves the dimensionality problem of product-space demand models (too many cross-price elasticity parameters to estimate). We illustrate the performance of the method by estimating demand for ready-to-eat cereals and comparing our estimates to those obtained from the standard method of (BLP). We find that our elasticity estimates imply credible substitution patterns and compare favorably to the BLP estimates. Beyond our current implementation of the method, the embedding data can be incorporated in either characteristic-space demand approaches, or in more complex product-space models. Full paper available at https://papers.ssrn.com/ sol3/papers.cfm?abstract_id=4113399.
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