You Can Lead a Horse to Water: Spatial Learning and Path Dependence in Consumer Search

C. Hodgson, Gregory Lewis
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引用次数: 17

Abstract

We develop a model of search by imperfectly informed consumers with unit demand. The innovation is that consumers learn spatially: sampling the payoff to one product causes them to update their payoffs about all products that are nearby in some attribute space. Search is costly, and so consumers face a trade-off between "exploring" far apart regions of the attribute space and "exploiting'' the areas they already know they like. Learning gives rise to path dependence, as each new search decision depends on past experiences through the updating process. We present evidence of these phenomena in data on online camera purchases, showing that the search paths and eventual purchase decisions depend substantially on whether the past items searched were surprisingly good or bad. We argue that search intermediaries can affect purchase decisions not only by highly ranking products that they would like purchased, but also by highlighting bad products in regions of the attribute space that they would like to push the consumer away from.
你可以把马牵到水边:消费者搜索中的空间学习和路径依赖
我们开发了一个不完全知情的消费者单位需求搜索模型。创新之处在于消费者在空间上学习:对一种产品的回报进行抽样,使他们更新对某个属性空间中附近所有产品的回报。搜索是昂贵的,因此消费者面临着“探索”属性空间的遥远区域和“开发”他们已经知道自己喜欢的区域之间的权衡。学习产生了路径依赖,因为每个新的搜索决策都依赖于通过更新过程的过去经验。我们在网上相机购买的数据中提供了这些现象的证据,表明搜索路径和最终的购买决定在很大程度上取决于过去搜索的物品是出奇的好还是坏。我们认为,搜索中介不仅可以通过对他们想要购买的产品进行高排名来影响购买决策,还可以通过在属性空间的区域中突出显示他们想要让消费者远离的不良产品来影响购买决策。
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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