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Recommending Products When Consumers Learn Their Preference Weights

机译:消费者了解偏好权重时推荐产品

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摘要

Consumers often learn the weights they ascribe to product attributes ("preference weights") as they search. For example, after test driving cars, a consumer might find that he or she undervalued trunk space and overvalued sunroofs. Preference-weight learning makes optimal search complex because each time a product is searched, updated preference weights affect the expected utility of all products and the value of subsequent optimal search. Product recommendations, which take preference-weight learning into account, help consumers search. We motivate a model in which consumers learn (update) their preference weights. When consumers learn preference weights, it may not be optimal to recommend the product with the highest option value, as in most search models, or the product most likely to be chosen, as in traditional recommendation systems. Recommendations are improved if consumers are encouraged to search products with diverse attribute levels, products that are undervalued, or products for which recommendation-system priors differ from consumers' priors. Synthetic data experiments demonstrate that proposed recommendation systems outperform benchmark recommendation systems, especially when consumers are novices and when recommendation systems have good priors. We demonstrate empirically that consumers learn preference weights during search, that recommendation systems can predict changes, and that a proposed recommendation system encourages learning.
机译:消费者在搜索时通常会了解到归因于产品属性的权重(“偏好权重”)。例如,在试驾汽车之后,消费者可能会发现他或她低估了行李箱空间并高估了天窗。偏好权重学习使最佳搜索变得很复杂,因为每次搜索产品时,更新的偏好权重都会影响所有产品的预期效用和后续最佳搜索的价值。考虑到偏好权重学习的产品推荐可帮助消费者进行搜索。我们激励一个模型,让消费者学习(更新)他们的偏好权重。当消费者学习偏好权重时,像大多数搜索模型中那样推荐具有最高选项值的产品,或者像传统的推荐系统中那样,最有可能选择的产品并不是最佳选择。如果鼓励消费者搜索具有不同属性级别的产品,被低估的产品或推荐系统先验条件与消费者先验条件不同的产品,则可以改善建议。综合数据实验表明,建议的推荐系统优于基准推荐系统,尤其是在消费者是新手并且推荐系统具有良好先验条件时。我们凭经验证明,消费者在搜索过程中会学习偏好权重,推荐系统可以预测变化,建议的推荐系统可以鼓励学习。

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