Product selection problem: improve market share by learning consumer behavior

Silei Xu, John C.S. Lui
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引用次数: 8

Abstract

It is often crucial for manufacturers to decide what products to produce so that they can increase their market share in an increasingly fierce market. To decide which products to produce, manufacturers need to analyze the consumers' requirements and how consumers make their purchase decisions so that the new products will be competitive in the market. In this paper, we first present a general distance-based product adoption model to capture consumers' purchase behavior. Using this model, various distance metrics can be used to describe different real life purchase behavior. We then provide a learning algorithm to decide which set of distance metrics one should use when we are given some historical purchase data. Based on the product adoption model, we formalize the k most marketable products (or k-MMP) selection problem and formally prove that the problem is NP-hard. To tackle this problem, we propose an efficient greedy-based approximation algorithm with a provable solution guarantee. Using submodularity analysis, we prove that our approximation algorithm can achieve at least 63% of the optimal solution. We apply our algorithm on both synthetic datasets and real-world datasets (TripAdvisor.com), and show that our algorithm can easily achieve five or more orders of speedup over the exhaustive search and achieve about 96% of the optimal solution on average. Our experiments also show the significant impact of different distance metrics on the results, and how proper distance metrics can improve the accuracy of product selection.
产品选择问题:通过学习消费者行为来提高市场占有率
为了在日益激烈的市场中增加市场份额,制造商决定生产什么产品往往是至关重要的。为了决定生产哪些产品,制造商需要分析消费者的需求以及消费者如何做出购买决定,以便新产品在市场上具有竞争力。在本文中,我们首先提出了一个通用的基于距离的产品采用模型来捕捉消费者的购买行为。使用该模型,可以使用各种距离度量来描述现实生活中不同的购买行为。然后,我们提供了一个学习算法来决定当我们得到一些历史购买数据时应该使用哪一组距离度量。基于产品采用模型,我们形式化了k个最畅销产品(或k- mmp)选择问题,并形式化地证明了该问题是np困难的。为了解决这个问题,我们提出了一种有效的基于贪婪的近似算法,该算法具有可证明的解保证。利用子模块分析,我们证明了我们的近似算法至少可以达到63%的最优解。我们将我们的算法应用于合成数据集和真实数据集(TripAdvisor.com),并表明我们的算法可以很容易地在穷举搜索中实现5个或更多的加速,平均达到96%的最优解。我们的实验还显示了不同距离度量对结果的显著影响,以及适当的距离度量如何提高产品选择的准确性。
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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