We consider a context-based dynamic pricing problem of online products, which have low sales. Sales data from Alibaba, a major global online retailer, illustrate the prevalence of low-sale products. For these products, existing single-product dynamic pricing algorithms do not work well due to insufficient data samples. To address this challenge, we propose pricing policies that concurrently perform clustering over product demand and set individual pricing decisions on the fly. By clustering data and identifying products that have similar demand patterns, we utilize sales data from products within the same cluster to improve demand estimation for better pricing decisions. We evaluate the algorithms using regret, and the result shows that when product demand functions come from multiple clusters, our algorithms significantly outperform traditional single-product pricing policies. Numerical experiments using a real dataset from Alibaba demonstrate that the proposed policies, compared with several benchmark policies, increase the revenue. The results show that online clustering is an effective approach to tackling dynamic pricing problems associated with low-sale products.
翻译:我们考虑的是基于环境的动态在线产品定价问题,这些产品销售量低。 Alibaba是全球主要的在线零售商,其销售数据说明了低销售产品的普及程度。对于这些产品,现有的单产品动态定价算法由于数据样本不足而不能很好地发挥作用。为了应对这一挑战,我们提出了同时对产品需求进行分组并针对飞蝇制定个人定价决定的定价政策。我们通过对数据和具有类似需求模式的产品进行分组和识别,利用同一组内产品的销售数据来改进需求估计,以便做出更好的定价决定。我们利用遗憾来评估各种算法,结果显示,当产品需求功能来自多个组时,我们的算法大大超过传统的单产品定价政策。使用来自Alibaba的真实数据集进行的数字实验表明,拟议的政策与若干基准政策相比,增加了收入。结果显示,在线集群是解决与低销售产品相关的动态定价问题的有效办法。