Modeling relationships between retail prices and consumer reviews: A machine discovery approach and comprehensive evaluations

作者:

Highlights:

• A novel data-driven Generate/Test Cycle was designed to automatically discover feasible models.

• A Monte Carlo simulation was performed to validate the designed approach.

• Models were built to describe relationships between retail prices and reviews for one product at the individual level.

• A guided map was offered by using the comprehensive evaluations of the candidate models.

摘要

Setting the retail price as a part of marketing would affect customers' cognition regarding products and affect their post-purchase behavior of review writing. To deeply understand the relationships between retail prices and reviews, this paper designs an intelligent data-driven Generate/Test Cycle using a machine learning technique to automatically discover the relationship model from a huge amount of data without a prior hypothesis. From a unique dataset, various free-form relationship models with their own structures and parameters have been discovered. By the comprehensive evaluations of candidate models, a guided map was offered to understand the relationship between dynamic retail prices and the volume/valence of reviews for different types of products. Experimental results show that 37.69% of products in our sample exhibit the following trend: When the price is increased to a certain level, the volume of reviews shifts from a decreasing trend to an increasing trend. Results also demonstrate that a linearly increasing relationship model between prices and the valence of reviews is more suitable for the low-involvement products than for the high-involvement products. In addition to the new findings, this research provides a powerful tool to assist domain experts in building relationship models for decision making in a highly efficient manner.

论文关键词:Consumer reviews,Retail price,Data-driven,Machine learning,Genetic programming,Product involvement

论文评审过程:Received 20 July 2020, Revised 22 February 2021, Accepted 22 February 2021, Available online 26 February 2021, Version of Record 12 April 2021.

论文官网地址:https://doi.org/10.1016/j.dss.2021.113536