6533b861fe1ef96bd12c5a1a

RESEARCH PRODUCT

Mining customer requirements from online reviews: A product improvement perspective

Yanquan ZhouZhenping ZhangJiayin QiSeongmin Jeon

subject

Big data commerceEngineeringINF/01 - Computer ScienceInformation Systems and ManagementBig data02 engineering and technologyOnline reviewManagement Information SystemsKANO0502 economics and business0202 electrical engineering electronic engineering information engineeringProduct (category theory)Robustness (economics)Product designbusiness.industry05 social sciencesSettore IUS/10 - Diritto AmministrativoData scienceConjoint analysisProduct designConjoint analysiKano modelHelpfulnessNew product development050211 marketing020201 artificial intelligence & image processingbusinessInformation Systems

description

We propose a filtering model to predict helpfulness of reviews for product design.We provide a way to use the KANO model based on online reviews.We explore how to obtain insights from Big Data through knowledge-based view. Big data commerce has become an e-commerce trend. Learning how to extract valuable and real time insights from big data to drive smarter and more profitable business decisions is a main task of big data commerce. Using online reviews as an example, manufacturers have come to value how to select helpful online reviews and what can be learned from online reviews for new product development. In this research, we first proposed an automatic filtering model to predict the helpfulness of online reviews from the perspective of the product designer. The KANO method, which is based on the classical conjoint analysis model, is then innovatively applied to analyze online reviews to develop appropriate product improvement strategies. Moreover, an empirical case study using the new method is conducted with the data we acquired from JD.com, one of the largest electronic marketplaces in China. The case study indicates the effectiveness and robustness of the proposed approach. Our research suggests that the combination of big data and classical management models can bring success for big data commerce.

10.1016/j.im.2016.06.002http://hdl.handle.net/10447/403686