Counterfeit product detection: Bridging the gap between design science and behavioral science in information systems research

作者:

Highlights:

• This paper presents a design artifact, called OnCDS, to assist consumers in detecting counterfeit products.

• We unite design and behavioral science via a design artifact and behavioral model using kernel theory and valence framework.

• OnCDS uses web scraping, NLP, and topic analysis to calculate the likelihood of a product being counterfeit.

• We evaluate its utility in terms of accuracy of counterfeit scores and their effect on a consumer’s attitude.

• Results show that OnCDS’ efficacy is validated and that the counterfeit score affects perceived risk, trust, and attitude.

摘要

In IS research, there is a dichotomy where design science and behavioral science are distinct research paradigms. IS researchers should view these paradigms as complementary with research drawing upon the strengths of both, yet few have done so. This work demonstrates how design science and behavioral science can be united in IS research via counterfeit product detection based on product reviews in an online marketplace. Product authenticity in the online marketplace is a common issue plaguing consumers. The decision process involved in determining product authenticity is lengthy and complex. Despite the pressing need for an automatic authenticity rating system for online shopping, little research has been done to develop such a system and assess its effects on consumer purchase behavior. To respond to this need, our study develops a design artifact, called OnCDS, to automatically calculate the likelihood that a product is counterfeit based on online customer reviews. Drawing upon lexicon-based sentiment analysis approaches and TF-IDF as kernel theories for our design, we employ web scraping, natural language processing, and topic analysis methods to process customer reviews and calculate the counterfeit score of a product. In assessing the effects of OnCDS on consumer behavior, we develop a research model that encompasses trust and perceived risk based on the valence framework. Results show that our design artifact's efficacy is validated and that the counterfeit score affects perceived risk and trust, which in turn influences attitude toward purchase.

论文关键词:Counterfeit,Design science,Behavioral science,Trust,Risk,Attitude

论文评审过程:Received 16 January 2017, Revised 18 September 2017, Accepted 19 September 2017, Available online 21 September 2017, Version of Record 14 November 2017.

论文官网地址:https://doi.org/10.1016/j.dss.2017.09.005