TY - JOUR
T1 - Stages of User Engagement on Social Commerce Platforms
T2 - Analysis with the Navigational Clickstream Data
AU - Kumar, Ashish
AU - Salo, Jari
AU - Li, Hongxiu
PY - 2019/4/3
Y1 - 2019/4/3
N2 - Social commerce platforms have gained prominence in e-commerce, as social media has become an integral part of users’ online activities. Therefore, firms have been either developing or utilizing social commerce platforms to increase user engagement by adding social shopping facility onto their electronic commerce platforms. However, managing user engagement and user interaction becomes complex when e-commerce platforms are transformed into social commerce platforms. In this study, we operationalize four distinct stages of the social commerce platform, namely, social identification, social interaction, social shopping, and transaction based on salience theory. Using clickstream data, we empirically measure user engagement in these four states by modeling users’ incidence and time spent. Drawing from the PageRank algorithm, we capture the importance of ranking and distance on user engagement. The model also accounts for the effects of situational variables such as weekend; holiday; time of day; and user characteristics, such as gender and social media setting. Our results suggest that ranking and distance have significant effects on users’ incidence as well as time spent on social commerce platforms. The insights from this study can be helpful in designing the social commerce platform effectively using only the customers’ path navigational clickstream data from the parent social commerce platform.
AB - Social commerce platforms have gained prominence in e-commerce, as social media has become an integral part of users’ online activities. Therefore, firms have been either developing or utilizing social commerce platforms to increase user engagement by adding social shopping facility onto their electronic commerce platforms. However, managing user engagement and user interaction becomes complex when e-commerce platforms are transformed into social commerce platforms. In this study, we operationalize four distinct stages of the social commerce platform, namely, social identification, social interaction, social shopping, and transaction based on salience theory. Using clickstream data, we empirically measure user engagement in these four states by modeling users’ incidence and time spent. Drawing from the PageRank algorithm, we capture the importance of ranking and distance on user engagement. The model also accounts for the effects of situational variables such as weekend; holiday; time of day; and user characteristics, such as gender and social media setting. Our results suggest that ranking and distance have significant effects on users’ incidence as well as time spent on social commerce platforms. The insights from this study can be helpful in designing the social commerce platform effectively using only the customers’ path navigational clickstream data from the parent social commerce platform.
KW - Clickstream data
KW - Dijkstra’s shortest path algorithm
KW - hierarchical Bayesian method
KW - multivariate type-2 Tobit
KW - online communities
KW - online platforms
KW - online shopping
KW - PageRank algorithm
KW - social commerce platforms
UR - http://www.scopus.com/inward/record.url?scp=85063574164&partnerID=8YFLogxK
U2 - 10.1080/10864415.2018.1564550
DO - 10.1080/10864415.2018.1564550
M3 - Article
AN - SCOPUS:85063574164
VL - 23
SP - 179
EP - 211
JO - International Journal of Electronic Commerce
JF - International Journal of Electronic Commerce
SN - 1086-4415
IS - 2
ER -