Exploring the Effects of Consumers Trust: A Predictive Model for Satisfying Buyers Expectations Based on Sellers Behavior in the Marketplace
Loading...
Date
2019
Journal Title
Journal ISSN
Volume Title
Publisher
Abstract
Inrecent years, consumer-to-consumer (C2C) marketplaces have become very popular among
Internet users. However, compared to the traditional business-to-consumer (B2C) stores, most modern C2C
marketplaces are reported to be associated with stronger negative sentiments among consumers. These
negative sentiments arise from the inability of sellers to meet certain buyers expectations and are linked
to the low trust relationship among sellers and buyers in C2C marketplaces. The growth of these negative
emotions might jeopardize buyers decisions to opt for C2C marketplaces in their future purchase intentions.
In the present study, we extendthede nition oftrust as an emotiontocoverthedigital worldanddemonstrate
the trust model currently used by most online stores. Based on the buyers behavior in the C2C marketplace,
we propose a conceptual framework to predict trust between the buyer and the seller. Given that the C2C
marketplaces are rich sources of data for trust mining and sentiment analysis, we perform text mining on
Airbnb to predict the trust level in host descriptions of offered facilities. The data are acquired from the US
city of Ashville, Alabama, and Manchester in the U.K. The results of the analysis demonstrate that the guest
negative feedbacks in reviews are high when the description of the hosts property has the emotion of joy
only. By contrast, the guest negative sentiments in reviews are at a minimum when the hosts sentiment has
mixed emotions (e.g., joy and fear).