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Role of Computational Trust Models in Service Science


Young Ae Kim


KAIST Business School

Muhammad A. Ahmad


University of Minnesota - Twin Cities

Jaideep Srivastava


affiliation not provided to SSRN

Soung Hie Kim


Korea Advanced Institute of Science and Technology (KAIST) - Management Engineering

January 5, 2009

Journal of Management Information Systems, Forthcoming
KAIST Business School Working Paper No. 2009-002

Abstract:     
With the proliferation of online communities and Person-to-Person (P2P) online service markets, the deployment of knowledge, skills, experiences and user generated contents services are generally facilitated among service users and service providers. In online service markets where well-established intermediaries are often eliminated, the success of social interactions for service exchange among completely unknown users depends on 'trust' of a service user for a service provider. Therefore, providing a satisfactory trust model to evaluate the quality of services and to recommend personalized trustworthy service providers is vital for a successful online community and P2P online service market. However, finding trustworthy service providers for each individual user is challenging because of the lack of direct experiences and the subjective property of trust. In order to resolve the challenges, current research on trust prediction strongly relies on a web of trust, which is directly collected from users. However, the web of trust is not always available in online communities and, even when it is available, it is often too sparse to accurately predict the trust value between two unacquainted people. In this paper, we propose a computational trust model to predict trust connectivity based on service providers' expertise (local trust from direct experiences and a reputation) and service users' affinity for certain contexts (topics). The approach used item rating data that is available and much more dense than direct trust data. In experiments with a real-world dataset, we show that our model can predict trust connectivity with a high degree of accuracy. The proposed computational trust framework can be applied to any type of online communities or P2P online service markets with a rating system.

Number of Pages in PDF File: 36

Keywords: Online community, Person-to-Person online service markets, Trust, Reputation, Dempster-Shafer theory of belief functions

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Date posted: January 24, 2009  

Suggested Citation

Kim, Young Ae, Ahmad, Muhammad A., Srivastava, Jaideep and Kim, Soung Hie, Role of Computational Trust Models in Service Science (January 5, 2009). Journal of Management Information Systems, Forthcoming; KAIST Business School Working Paper No. 2009-002. Available at SSRN: http://ssrn.com/abstract=1323170 or http://dx.doi.org/10.2139/ssrn.1323170

Contact Information

Young Ae Kim (Contact Author)
KAIST Business School ( email )
85 Hoegiro Dongdaemun-Gu
Seoul 130-722
Korea, Republic of
HOME PAGE: http://business.kaist.ac.kr/
Muhammad A. Ahmad
University of Minnesota - Twin Cities ( email )
420 Delaware St. SE
Minneapolis, MN 55455
United States
Jaideep Srivastava
affiliation not provided to SSRN ( email )
Soung Hie Kim
Korea Advanced Institute of Science and Technology (KAIST) - Management Engineering ( email )
207-43 Cheongryangri-Dong
Dongdaemun-Ku
Seoul 130-722
Korea
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