TY - JOUR
T1 - ARM
T2 - Toward Adaptive and Robust Model for Reputation Aggregation
AU - Zhou, Xin
AU - Murakami, Yohei
AU - Ishida, Toru
AU - Liu, Xuanzhe
AU - Huang, Gang
N1 - Funding Information:
Manuscript received November 21, 2018; accepted February 19, 2019. Date of publication March 21, 2019; date of current version January 9, 2020. This paper was recommended for publication by Associate Editor Y. Lu and Editor L. Shi upon evaluation of the reviewers’ comments. This work was supported in part by the National Key Research and Development Program under Grant 2018YFB1004403, in part by the National Natural Science Foundation of China under Grant 61725201, and in part by the Grant-in-Aid for Scientific Research (A) (17H00759, 2017–2020) through the Japan Society for the Promotion of Science. (Corresponding author: Gang Huang.) X. Zhou is with the School of Electronics Engineering and Computer Science, Peking University, Beijing 100871, China, and also with the Peking University Information Technology Institute, Tianjin 300452, China (e-mail: xinzhou@pku.edu.cn).
Publisher Copyright:
© 2004-2012 IEEE.
PY - 2020/1
Y1 - 2020/1
N2 - In dynamic, open, and service-oriented computing environments, e.g., e-commerce and crowdsourcing, service consumers must choose one of the services or items to complete their tasks. Due to the scale and dynamic characteristics of these environments, service consumers may have little or no experience with the available services. To this end, reputation systems are proposed and have played a crucial role in the success of online service-oriented transactions. In this paper, we study the current reputation systems used in commercial environments. In these rating-based reputation systems, we found they are not only resilient to the changes (time lag) but also vulnerable to unfair ratings. To address the problems in parallel, we propose an adaptive reputation model (ARM). ARM can dynamically adjust its model parameters to adapt the latest changes in a service. To tackle time lag, the proposed model generalizes the fixed sliding window, used in current commercial platforms, into a dynamic sliding window mechanism. Thus, the model can completely mitigate the influence of obsolete ratings. To detect unfair ratings, our model implements a statistical strategy based on hypothesis testing after transforming the ratings in the linear window into residuals. Experiments not only validate the effectiveness of the proposed model but also show that it outperforms the existing reputation system by 45% on average based on five test cases. The results also show that the proposed model can asymptotically converge to the underlying reputation value as ratings begin to accumulate. Note to Practitioners - The reputation models adopted by current commercial platforms, such as Amazon, eBay, and Taobao, not only suffer heavily from unfair rating but also resilient to the changes in services. To address the problems simultaneously, we design and implement a hybrid model that continuously monitors received ratings and aggregates the reputation value in a self-adaptive way. Our model first fits received fair ratings using the Bayesian linear regression approach and captures the distribution of fair ratings; it then filters out unfair ratings leveraging hypothesis testing. Finally, to sensitively respond the dynamic service changes, the dynamic sliding window algorithm in our model shifts the rating collection window into a new one and discards outdated ratings, reputation value is aggregated in the new window to mitigate the influence of obsolete ratings. Extensive experiments are conducted on widely used scenarios to demonstrate the efficiency and the effectiveness of our proposed model.
AB - In dynamic, open, and service-oriented computing environments, e.g., e-commerce and crowdsourcing, service consumers must choose one of the services or items to complete their tasks. Due to the scale and dynamic characteristics of these environments, service consumers may have little or no experience with the available services. To this end, reputation systems are proposed and have played a crucial role in the success of online service-oriented transactions. In this paper, we study the current reputation systems used in commercial environments. In these rating-based reputation systems, we found they are not only resilient to the changes (time lag) but also vulnerable to unfair ratings. To address the problems in parallel, we propose an adaptive reputation model (ARM). ARM can dynamically adjust its model parameters to adapt the latest changes in a service. To tackle time lag, the proposed model generalizes the fixed sliding window, used in current commercial platforms, into a dynamic sliding window mechanism. Thus, the model can completely mitigate the influence of obsolete ratings. To detect unfair ratings, our model implements a statistical strategy based on hypothesis testing after transforming the ratings in the linear window into residuals. Experiments not only validate the effectiveness of the proposed model but also show that it outperforms the existing reputation system by 45% on average based on five test cases. The results also show that the proposed model can asymptotically converge to the underlying reputation value as ratings begin to accumulate. Note to Practitioners - The reputation models adopted by current commercial platforms, such as Amazon, eBay, and Taobao, not only suffer heavily from unfair rating but also resilient to the changes in services. To address the problems simultaneously, we design and implement a hybrid model that continuously monitors received ratings and aggregates the reputation value in a self-adaptive way. Our model first fits received fair ratings using the Bayesian linear regression approach and captures the distribution of fair ratings; it then filters out unfair ratings leveraging hypothesis testing. Finally, to sensitively respond the dynamic service changes, the dynamic sliding window algorithm in our model shifts the rating collection window into a new one and discards outdated ratings, reputation value is aggregated in the new window to mitigate the influence of obsolete ratings. Extensive experiments are conducted on widely used scenarios to demonstrate the efficiency and the effectiveness of our proposed model.
KW - Adaptive reputation model (ARM)
KW - Bayesian linear regression
KW - dynamic sliding window
KW - time lag
KW - unfair rating
UR - http://www.scopus.com/inward/record.url?scp=85078297356&partnerID=8YFLogxK
UR - http://www.scopus.com/inward/citedby.url?scp=85078297356&partnerID=8YFLogxK
U2 - 10.1109/TASE.2019.2902407
DO - 10.1109/TASE.2019.2902407
M3 - Article
AN - SCOPUS:85078297356
SN - 1545-5955
VL - 17
SP - 88
EP - 99
JO - IEEE Transactions on Automation Science and Engineering
JF - IEEE Transactions on Automation Science and Engineering
IS - 1
M1 - 8672470
ER -