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Institution

Yunnan University of Finance and Economics

EducationKunming, China
About: Yunnan University of Finance and Economics is a education organization based out in Kunming, China. It is known for research contribution in the topics: Banach space & China. The organization has 1266 authors who have published 1404 publications receiving 14187 citations. The organization is also known as: Yunnan Institute of Finance and Trade & Yunnan Financial Cadres Training School.


Papers
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Journal ArticleDOI
TL;DR: An approach to multiple attribute decision making based on q‐ROFGWHM (q‐ROFWGHM) operator is proposed and a practical example for enterprise resource planning system selection is given to verify the developed approach and to demonstrate its practicality and effectiveness.
Abstract: The generalized Heronian mean and geometric Heronian mean operators provide two aggregation operators that consider the interdependent phenomena among the aggregated arguments. In this paper, the generalized Heronian mean operator and geometric Heronian mean operator under the q‐rung orthopair fuzzy sets is studied. First, the q‐rung orthopair fuzzy generalized Heronian mean (q‐ROFGHM) operator, q‐rung orthopair fuzzy geometric Heronian mean (q‐ROFGHM) operator, q‐rung orthopair fuzzy generalized weighted Heronian mean (q‐ROFGWHM) operator, and q‐rung orthopair fuzzy weighted geometric Heronian mean (q‐ROFWGHM) operator are proposed, and some of their desirable properties are investigated in detail. Furthermore, we extend these operators to q‐rung orthopair 2‐tuple linguistic sets (q‐RO2TLSs). Then, an approach to multiple attribute decision making based on q‐ROFGWHM (q‐ROFWGHM) operator is proposed. Finally, a practical example for enterprise resource planning system selection is given to verify the developed approach and to demonstrate its practicality and effectiveness.

333 citations

Journal ArticleDOI
TL;DR: A federated learning (FL) system leveraging a reputation mechanism to assist home appliance manufacturers to train a machine learning model based on customers’ data so that manufacturers can predict customers' requirements and consumption behaviors in the future.
Abstract: Home appliance manufacturers strive to obtain feedback from users to improve their products and services to build a smart home system. To help manufacturers develop a smart home system, we design a federated learning (FL) system leveraging a reputation mechanism to assist home appliance manufacturers to train a machine learning model based on customers’ data. Then, manufacturers can predict customers’ requirements and consumption behaviors in the future. The working flow of the system includes two stages: in the first stage, customers train the initial model provided by the manufacturer using both the mobile phone and the mobile-edge computing (MEC) server. Customers collect data from various home appliances using phones, and then they download and train the initial model with their local data. After deriving local models, customers sign on their models and send them to the blockchain. In case customers or manufacturers are malicious, we use the blockchain to replace the centralized aggregator in the traditional FL system. Since records on the blockchain are untampered, malicious customers or manufacturers’ activities are traceable. In the second stage, manufacturers select customers or organizations as miners for calculating the averaged model using received models from customers. By the end of the crowdsourcing task, one of the miners, who is selected as the temporary leader, uploads the model to the blockchain. To protect customers’ privacy and improve the test accuracy, we enforce differential privacy (DP) on the extracted features and propose a new normalization technique. We experimentally demonstrate that our normalization technique outperforms batch normalization when features are under DP protection. In addition, to attract more customers to participate in the crowdsourcing FL task, we design an incentive mechanism to award participants.

274 citations

Journal ArticleDOI
TL;DR: In this paper, a new classification "sophistication" is proposed as a means of distinguishing between products, which captures a range of factors including technology, ease of product fragmentation, natural resource availability, and marketing.

262 citations

Journal ArticleDOI
TL;DR: This paper enriches the theory and methodology of the selection problem of cloud computing vendoring and MAGDM analysis, and presents a new subjective/objective integrated MAGDM approach for solving decision problems.
Abstract: Propose the criteria of cost with technology, organization and environment.The approach takes both quantitative and qualitative attributes into account.Decision-making process considers both the weights of attributes and experts.Integrate objective and subjective method to weighting for attributes and experts. Cloud computing technology has become increasingly popular and can deliver a host of benefits. However, there are various kinds of cloud providers in the market and firms need scientific decision tools to judge which cloud computing vendor should be chosen. Studies in how a firm should select an appropriate cloud vendor have just started. However, existing studies are mainly from the technology and cost perspective, and neglect other influence factors, such as competitive pressure and managerial skills, etc. Hence, this paper proposes a multi-attribute group decision-making (MAGDM) based scientific decision tool to help firms to judge which cloud computing vendor is more suitable for their need by considering more comprehensive influencefactors. It is argued that objective attributes, i.e., cost, as well as subjective attributes, such as TOE factors (Technology, Organization, and Environment) should be considered for the decision making in cloud computing services, and presents a new subjective/objective integrated MAGDM approach for solving decision problems. The proposed approach integrates statistical variance (SV), improved techniques for order preference by similarity to an ideal solution (TOPSIS), simple additive weighting (SAW), and Delphi-AHP to determine the integrated weights of the attributes and decision-makers (DMs). The method considers both the objective weights of the attributes and DMs, as well as the subjective preferences of the DMs and their identity differences, thereby making the decision results more accurate and theoretically reasonable. A numerical example is given to illustrate the practicability and usefulness of the approach and its suitability as a decision-making tool for a firm using of cloud computing services. This paper enriches the theory and methodology of the selection problem of cloud computing vendoring and MAGDM analysis.

257 citations

Journal ArticleDOI
TL;DR: Ten similarity measures between Pythagorean fuzzy sets (PFSs) based on the cosine function are presented by considering the degree of membership, degree of nonmembership and degree of hesitation in PFSs and applied to pattern recognition and medical diagnosis.
Abstract: In this paper, we presented 10 similarity measures between Pythagorean fuzzy sets (PFSs) based on the cosine function by considering the degree of membership, degree of nonmembership and degree of hesitation in PFSs. Then, we applied these similarity measures and weighted similarity measures between PFSs to pattern recognition and medical diagnosis. Finally, two illustrative examples are given to demonstrate the efficiency of the similarity measures for pattern recognition and medical diagnosis.

234 citations


Authors

Showing all 1276 results

NameH-indexPapersCitations
Xiaodong Liu6047414980
Xixi Lu532238397
Patrick Giraudoux492427651
Lixing Zhu423227760
Yu Wei391054445
Fahui Wang381155664
Wei Zhou351914238
George J. Jiang291245022
Chengqi Wang27434107
Guanghua Wan261372851
Xiaolu Zhou25772301
Lei Shi251632369
Shih-sen Chang251112306
Jun-Wei Xu23551270
Jie Li22901424
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Performance
Metrics
No. of papers from the Institution in previous years
YearPapers
20234
202217
2021210
2020183
2019152
2018105