Group Decision Method Without Consensus Threshold Based on Personalized Semantic Continuous Learning

Xi Chen *

College of Science, Dalian Maritime University, No. 1 Linghai Road, Dalian, 116026, Liaoning, People's Republic of China.

*Author to whom correspondence should be addressed.


Abstract

The primary concern in group decision-making lies in the objective reasonable creation of a decision outcome that is agreed upon by all decision-makers. To achieve this purpose, a dynamic adjustment of preferences is necessary, in which personalized semantic continuous learning of linguistic information initially provided by decision-makers is a key process. This study explores a way for guiding decision-makers to continuously learn from individual linguistic preferences and establish an adaptive consensus-reaching method. The continuous personalized semantic learning model is firstly designed to simulate individual preferences in a dynamic decision-making environment, addressing the issue of quantifying semantics for decision-makers. Secondly, an adaptive weight allocation method is proposed to capture the changing process of a decision maker's weight while measuring its importance based on the current decision environment. Furthermore, we establish an adaptive consensus-reaching model without subjective parameters facilitates objective evaluation of decision-making. Finally, some experiments are conducted to examine the effectiveness of the proposed model.

 

Keywords: Group decision-making, consensus reaching process, personalized semantics, continuous learning, dynamic weights


How to Cite

Chen, Xi. 2024. “Group Decision Method Without Consensus Threshold Based on Personalized Semantic Continuous Learning”. Journal of Advances in Mathematics and Computer Science 39 (4):62-80. https://doi.org/10.9734/jamcs/2024/v39i41882.

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