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Group Recommendation Systems Based On Pairwise Preference Data And User Contribution
Users’ contributions play a critical role in shaping the trajectory of group decision- making processes, exerting a significant influence on the overall dynamics and out- comes of collaborative efforts. Actively engaging in discussions and sharing their ideas, viewpoints, and preferences, users cont...
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Format: | Dissertation |
Language: | English |
Online Access: | Request full text |
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Summary: | Users’ contributions play a critical role in shaping the trajectory of group decision-
making processes, exerting a significant influence on the overall dynamics and out-
comes of collaborative efforts. Actively engaging in discussions and sharing their
ideas, viewpoints, and preferences, users contribute diverse perspectives that enrich
the collective deliberation and ultimately enhance the effectiveness of decision-making
processes. Recognizing the profound impact of individual contributions, this paper
introduces a pioneering approach for group recommendation systems grounded in
cooperative game theory. Specifically, the proposed methodologies harness the prin-
ciples of Wonderful Life Utility (WLU) and Shapley Value (ShV) to quantitatively eval-
uate the input of each group member in the decision-making process. By systemat-
ically assessing the contributions of users within the group, these techniques aim to
foster a more equitable and inclusive decision-making environment, where individual
preferences are duly acknowledged and integrated into the collective decision-making
process. This innovative approach represents a significant advancement in the field of
GRS, offering a nuanced understanding of the role of user contributions and provid-
ing a robust framework for facilitating collaborative decision-making in diverse group
settings. This method is designed with the primary objective of improving the ac-
curacy and fairness of group recommendations within collaborative settings, with a
particular emphasis on the significance of individual preferences. To evaluate its ef-
fectiveness across a range of group configurations, two distinct datasets—the food
dataset and the car dataset—were employed for validation purposes. Random and
GcPp clustered groups were formed for each dataset, allowing for a comprehensive
assessment of the proposed techniques under different scenarios. The experimental
results obtained from these evaluations demonstrate the robustness and efficacy of the
system, as it consistently delivers highly accurate and equitable group recommenda-
tions across diverse group configurations. These findings highlight the versatility and
adaptability of the proposed approach, indicating its potential applicability in a wide
array of collaborative contexts. Overall, this study contributes a novel perspective to
the field of Group Recommendation Systems (GRS), shedding light on the critical role
played by personal preferences in driving meaningf |
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