基于约束推荐的社会意识诊断

Muesluem Atas, Ralph Samer, A. Felfernig, Thi Ngoc Trang Tran, Seda Polat Erdeniz, Martin Stettinger
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引用次数: 1

摘要

基于约束的群体推荐系统支持识别最符合所有群体成员个人偏好的项目。如果组成员的需求与底层约束集不一致,则需要支持组成员,以便找到合适的解决方案。在本文中,我们提出了一种基于不同聚合函数确定社会意识诊断的指导方法。我们利用在用户研究中收集的数据分析了不同聚合函数的预测质量。结果表明,与平均投票、最快乐和多数投票相比,以最小痛苦聚合函数为指导的诊断达到了更高的预测质量。此外,我们工作的另一个主要结果表明,基于聚合函数的诊断优于广度优先搜索和直接诊断等基本方法。
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Socially-Aware Diagnosis for Constraint-Based Recommendation
Constraint-based group recommender systems support the identification of items that best match the individual preferences of all group members. In cases where the requirements of the group members are inconsistent with the underlying constraint set, the group needs to be supported such that an appropriate solution can be found. In this paper, we present a guided approach that determines socially-aware diagnoses based on different aggregation functions. We analyzed the prediction quality of different aggregation functions by using data collected in a user study. The results indicate that those diagnoses guided by the Least Misery aggregation function achieve a higher prediction quality compared to the Average Voting, Most Pleasure, and Majority Voting. Moreover, another major outcome of our work reveals that diagnoses based on aggregation functions outperform basic approaches such as Breadth First Search and Direct Diagnosis.
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