Quantifying consensus of rankings based on q-support patterns
May 30, 2019 Β· Declared Dead Β· π Information Sciences
"No code URL or promise found in abstract"
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Authors
Zhengui Xue, Zhiwei Lin, Hui Wang, Sally McClean
arXiv ID
1905.12966
Category
cs.AI: Artificial Intelligence
Citations
6
Venue
Information Sciences
Last Checked
4 months ago
Abstract
Rankings, representing preferences over a set of candidates, are widely used in many information systems, e.g., group decision making and information retrieval. It is of great importance to evaluate the consensus of the obtained rankings from multiple agents. An overall measure of the consensus degree provides an insight into the ranking data. Moreover, it could provide a quantitative indicator for consensus comparison between groups and further improvement of a ranking system. Existing studies are insufficient in assessing the overall consensus of a ranking set. They did not provide an evaluation of the consensus degree of preference patterns in most rankings. In this paper, a novel consensus quantifying approach, without the need for any correlation or distance functions as in existing studies of consensus, is proposed based on a concept of q-support patterns of rankings. The q-support patterns represent the commonality embedded in a set of rankings. A method for detecting outliers in a set of rankings is naturally derived from the proposed consensus quantifying approach. Experimental studies are conducted to demonstrate the effectiveness of the proposed approach.
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