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arxiv: 1311.0251 · v2 · pith:I3X4RI5Bnew · submitted 2013-10-29 · 💻 cs.IR · cs.HC

Capturing Variation and Uncertainty in Human Judgment

classification 💻 cs.IR cs.HC
keywords humanjudgmentrankingstatisticaldatadifferenthuman-generatedmodels
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The well-studied problem of statistical rank aggregation has been applied to comparing sports teams, information retrieval, and most recently to data generated by human judgment. Such human-generated rankings may be substantially different from traditional statistical ranking data. In this work, we show that a recently proposed generalized random utility model reveals distinctive patterns in human judgment across three different domains, and provides a succinct representation of variance in both population preferences and imperfect perception. In contrast, we also show that classical statistical ranking models fail to capture important features from human-generated input. Our work motivates the use of more flexible ranking models for representing and describing the collective preferences or decision-making of human participants.

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