Minimization of decoy effects in recommender result sets

E. Teppan, A. Felfernig
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引用次数: 32

Abstract

Recommender systems are common web applications which support users in finding suitable products in large and/or complex product domains. Although state-of-the-art systems manage to accomplish the task of finding and presenting suitable products they show big deficits in their models of human behavior. Time limitations, cognitive capacities and willingness to cognitive effort bound rational decision making which can lead to unforeseen side effects and consequently to sub-optimal decisions. Decoy effects are cognitive phenomena which are omni-present on result pages but state-of-the-art recommender systems are completely unaware of such effects. Due to the fact that such effects constitute one source of irrational decisions their identification and, if necessary, the neutralization of their biasing potential is extremely important. This paper introduces an approach for identifying and minimizing decoy effects on recommender result pages. To support the suggested approach we present the results of a corresponding user study which clearly proves the concept. Moreover, this paper also investigates whether the decreasing impact of decoys on uncertainty levels during decision making is affected by the decoy minimization approach.
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在推荐结果集中最小化诱饵效应
推荐系统是一种常见的web应用程序,它支持用户在大型和/或复杂的产品域中找到合适的产品。尽管最先进的系统设法完成了寻找和展示合适产品的任务,但它们在人类行为模型中显示出巨大的缺陷。时间限制、认知能力和认知努力的意愿限制了理性决策,这可能导致不可预见的副作用,从而导致次优决策。诱饵效应是一种认知现象,它在结果页面上无处不在,但最先进的推荐系统完全没有意识到这种效应。由于这些影响构成了非理性决策的一个来源,因此对它们的识别以及在必要时消除它们的偏见潜力是极其重要的。本文介绍了一种识别和最小化推荐结果页面上的诱饵效应的方法。为了支持建议的方法,我们提出了一个相应的用户研究的结果,它清楚地证明了这个概念。此外,本文还研究了诱饵最小化方法是否会影响决策过程中诱饵对不确定性水平的影响。
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