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An Unsupervised Decontamination Procedure For Improving The Reliability Of Human Judgments

机译:一种无监督的去污程序,用于提高人类判断的可靠性

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Psychologists have long been struck by individuals' limitations in expressing their internal sensations, impressions, and evaluations via rating scales. Instead of using an absolute scale, individuals rely on reference points from recent experience. This relativity of judgment limits the informativeness of responses on surveys, questionnaires, and evaluation forms. Fortunately, the cognitive processes that map stimuli to responses are not simply noisy, but rather are influenced by recent experience in a lawful manner. We explore techniques to remove sequential dependencies, and thereby decontaminate a series of ratings to obtain more meaningful human judgments. In our formulation, the problem is to infer latent (subjective) impressions from a sequence of stimulus labels (e.g., movie names) and responses. We describe an unsupervised approach that simultaneously recovers the impressions and parameters of a contamination model that predicts how recent judgments affect the current response. We test our iterated impression inference, or I3, algorithm in three domains: rating the gap between dots, the desirability of a movie based on an advertisement, and the morality of an action. We demonstrate significant objective improvements in the quality of the recovered impressions.
机译:心理学家长期以来一直受到个人的局限性,在表达他们的内部感受,印象和评估中通过评级尺度。而不是使用绝对规模,个人依赖最近经验的参考点。判断的这种相对性限制了对调查,问卷和评估表格的响应的信息。幸运的是,将刺激与回应的认知过程并不简单嘈杂,而是通过合法的方式受到最近经验的影响。我们探索消除顺序依赖性的技术,从而消除一系列评级以获得更有意义的人类判断。在我们的制定中,问题是从刺激标签(例如电影名称)和响应的一系列刺激标签和响应中推断潜伏(主观)印象。我们描述了一种无监督的方法,同时恢复污染模型的印象和参数,该模型预测最近判断如何影响当前响应。我们在三个域中测试我们迭代的印象推断,或I3算法:评估点之间的间隙,基于广告的电影的可取性以及动作的道德。我们展示了回收的印象质量的显着性能改善。

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