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Probabilistically Valid Inference of Covariation From a Single x,y Observation When Univariate Characteristics Are Known
Authors:Doherty Michael E  Anderson Richard B  Kelley Amanda M  Albert James H
Institution:Department of Psychology, Bowling Green State University;
Department of Mathematics, Bowling Green State University
Abstract:Participants were asked to draw inferences about correlation from single x,y observations. In Experiment 1 statistically sophisticated participants were given the univariate characteristics of distributions of x and y and asked to infer whether a single x, y observation came from a correlated or an uncorrelated population. In Experiment 2, students with a variety of statistical backgrounds assigned posterior probabilities to five possible populations based on single x, y observations, again given knowledge of the univariate statistics. In Experiment 3, statistically naïve participants were given a problem analogous to that given in Experiment 1, framed verbally. Experiment 4 replicated Experiment 3 but added an "impossible to determine" response option. Models that rely on computing sample correlations make no predictions about these investigations. From a Bayesian perspective, participants' inferences in all four experiments tended to make probabilistically valid inferences as long as the single datum was directional. The results are discussed in light of the Brunswikian notion of vicarious functioning.
Keywords:Psychology  Decision making  Judgment  Inference  Reasoning  Statistics  Correlation  Human experimentation
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