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从二进制序列进行预测:揭示隐含线索。

On making forecasts from binary sequences: Uncovering implicit cues.

机构信息

College of Public Health.

Department of Psychology.

出版信息

J Exp Psychol Gen. 2021 Mar;150(3):466-483. doi: 10.1037/xge0000834. Epub 2020 Aug 27.

Abstract

The purpose of this article is to examine the statistical characteristics of binary sequences with the aim of uncovering the implicit cues that people use when making forecasts of what comes next. Information theory was used to quantify these statistical characteristics. In 2 experiments people were presented with 100 intact sequences of 20 Xs and Os and simply asked to forecast whether the 21st event in each sequence will be an X or an O. Multilevel logistic regression models were used to estimate the odds associated with these forecasts under different experimental manipulations. In a third experiment people judged the forecastability of sequences in a paired-comparison task. The results from the first 2 experiments showed that third-order redundancy (i.e., information provided by knowledge of the preceding pairs of events) was the most salient cue influencing forecasts. Experiment 3 showed that judgments of forecastability were based on this cue as well. When examining intact sequences with the goal of forecasting what comes next, people are more sensitive to higher-order transitional probabilities than has been previously suggested. (PsycInfo Database Record (c) 2021 APA, all rights reserved).

摘要

本文旨在探讨二进制序列的统计特征,以期揭示人们在预测下一个事件时所使用的隐含线索。信息论被用来量化这些统计特征。在 2 项实验中,参与者观看了 100 个完整的 20 个 X 和 O 序列,并被简单地要求预测每个序列中的第 21 个事件是 X 还是 O。多层逻辑回归模型被用于在不同的实验操作下估计这些预测的几率。在第三个实验中,人们在配对比较任务中判断序列的可预测性。前两个实验的结果表明,三阶冗余(即,通过了解前面两个事件的知识提供的信息)是影响预测的最显著线索。实验 3 表明,可预测性的判断也是基于这一线索。当人们检查完整的序列以预测下一个事件时,他们对高阶转移概率比之前认为的更为敏感。

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