Literature DB >> 25837024

Exploring the knowledge behind predictions in everyday cognition: an iterated learning study.

Rachel G Stephens1, John C Dunn2, Li-Lin Rao3, Shu Li3.   

Abstract

Making accurate predictions about events is an important but difficult task. Recent work suggests that people are adept at this task, making predictions that reflect surprisingly accurate knowledge of the distributions of real quantities. Across three experiments, we used an iterated learning procedure to explore the basis of this knowledge: to what extent is domain experience critical to accurate predictions and how accurate are people when faced with unfamiliar domains? In Experiment 1, two groups of participants, one resident in Australia, the other in China, predicted the values of quantities familiar to both (movie run-times), unfamiliar to both (the lengths of Pharaoh reigns), and familiar to one but unfamiliar to the other (cake baking durations and the lengths of Beijing bus routes). While predictions from both groups were reasonably accurate overall, predictions were inaccurate in the selectively unfamiliar domains and, surprisingly, predictions by the China-resident group were also inaccurate for a highly familiar domain: local bus route lengths. Focusing on bus routes, two follow-up experiments with Australia-resident groups clarified the knowledge and strategies that people draw upon, plus important determinants of accurate predictions. For unfamiliar domains, people appear to rely on extrapolating from (not simply directly applying) related knowledge. However, we show that people's predictions are subject to two sources of error: in the estimation of quantities in a familiar domain and extension to plausible values in an unfamiliar domain. We propose that the key to successful predictions is not simply domain experience itself, but explicit experience of relevant quantities.

Entities:  

Keywords:  Bayesian inference; Cross-cultural comparison; Everyday reasoning; Iterated learning

Mesh:

Year:  2015        PMID: 25837024     DOI: 10.3758/s13421-015-0522-6

Source DB:  PubMed          Journal:  Mem Cognit        ISSN: 0090-502X


  9 in total

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Authors:  Thomas L Griffiths; Michael L Kalish
Journal:  Cogn Sci       Date:  2007-05-06

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Authors:  Nicholas Epley; Thomas Gilovich
Journal:  Psychol Sci       Date:  2006-04

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Journal:  Cogn Sci       Date:  2008-10

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Authors:  N Epley; T Gilovich
Journal:  Psychol Sci       Date:  2001-09

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Authors:  Thomas L Griffiths; Joshua B Tenenbaum
Journal:  Psychol Sci       Date:  2006-09

8.  Predicting the future as Bayesian inference: people combine prior knowledge with observations when estimating duration and extent.

Authors:  Thomas L Griffiths; Joshua B Tenenbaum
Journal:  J Exp Psychol Gen       Date:  2011-11

9.  The Wisdom of Individuals: Exploring People's Knowledge About Everyday Events Using Iterated Learning.

Authors:  Stephan Lewandowsky; Thomas L Griffiths; Michael L Kalish
Journal:  Cogn Sci       Date:  2009-05-19
  9 in total

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