| Literature DB >> 29273969 |
Elisa Filevich1,2,3,4, Sebastian S Horn5,6, Simone Kühn7.
Abstract
Humans can exploit recognition memory as a simple cue for judgment. The utility of recognition depends on the interplay with the environment, particularly on its predictive power (validity) in a domain. It is, therefore, an important question whether people are sensitive to differences in recognition validity between domains. Strategic, intra-individual changes in the reliance on recognition have not been investigated so far. The present study fills this gap by scrutinizing within-person changes in using a frugal strategy, the recognition heuristic (RH), across two task domains that differed in recognition validity. The results showed adaptive changes in the reliance on recognition between domains. However, these changes were neither associated with the individual recognition validities nor with corresponding changes in these validities. These findings support a domain-adaptivity explanation, suggesting that people have broader intuitions about the usefulness of recognition across different domains that are nonetheless sufficiently robust for adaptive decision making. The analysis of metacognitive confidence reports mirrored and extended these results. Like RH use, confidence ratings covaried with task domain, but not with individual recognition validities. The changes in confidence suggest that people may have metacognitive access to information about global differences between task domains, but not to individual cue validities.Entities:
Mesh:
Year: 2017 PMID: 29273969 PMCID: PMC6441105 DOI: 10.1007/s00426-017-0962-7
Source DB: PubMed Journal: Psychol Res ISSN: 0340-0727
Fig. 1Tasks used in the study. Each participant completed three tasks. a Recognition task, in which participants reported whether they had heard of a given city before, how confident they were of recognizing it, and how much further knowledge they had about the city. b Comparative judgment task, in which participants chose, for each of 70 pairs, which of two cities was more populous (population domain) or closer to a geographical reference point (distance domain). Participants additionally indicated their confidence in their own responses. c A ranking task, in which participants sorted cities along their estimated values on the criterion dimension
Stimulus materials used in the inference task and recognition rates
| City name | % of participants recognizing the item | Mean reported further knowledgea | Confidence in recognition judgmenta | Population criterionb | Distance criterionc |
|---|---|---|---|---|---|
| Istanbul | 97.98 | 40.79 | 96.75 | 13,000,000 | 2994 |
| Seoul | 96.97 | 43.5 | 96.43 | 10,000,000 | 6783 |
| Munich | 95.96 | 41.75 | 96.81 | 1,400,000 | 4567 |
| Prague | 94.95 | 36.62 | 95.78 | 1,240,000 | 4446 |
| Milan | 93.94 | 39.77 | 93.72 | 5,200,000 | 4663 |
| Cape Town | 92.93 | 34.57 | 94.45 | 3,000,000 | 7642 |
| Lima | 88.89 | 29.63 | 92.15 | 7,500,000 | 14,813 |
| Oslo | 81.82 | 30.33 | 93.05 | 634,000 | 5138 |
| Vilnius | 11.11 | 5.86 | 86.03 | 535,000 | 4091 |
| Malindi | 10.1 | 5.06 | 81.68 | 207,000 | 3666 |
| Vientiane | 9.09 | 5.93 | 87.09 | 783,000 | 4934 |
| Changsha | 8.08 | 4.34 | 87.24 | 7,000,000 | 5685 |
| Ouagadougou | 5.05 | 4.36 | 86.21 | 1,600,000 | 6106 |
| Fuyang | 4.04 | 2.91 | 81.08 | 1,700,000 | 5073 |
| Erdenet | 3.03 | 4.73 | 89.93 | 86,000 | 4955 |
aScaled from 0 to 100
bNumber of inhabitants (retrieved from http://www.wikipedia.org)
cFlying distance to Dubai in km (retrieved from http://www.distancecalculator.globefeed.com)
Measures of the comparative judgment task as a function of domain (population vs. distance)
| Measure | Ms | SDs | ||
|---|---|---|---|---|
| Population | Distance | Population | Distance | |
| Proportion of accurate judgments | 0.68 | 0.60 | 0.08 | 0.10 |
| Choice of recognized object (RH accordance rate) | 0.87 | 0.64 | 0.15 | 0.23 |
| Recognition validity | 0.77 | 0.45 | 0.08 | . 09 |
| Knowledge validity | 0.62 | 0.68 | 0.18 | 0.16 |
| RTUU | 2421 | 3122 | 1645 | 3270 |
| RTRU+ | 2222 | 3453 | 1940 | 6279 |
| RTRU− | 2770 | 3505 | 3425 | 6091 |
| RTRR | 2504 | 3410 | 2351 | 4434 |
| Confidence in comparative judgment (UU) | 25.26 | 24.75 | 18.09 | 18.62 |
| Confidence in comparative judgment (RU−) | 32.31 | 33.13 | 21.45 | 19.15 |
| Confidence in comparative judgment (RU+) | 53.26 | 43.61 | 18.58 | 20.84 |
| Confidence in comparative judgment (RR) | 55.16 | 54.92 | 17.40 | 19.95 |
RH recognition heuristic, RU trials in the inference task in which one of the two items was recognized, RR trials in which both items were recognized, UU trials in which both items were unrecognized, RU+ choice of recognized object, RU− choice of unrecognized object, RH accordance rate proportion of RU trials in which the recognized item is chosen, RT response time in ms
Means, standard deviations, and correlations, of latent-trait model parameters (population-level posteriors)
| Model parameter | Mean µ | Variability σ | Correlations ρ | |||||||||
|---|---|---|---|---|---|---|---|---|---|---|---|---|
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| 0.79 | [0.69, 0.87] | 1.46 | [1.17, 1.86] | 1 | |||||||
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| 0.22 | [0.11, 0.33] | 1.63 | [1.30, 2.09] | [ | 1 | ||||||
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| 0.77 | [0.76, 0.79] | 0.10 | [0.01, 0.18] | [− 0.20, 0.74] | [− 0.29, 0.63] | 1 | |||||
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| 0.45 | [0.44, 0.47] | 0.10 | [0.02, 0.17] | [− 0.65, 0.26] | [− 0.48, 0.39] | [− 0.85, 0.26] | 1 | ||||
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| 0.64 | [0.61, 0.67] | 0.26 | [0.18, 0.35] | [− | [− 0.52, 0.07] | [− 0.66, 0.39] | [− 0.49, 0.54] | 1 | |||
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| 0.67 | [0.64, 0.70] | 0.31 | [0.24, 0.38] | [− 0.26, 0.26] | [− 0.27, 0.26] | [− 0.37, 0.60] | [− 0.73, 0.14] | [− 0.32, 0.34] | 1 | ||
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| 0.57 | [0.53, 0.60] | 0.31 | [0.19, 0.43] | [− | [− | [− 0.74, 0.30] | [− 0.36, 0.66] | [ | [− 0.37, 0.31] | 1 | |
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| 0.54 | [0.51, 0.57] | 0.19 | [0.07, 0.30] | [− 0.15, 0.63] | [− 0.05, 0.67] | [− 0.44, 0.71] | [− 0.70, 0.38] | [− 0.57, 0.32] | [− 0.11, 0.72] | [− 0.77, 0.05] | 1 |
Probability of reliance on recognition (model parameter r), validity of recognition (parameter a), and validity of knowledge (parameter b) as a function of task domain; µ, σ, and ρ refer to estimated population-level mean, standard deviation, and correlation, respectively, of the posterior model parameter estimates; 95% credibility intervals are in brackets; for the correlations, intervals that do not include zero are marked in boldface; the means of the latent-trait parameters are on the probability scale; standard deviations and correlations are on the probit scale
POP population domain, DIST distance domain
Fig. 2Adaptivity in recognition use at the individual level. a Change score of recognition use for each participant (difference in parameter r between domains, Δr = rPOPULATION − rDISTANCE). A clear majority of participants uses the RH more likely when recognition validity is higher (in the population domain) but the magnitudes of this change are highly variable. b Model parameter r (reliance on recognition) plotted against the individual recognition validities (α) for the population and distance domains
Fig. 3Confidence in the comparative judgments. a Mean individual confidence reports plotted against recognition validity α in each domain. b Difference in mean individual confidence between population and distance domains (for RU + trials, where the recognized city name is chosen) plotted against corresponding differences in α. c Distributions and group means (horizontal bars) of confidence reports as a function of trial type and domain (population, distance)