| Literature DB >> 24312393 |
Gaëlle Meert1, Jacques Grégoire, Xavier Seron, Marie-Pascale Noël.
Abstract
This study tested the processing of ratios of natural numbers in school-age children. Nine- and eleven-year-olds were presented collections made up of orange and grey dots (i.e., nonsymbolic format) and fractions (i.e., symbolic format). They were asked to estimate ratios between the number of orange dots and the total number of dots and fractions by producing an equivalent ratio of surface areas (filling up a virtual glass). First, we tested whether symbolic notation of ratios affects their processing by directly comparing performance on fractions with that on dot sets. Second, we investigated whether children's estimates of nonsymbolic ratios of natural numbers relied at least in part on ratios of surface areas by contrasting a condition in which the ratio of surface areas occupied by dots covaried with the ratio of natural numbers and a condition in which this ratio of surface areas was kept constant across ratios of natural numbers. The results showed that symbolic notation did not really have a negative impact on performance among 9-year-olds, while it led to more accurate estimates in 11-year-olds. Furthermore, in dot conditions, children's estimates increased consistently with ratios between the number of orange dots and the total number of dots even when the ratio of surface areas was kept constant but were less accurate in that condition than when the ratio of surface areas covaried with the ratio of natural numbers. In summary, these results indicate that mental magnitude representation is more accurate when it is activated from symbolic ratios in children as young as 11 years old and that school-age children rely at least in part on ratios of surface areas to process nonsymbolic ratios of natural numbers when given the opportunity to do so.Entities:
Mesh:
Year: 2013 PMID: 24312393 PMCID: PMC3843730 DOI: 10.1371/journal.pone.0082002
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.240
Overview of the ratios to be estimated.
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| Small (≤ 5) | 1/4 (.25) | 2/5 (.40) | 1/2 (.50) | 2/3 (.67) | 3/4 (.75) |
| Medium (from 6 to 9) | 2/9 (.22) | 3/8 (.38) | 5/9 (.56) | 5/8 (.63) | 7/9 (.78) |
| Large (from 20 to 29) | 7/29 (.24) | 11/28 (.39) | 13/25 (.52) | 17/26 (.65) | 16/21 (.76) |
Note. Five levels of approximate ratio magnitude were used. The exact magnitude of each ratio is in brackets.
Figure 1Instance of stimulus for each ratio format and time course of a trial.
Participants were asked to estimate fractions as well as the ratio between the number of orange dots and the total number of dots. Sets were made up of either homogeneous dots (without controlling for the ratio of surface areas) or heterogeneous dots (with such a control). Participants responded by filling a glass so that the ratio (water surface/total surface) was equal to the estimated ratio. The time line represents the time course of a trial.
Results of likelihood ratio tests comparing the fitting of the model including both the intercept and the slope as random factors with the fitting of the model including only the intercept.
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| 9 | Fractions | -356.87 | -366.34 | 2 | 9.47* |
| Homog. dots | -463.56 | -473.97 | 2 | 10.41* | |
| Heterog. dots | -431.69 | -474.41 | 2 | 42.72* | |
| 11 | Fractions | -617.78 | -627.40 | 2 | 9.62* |
| Homog. dots | -695.45 | -729.64 | 2 | 34.19* | |
| Heterog. dots | -702.63 | -746.89 | 2 | 44.26* |
Note. * p < .01, -2 RLL = -2 Restricted Log Likelihood
The unstructured covariance matrix was used for the model including both the intercept and the slope as random factors in order to allow these factors to covariate. The variance component matrix was used for the model including the intercept as a random factor.
Results of the linear mixed models run on the participants’ responses with the ratio magnitude as a predictor according to the age group and the ratio format.
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| 9 | Fractions | -358.34 | -344.21 | 0.12 | 0.03 | 16 | 3.70* | 0.75 | .06 | 16 | 12.92* |
| Homog. dots | -465.97 | -451.84 | 0.11 | 0.03 | 16 | 3.61* | 0.82 | .05 | 16 | 17.50* | |
| Heterog. dots | -466.41 | -452.27 | 0.17 | 0.04 | 16 | 4.19* | 0.73 | .07 | 16 | 10.42* | |
| 11 | Fractions | -627.40 | -604.82 | 0.05 | 0.02 | 18 | 2.68* | 0.87 | .04 | 18 | 24.45* |
| Homog. dots | -721.64 | -707.06 | 0.04 | 0.02 | 18 | 1.96 | 0.94 | .04 | 18 | 22.42* | |
| Heterog. dots | -746.89 | -724.30 | 0.09 | 0.02 | 18 | 3.86* | 0.88 | .04 | 18 | 19.74* | |
Note. * p ≤ .01, AIC = Akaike’s Information Criterion, BIC = Schwarz’s Bayesian Criterion, EST = Estimates of fixed effects, SE = Standard Error, df = degree of freedom, t = value of t test
Figure 2The mean absolute error score (top panel) and the mean standard deviation (bottom panel) according to the denominator size and the ratio format by age group.
Error bars represent the 95% confidence intervals corrected according to the method suggested by Cousineau [44] for repeated measures.