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Arendasy, Martin E.; Sommer, Markus – Intelligence, 2012
There is a heated debate on whether observed gender differences in some figural matrices in adults can be attributed to gender differences in inductive reasoning/G[subscript f] or differential item functioning and/or test bias. Based on previous studies we hypothesized that three specific item design features moderate the effect size of the gender…
Descriptors: Test Items, Item Response Theory, Males, Test Bias
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Bates, Timothy C. – Intelligence, 2007
The general factor of mental ability ("g") may reflect general biological fitness. If so, "g"-loaded measures such as Raven's progressive matrices should be related to morphological measures of fitness such as fluctuating asymmetry (FA: left-right asymmetry of a set of typically left-right symmetrical body traits such as finger…
Descriptors: Geometry, Intelligence, Cognitive Ability, Matrices
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Mackintosh, N. J.; Bennett, E. S. – Intelligence, 2005
Although it is sometimes claimed that Raven's Matrices provide an almost pure measure of g, there is evidence that the easier items in the Standard Progressive Matrices and in Set I of the Advanced Matrices measure a perceptual or Gestalt factor distinct from the more analytic items in the rest of the tests. There is also, however, both factor…
Descriptors: Intelligence Tests, Gender Differences, Matrices, Evaluation Methods
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Embretson, Susan E. – Intelligence, 1995
The impact of general control processing and working memory capacity on a measure of abstract intelligence was examined with 577 military recruits. A new multicomponent latent trait model for covert response was applied to item response data for matrix problems. General control processing has a stronger impact. (SLD)
Descriptors: Cognitive Processes, Intelligence, Intelligence Tests, Item Response Theory
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Rushton, J. Philippe; Cvorovic, Jelena; Bons, Trudy Ann – Intelligence, 2007
To examine whether the Roma (Gypsy) population of Serbia, like other South Asian population groups, average lower than Europeans on "g", the general factor of intelligence, we tested 323 16- to 66-year-olds (111 males; 212 females) in three different communities over a two-year-period on the Raven's Colored and/or Standard Progressive…
Descriptors: Cognitive Ability, Foreign Countries, Intelligence, Ethnic Groups
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Lynn, Richard; Irwing, Paul – Intelligence, 2004
A meta-analysis is presented of 57 studies of sex differences in general population samples on the Standard and Advanced Progressive Matrices (SPM and APM, respectively). Results showed that there is no difference among children aged 6-14 years, but that males obtain higher means from the age of 15 through to old age. Among adults, the male…
Descriptors: Intelligence Quotient, Intelligence, Gender Differences, Matrices
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Jensen, Arthur R.; Weng, Li-Jen – Intelligence, 1994
The stability of psychometric "g," the general factor of intelligence, is investigated in simulated correlation matrices and in typical empirical data from a large battery of mental tests. "G" is robust and almost invariant across methods of analysis. A reasonable strategy for estimating "g" is suggested. (SLD)
Descriptors: Correlation, Estimation (Mathematics), Factor Analysis, Intelligence
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Lim, Tock Keng – Intelligence, 1994
Confirmatory factor analysis was used to test first- and second-order factor models on cognitive abilities and their invariance across samples of 234 male and 225 female secondary school students. Factor models suggest that males and females may use different problem-solving strategies for spatial analogies, matrices, and numerical problems. (SLD)
Descriptors: Cognitive Ability, Factor Analysis, Factor Structure, Females