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Cognitive basis of general fluid intelligence. Adam Chuderski Institute of Psychology Jagiellonian University, Cracow, Poland. General fluid intelligence. The phenomenon of general intelligence: intraindividual unity and interindividual diversity of intellectual abilities.
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Cognitive basis of general fluid intelligence Adam Chuderski Institute of Psychology Jagiellonian University, Cracow, Poland
General fluid intelligence The phenomenon of general intelligence: intraindividual unity and interindividual diversity of intellectual abilities. Intelligence is a strongest single predictor of life success (30%), predictor of income (~180$/1IQ), & strong determiner of cognitive processing.
Simple task - Dual tasking Task1: Press „<„ if both digits odd Task2: Press „>” if both letters same B: 3A U5D9 7E B81K 2DE3 R: <> <> <><> Two groups (N~75): SOA = 0 or 500 ms
Complex task – insight problems Insight - AHA! phenomenon, sudden appearance of non-obvious solution. „How to throw a ping-pong ball that it reverses and comes back to you without bouncing any surface or being tied up to anything?”
Factor studies of intelligence structure Spearman – one general factor (g) Cattell – fluid (Gf) vs. crystallized (Gc) Thurstone, Guilford – many specific factors Caroll – hierarchy of factors Gf~g or even Gf=g
Biological basis of intelligence • Brain size • Number of neurons • Number of synapses • Myelination • Size of prefrontal cortex • Latency of evoked potentials • Amplitude of evoked potentials • Brain activity Low correlations, complex interactions, difficult interpretation.
Cognitive basis of intelligence • processing speed • coping with perceptual complexity • efficiency of attention • short term memory capacity • transfer to/from long term memory • coping with novelty • cognitive control • metacognitive abilities • using apt strategies • knowledge acquisition • working memory capacity (r=1.1)
Working memory is… …a theoretical construct that refers to mechanisms underlying the maintenance and processing of task-relevant information during the performance of a cognitive task. …a center of cognition linking perception, long-term memory, decision-making, and response generation and evaluation.
Working memory capacity measures Task has to measure how much information is maintained in the context (during) information processing. Not just a short-term memory task. • Span tasks (reading/operation/digit span) • Updating tasks (running memory, n-back) • Spatial content short-term memory tasks
Structural Equation Modeling WMC and Gf are usually computed as latent variables - indirect measures (instead of direct scores in memory tasks and intelligence tests; manifest variables) reflecting common variance in manifest variables of the same construct. Latent variables are believed to measure „pure” WMC or Gf cleaned from task-specific noise
Conway et al., (2002) RSPAN RAVEN .98 WM gF OSPAN CATTELL CSPAN
Colom et al., (2005) .96 WM g
Questions • Egg or chicken? Does Gf is a basis for WMC or it is WMC that determines Gf? • Is the link really so strong? • Ackerman metaanalysis – 25% of common variance • Oberauer metaanalysis – 75% of common variance • Working memory or short term memory • According to Ackerman – no difference • According to Engle – big difference
What process underlies WMC? WMC is a statistical construct, difficult for cognitive interpretation. Why one has high WMC. Because of: • high processing speed (Jensen) • efficient attentional control (Engle) • capatious adjustable focus of attention (Cowan)
Attentional (cognitive) control Switching attention to proper content/processes, inhibiting interfering content, and monitoring, updating, and maintaining info in WM. Significant differences in attentional control between high- and low-WMC subjects, e.g.: • weak antisaccades of low-WMC Ss • no coctail party effect of high-WMC Ss
The need for computational models of individual differences in cognition … the study of WMC-IQ correlations should be accompanied by computational modeling of the underlying cognitive processes, something that has been virtually completely absent to date. Of course, this call is tantamount to a call for the development of a complete computational process model of not just memory but also intelligence itself—clearly a big task whose completion time will be measured in decades, not years. Lest one think that this goal is too ambitious to be even considered at this moment in scientific history (Lewandowsky & Heit, 2006).
Mathematical models Oberauer and Kliegl’s (2001) model of WM impairment in aging. Probability of retrieval = 1/(1+exp(-A–t)/s) A – item activation dependent on: resource, decay rate, maximum number of chunks, cross-talk, interference. Last one wins.
Types of computational models of individual differences in cognition symbolic vs. subsymbolic vs hybrid of groups vs. of individuals qualitative (structural) vs. quantitative (parametric)
Examples of computational models of individual differences in cognition • Quantitative & group – FAIR/BETTERRAVEN model (3CAPS; Carpenter, Just & Shell, 1990) • Qualitative & group – CC Reader model (Just & Carpenter, 1992), clinical disorders • Qualitative & individual – model of digit span (ACT-R; Daily, Lovett, & Reder, 2001)
Cross task modeling of Control -> Gf – a new project • ACT-R models of individual differences in 4 executive tasks (span task, updating, inhibition, switching). • Fitting different parametrizations to non-obvious patterns of experimental data. • The relevance of different parameters for generating differences can be evaluated • Individual parameters are copied to the model of analogy making (Gf test) • The 0-parameter cross-task prediction (executive tasks->analogy) is tested
0-parameter cross-task prediction WM Task Gf Test (Analogy) correlation prediction (χ2) fitting (χ2) optyma- lization Model WM Task Model of Gf Test individual parameters copying the parameters
Conlusions Not much is known yet on the direction and nature of relation between parameters of human cognitive architecture and intelligence. Computational modeling may help identify the most promising candidates of architectural features for further investigation. The role of working memory and control mechanisms of cognitive processes during ‘intelligent’ processing may be the key issue.