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Barbey & Sloman

Category instances (outside view, expect
better performance ): “Here is a new sample of
patients who have obtained a positive test result
in routine screening. How many of these patients
do you expect to actually have the disease? __
out of __.”
Category properties (inside view): “Pierre has a
positive reaction to the test.” [then compute
probability estimate]
   Single-event:
     “A 40-year-old woman who participates in routine
     screening has 10 out of 1,000 chances to have
     breast cancer.”

   Frequencies:
     “A proportion of 0.01 of women at age 40 who
     participate in routine screening have breast
     cancer.”
Swiss Army          Natural            Natural             Non-evo.            Nested sets and
Knife               frequency          frequency           natural freq.       dual processes
                    algorithm          heuristic           heuristic

Impenetrable        NOT impenetr.      NOT impenetr.       NOT impenetr.       NOT impenetr.
Encapsulated        Encapsulated       Not encapsulat.     Not encapsulat.     Not encapsulat.
One module          Simplified form    Heuristic to        Simplified Bayes’   General purpose
represents          of Bayes’          compute Bayes’      calculation, no     reasoning
natural             theorem:           rule from natural   need for natural    processes (Sys. I
frequencies         calculate number   frequencies,        sampling            and II) -
                    of cases where     “fast and frugal”                       “associative and
#1: natural         hypothesis and                         Sampling            rule-based”
frequency info      observations                           method that
easy to store       occur (“the                            “one way or         Bayesian
#2: preserves       Ratio”)                                another” people     inference from
sample size                                                can use             rule-based
(10/1,000)                                                                     system

Inaccessible to   No explicit          No explicit         High degree of
conscious control consideration of     consideration of    cog control
                  base rates           base rates

Evo                 Evo                 Evo               Non-evo              Non-evo
                 “The mind is a frequency monitoring device”
   Bayesian inference comes from rule-based
    system

   Errors from cognitive heuristics come from
    associative processes

   Base-rate neglect comes from “associative
    responding” and facilitation comes when
    people use rules to make inferences

10 out of 10,000 women have breast cancer

Structure: representation of category instances
 demonstrates set structure (10 have, 9,990 don’t, but
 also everyone either has or does not have)

Nested sets theory
   First and second frameworks
    can really be collapsed into
    one, identical to #3 (Brase)
   Non-evolutionary natural
    frequency heuristic is non-
    evolutionary….
Swiss Army        Natural            Natural            Non-evo.            Nested sets and
Knife             frequency          frequency          natural freq.       dual processes
                  algorithm          heuristic          heuristic

Impenetrable      NOT impenetr.      NOT impenetr.      NOT impenetr.       NOT impenetr.
Encapsulated      Encapsulated       Not encapsulat.    Not encapsulat.     Not encapsulat.
One module      Simplified form  Heuristic to           Simplified Bayes’   General purpose
represents      of Bayes’        compute Bayes’         calculation, no     reasoning
natural         theorem:         rule from natural      need for natural    processes (Sys. I
frequencies     calculate number frequencies,           sampling            and II) -
                of cases where   “fast and frugal”                          “associative and
#1: natural     hypothesis and                          Sampling            rule-based”
frequency info  observations                            method that
easy to store                                           “one way or
#2: preserves
              Really,(“the same
                occur the                                Nonsense
                                                        another” people
                                                                            Bayesian
                Ratio”)                                                     inference from
sample size                                             can use             rule-based
(10/1,000)                                                                  system

Inaccessible to   No explicit        No explicit        High degree of
conscious control consideration of   consideration of   cog control
                  base rates         base rates

Evo               Evo                Evo                Non-evo             Non-evo
Predictive factors:
 Degree of cognitive control in probability
  judgment
     More control = Bayesian inference in more contexts
   Cognitive operations that underlie estimates of
    probability (only *more control* theories)
     Evolutionary & non-evolutionary frequency heuristics
      depend on structural features of question
     Nested set does not depend on natural frequencies,
      and instead predicts Bayesian inference when
      problem structure is transparent (because it triggers
      these elementary set operations)
   Academic selectivity of university
   Monetary incentive
“The former observation is consistent with the
view that Bayesian inference depends on domain
general cognitive processes to the degree that
intelligence is domain general. The latter
suggests that Bayesian inference is strategic, and
not supported by automatic (e.g., modularized)
reasoning processes.”

BUT: Money decreases performance on cog tasks…
Diagrammatic Representations!



                       48% got it
Idea: Bayesian inference with natural frequency
estimates depends on accurate encoding of
autobiographical events.
Really: If people are bad at remembering events
(e.g., # beers had past week), then we can’t be
Bayesian with natural frequency estimates.

Result: Our autobiographical memories are really,
really, really, really bad, so we “don’t have that
capacity.”
   What about hypotheses that are not
    mutually exclusive and exhaustive (MECE)?
    (“I eat cookies AND I eat them with milk”)

   What about non-independent events?
    (“sweaty palms is symptomatic in 640 out of
    800 patients have a disease, and 160 out of
    200 patients without the disease”  80%
    have symptom in both cases)
Partitioned data + prompt to use sample
category = best chance of proper calculation

   Understand question
   See underlying nested set structure by
    partitioning data into subsets (to do
    elementary set operations)
   Select pieces of evidence needed for solution
1) Effects of intelligence and motivation support
the idea of domain general (vs. automatic,
modular) processes, supporting the nested sets
hypothesis
2) Use of category instances and divide solution
into two parts of ratio facilitate proper
judgment, facilitation depends on cues to the set
structure (vs. natural frequencies)
3) Frequency judgments come from fragmented
and incomplete inferential strategies
4) People don’t accurately weigh and combine
priors, and use irrelevant info in calculations
5) Nested set representations improve correct
calculation rates
1.   Effects of intelligence and motivation support the
     idea of domain general (vs. automatic, modular)
     processes, supporting the nested sets hypothesis
2.   Since use of category instances and divide solution
     into two parts of ratio facilitate proper
     judgment, facilitation depends on cues to the set
     structure (vs. natural frequencies)
3.   Frequency judgments come from fragmented and
     incomplete inferential strategies
4.   People don’t accurately weigh and combine
     priors, and use irrelevant info in calculations
5.   Nested set representations improve correct
     calculation rates
 “Cognitive algorithms, Bayesian or otherwise,
  cannot be divorced from the information on which
  they operate and how that information is
  represented.” (Gaissmaier, et al.)
 Mind is prepared to interpret “ecologically
  structured information” (Gigerenzer & Hoffrage)
 Perceptual system uses info through capacities for
  pattern recognition (G & H)
 Require computational models of cognitive
  processes to evaluate ecological rationality (G & H)
   Do people need to be able to explicitly solve
    Bayesian problems to do them automatically?
   “Without formal training they will have no
    access to the rules of Bayesian inference and
    can therefore only attempt to use general-
    purpose analytic reasoning procedures which
    involve constructing and manipulating mental
    models to represent the problem information”
    (Evans & Elqayam)  does this explain the
    education effect?
Frequencies (whole numbers) is better than rates
                                            (percentages)
due to configuration of human brain in the
representation of sets and numbers
(Butterworth)
Automatic neural process of extracting numbers
from visible objects (Butter.)
   “We can find no evidence in the target article
    for the authors’ assertion that base-rate
    neglect is due to associative processing”
    (Evans & Elqayam)
     Problem is really the failure to integrate base rate
      and diagnostic info and weigh them equally
     B&S say: use System 2 = perfect!

   Response: basically, breast cancer is
    associated with a mammogram (?)
   What about people revising their judgment in
    light of new information? (Girotto &
    Gonzales)
   Confusion of whether observed frequencies
    are actually statements of expected or
    observed probabilistic (“8 out of 10 women
    with breast cancer will get a positive
    mammography”) (Girotto & Gonzales)
   Heuristics can be good
    (Gaissmaier, Straubinger, Funder)

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Factors Affecting Bayesian Probability Judgment

  • 2.
  • 3. Category instances (outside view, expect better performance ): “Here is a new sample of patients who have obtained a positive test result in routine screening. How many of these patients do you expect to actually have the disease? __ out of __.” Category properties (inside view): “Pierre has a positive reaction to the test.” [then compute probability estimate]
  • 4.
  • 5. Single-event:  “A 40-year-old woman who participates in routine screening has 10 out of 1,000 chances to have breast cancer.”  Frequencies:  “A proportion of 0.01 of women at age 40 who participate in routine screening have breast cancer.”
  • 6. Swiss Army Natural Natural Non-evo. Nested sets and Knife frequency frequency natural freq. dual processes algorithm heuristic heuristic Impenetrable NOT impenetr. NOT impenetr. NOT impenetr. NOT impenetr. Encapsulated Encapsulated Not encapsulat. Not encapsulat. Not encapsulat. One module Simplified form Heuristic to Simplified Bayes’ General purpose represents of Bayes’ compute Bayes’ calculation, no reasoning natural theorem: rule from natural need for natural processes (Sys. I frequencies calculate number frequencies, sampling and II) - of cases where “fast and frugal” “associative and #1: natural hypothesis and Sampling rule-based” frequency info observations method that easy to store occur (“the “one way or Bayesian #2: preserves Ratio”) another” people inference from sample size can use rule-based (10/1,000) system Inaccessible to No explicit No explicit High degree of conscious control consideration of consideration of cog control base rates base rates Evo Evo Evo Non-evo Non-evo “The mind is a frequency monitoring device”
  • 7. Bayesian inference comes from rule-based system  Errors from cognitive heuristics come from associative processes  Base-rate neglect comes from “associative responding” and facilitation comes when people use rules to make inferences
  • 8.
  • 9. 10 out of 10,000 women have breast cancer Structure: representation of category instances demonstrates set structure (10 have, 9,990 don’t, but also everyone either has or does not have) Nested sets theory
  • 10.
  • 11. First and second frameworks can really be collapsed into one, identical to #3 (Brase)  Non-evolutionary natural frequency heuristic is non- evolutionary….
  • 12. Swiss Army Natural Natural Non-evo. Nested sets and Knife frequency frequency natural freq. dual processes algorithm heuristic heuristic Impenetrable NOT impenetr. NOT impenetr. NOT impenetr. NOT impenetr. Encapsulated Encapsulated Not encapsulat. Not encapsulat. Not encapsulat. One module Simplified form Heuristic to Simplified Bayes’ General purpose represents of Bayes’ compute Bayes’ calculation, no reasoning natural theorem: rule from natural need for natural processes (Sys. I frequencies calculate number frequencies, sampling and II) - of cases where “fast and frugal” “associative and #1: natural hypothesis and Sampling rule-based” frequency info observations method that easy to store “one way or #2: preserves Really,(“the same occur the Nonsense another” people Bayesian Ratio”) inference from sample size can use rule-based (10/1,000) system Inaccessible to No explicit No explicit High degree of conscious control consideration of consideration of cog control base rates base rates Evo Evo Evo Non-evo Non-evo
  • 13. Predictive factors:  Degree of cognitive control in probability judgment  More control = Bayesian inference in more contexts  Cognitive operations that underlie estimates of probability (only *more control* theories)  Evolutionary & non-evolutionary frequency heuristics depend on structural features of question  Nested set does not depend on natural frequencies, and instead predicts Bayesian inference when problem structure is transparent (because it triggers these elementary set operations)
  • 14. Academic selectivity of university  Monetary incentive “The former observation is consistent with the view that Bayesian inference depends on domain general cognitive processes to the degree that intelligence is domain general. The latter suggests that Bayesian inference is strategic, and not supported by automatic (e.g., modularized) reasoning processes.” BUT: Money decreases performance on cog tasks…
  • 16. Idea: Bayesian inference with natural frequency estimates depends on accurate encoding of autobiographical events. Really: If people are bad at remembering events (e.g., # beers had past week), then we can’t be Bayesian with natural frequency estimates. Result: Our autobiographical memories are really, really, really, really bad, so we “don’t have that capacity.”
  • 17. What about hypotheses that are not mutually exclusive and exhaustive (MECE)? (“I eat cookies AND I eat them with milk”)  What about non-independent events? (“sweaty palms is symptomatic in 640 out of 800 patients have a disease, and 160 out of 200 patients without the disease”  80% have symptom in both cases)
  • 18. Partitioned data + prompt to use sample category = best chance of proper calculation  Understand question  See underlying nested set structure by partitioning data into subsets (to do elementary set operations)  Select pieces of evidence needed for solution
  • 19. 1) Effects of intelligence and motivation support the idea of domain general (vs. automatic, modular) processes, supporting the nested sets hypothesis
  • 20. 2) Use of category instances and divide solution into two parts of ratio facilitate proper judgment, facilitation depends on cues to the set structure (vs. natural frequencies)
  • 21. 3) Frequency judgments come from fragmented and incomplete inferential strategies
  • 22. 4) People don’t accurately weigh and combine priors, and use irrelevant info in calculations
  • 23. 5) Nested set representations improve correct calculation rates
  • 24. 1. Effects of intelligence and motivation support the idea of domain general (vs. automatic, modular) processes, supporting the nested sets hypothesis 2. Since use of category instances and divide solution into two parts of ratio facilitate proper judgment, facilitation depends on cues to the set structure (vs. natural frequencies) 3. Frequency judgments come from fragmented and incomplete inferential strategies 4. People don’t accurately weigh and combine priors, and use irrelevant info in calculations 5. Nested set representations improve correct calculation rates
  • 25.  “Cognitive algorithms, Bayesian or otherwise, cannot be divorced from the information on which they operate and how that information is represented.” (Gaissmaier, et al.)  Mind is prepared to interpret “ecologically structured information” (Gigerenzer & Hoffrage)  Perceptual system uses info through capacities for pattern recognition (G & H)  Require computational models of cognitive processes to evaluate ecological rationality (G & H)
  • 26. Do people need to be able to explicitly solve Bayesian problems to do them automatically?  “Without formal training they will have no access to the rules of Bayesian inference and can therefore only attempt to use general- purpose analytic reasoning procedures which involve constructing and manipulating mental models to represent the problem information” (Evans & Elqayam)  does this explain the education effect?
  • 27. Frequencies (whole numbers) is better than rates (percentages) due to configuration of human brain in the representation of sets and numbers (Butterworth) Automatic neural process of extracting numbers from visible objects (Butter.)
  • 28. “We can find no evidence in the target article for the authors’ assertion that base-rate neglect is due to associative processing” (Evans & Elqayam)  Problem is really the failure to integrate base rate and diagnostic info and weigh them equally  B&S say: use System 2 = perfect!  Response: basically, breast cancer is associated with a mammogram (?)
  • 29. What about people revising their judgment in light of new information? (Girotto & Gonzales)  Confusion of whether observed frequencies are actually statements of expected or observed probabilistic (“8 out of 10 women with breast cancer will get a positive mammography”) (Girotto & Gonzales)  Heuristics can be good (Gaissmaier, Straubinger, Funder)