Psychology 100 Chapter 8 Part III Thinking & Intelligence.

Slides:



Advertisements
Similar presentations
4/1/2017 Outline Study Question.
Advertisements

Day 2 Evolution of Decision-Making.  Tversky and Kahneman, 1974  Heuristics – general rules of thumb, or habits  Generally result in decent estimates.
1 Intuitive Irrationality: Reasons for Unreason. 2 Epistemology Branch of philosophy focused on how people acquire knowledge about the world Descriptive.
Misconceptions and Fallacies Concerning Probability Assessments.
When Intuition Differs from Relative Frequency
Everything you ever wanted to know about Intelligence, but were afraid to ask! Carolyn R. Fallahi, Ph. D.
1 st lecture Probabilities and Prospect Theory. Probabilities In a text over 10 standard novel-pages, how many 7-letter words are of the form: 1._ _ _.
© POSbase 2005 The Conjunction Fallacy Please read the following scenario: (by Tversky & Kahneman, 1983)Tversky & Kahneman, 1983 Linda is 31 years old,
Fallacies in Probability Judgment Yuval Shahar M.D., Ph.D. Judgment and Decision Making in Information Systems.
Thinking, Deciding and Problem Solving
Reasoning What is the difference between deductive and inductive reasoning? What are heuristics, and how do we use them? How do we reason about categories?
Judgment in Managerial Decision Making 8e Chapter 3 Common Biases
Running Experiments with Amazon Mechanical-Turk Gabriele Paolacci, Jesse Chandler, Jesse Chandler Judgment and Decision Making, Vol. 5, No. 5, August 2010.
Decision-making II judging the likelihood of events.
Or Why We’re Not Really As Rational As We’d Like to Believe.
Heuristics and Biases. Normative Model Bayes rule tells you how you should reason with probabilities – it is a normative model But do people reason like.
Decision-making II judging the likelihood of events.
Example #1 (Bransford & Johnson, 1973)  “The procedure is quite simple. First, you arrange things into different groups. Of course, one pile may be sufficient,
Reasoning with Uncertainty. Often, we want to reason from observable information to unobservable information We want to calculate how our prior beliefs.
Decision-making I heuristics. Heuristics and Biases Tversky & Kahneman propose that people often do not follow rules of probability Instead, decision.
Heuristics & Biases. Bayes Rule Prior Beliefs Evidence Posterior Probability.
Decision Making. Test Yourself: Decision Making and the Availability Heuristic 1) Which is a more likely cause of death in the United States: being killed.
Intelligence Meredyth Daneman PSY100. What is Intelligence? abstract reasoning, problem solving, capacity to acquire knowledge memory, mental speed, linguistic.
MEASURING INTELLIGENCE Chapter 11: Pages
Intelligence theory and testing Lecture overview
INTELLIGENCE ACROSS CULTURES. LECTURE OUTLINE I Background and objectives I Background and objectives II Intelligence and its measurement II Intelligence.
1 Chapter 4: Understanding Student Differences Spring 2007 Kathy-ann Hernandez, Ph. D.
Decisions, Judgements and Reasoning
T/F Only humans can use insight to solve problems. T/F Crying is an early form of language. T/F “Street smarts” are a sign of intelligence. T/F Creative.
Good thinking or gut feeling
Intelligence [Instructor Name] [Class Section Number]
4 th Edition Copyright 2004 Prentice Hall8-1 Thinking, Language, and Intelligence Chapter 8.
Psychology 100 Chapter 8 Part III Thinking&Intelligence.
Copyright © Allyn & Bacon 2007 Chapter 11 Testing and Individual Differences.
Introduction to Psychology
Lecture 15 – Decision making 1 Decision making occurs when you have several alternatives and you choose among them. There are two characteristics of good.
Problem Solving, Reasoning, & Judgment Claudia Stanny PSY 2012.
Intelligence intelligence: usually defined as the ability to profit from experience, acquired knowledge, think abstractly, act purposefully, and/or adapt.
Intelligence n What is “intelligence”? n Why/how do we measure it? n What do we do with the scores?
FIN 614: Financial Management Larry Schrenk, Instructor.
Intelligence Chapter 7. Intelligence  The global capacity to think rationally, act purposefully, and deal effectively with the environment.  Not necessarily,
Judgement Judgement We change our opinion of the likelihood of something in light of new information. Example:  Do you think.
PSY 323 – Cognition Chapter 13: Judgment, Decisions & Reasoning.
Cognitive Abilities Dr. K. A. Korb University of Jos.
Intelligence n What is “intelligence”? n Why do we measure it?
Exercise 2-6: Ecological fallacy. Exercise 2-7: Regression artefact: Lord’s paradox.
1 DECISION MAKING Suppose your patient (from the Brazilian rainforest) has tested positive for a rare but serious disease. Treatment exists but is risky.
Testing & Intelligence Principal Types of Tests –Personality –Mental ability Intelligence tests – potential for general mental ability Aptitude – potential.
Thursday, October 22 Objective: Compare and contrast learning theories.
INTELLIGENCE. Intelligence Intelligence involves the application of cognitive skills and knowledge to: –Learn –Solve problems –Obtain ends valued by the.
Inductive reasoning problems … … … … ?? ?? 1210 Need.
What makes us smart? Or not so smart?
CHS AP Psychology Unit 7 Part II: Cognition Essential Task 7.3: Identify decision making techniques (compensatory models, representativeness heuristics,
A. Judgment Heuristics Definition: Rule of thumb; quick decision guide When are heuristics used? - When making intuitive judgments about relative likelihoods.
Heuristics and Biases Thomas R. Stewart, Ph.D. Center for Policy Research Rockefeller College of Public Affairs and Policy University at Albany State University.
The Representativeness Heuristic then: Risk Attitude and Framing Effects Psychology 355: Cognitive Psychology Instructor: John Miyamoto 6/1/2016: Lecture.
Intelligence Ability to learn from experience, solve problems, and use knowledge to adapt to new situations.
Exercise 2-7: Regression artefact: Lord’s paradox
Unit 7 Part II: Cognition
Myers’ PSYCHOLOGY (7th Ed)
PSY 323 – Cognition Chapter 13: Judgment, Decisions & Reasoning.
1st: Representativeness Heuristic and Conjunction Errors 2nd: Risk Attitude and Framing Effects Psychology 355:
These slides are preview slides
History: defining & measuring intelligence
Decisions, Judgements, and Reasoning.
Decisions, Judgements, and Reasoning.
Testing and Individual Differences
HEURISTICS.
History: defining & measuring intelligence
Basic Functions of Thought
Presentation transcript:

Psychology 100 Chapter 8 Part III Thinking & Intelligence

Outline Cognition, C’ont Intelligence Study Question: Inductive reasoning Limits in reasoning Intelligence Study Question: • What is the availability heuristic? Give an example of a reasoning error that might be attributed to availability. 2

Cognition Inductive Reasoning Algorithms and Heuristics Reasoning under uncertainty: Inductive reasoning Algorithms versus heuristics Kahneman and Tversky’s work Behavioural decision work Ups and downs of heuristics Cf. Visual illusions

Cognition Inductive Reasoning Algorithms and Heuristics The representiveness heuristic E.g., Flip a coin 6 times, which is more likely HHHHHH or HHTHTT Which lottery ticket is most likely to win the next 6-49? 04-11-19-29-33-39 or 01-02-03-04-05-06 The representativeness heuristic - samples are like the populations that they are pulled from. The representativeness heuristic leads to a number of decision biases

Cognition Inductive Reasoning The representiveness heuristic The law of small numbers Who is more likely to have days where more than 60% of the births are male? St. Martha’s or the IWK? Ignoring base rates Cancer Screening example 1% of women at age forty who participate in routine screening have breast cancer. 80% of women with breast cancer will get positive results. 9.6% of women without breast cancer will also get positive results. A woman in this age group had a positive mammography in a routine screening. What is the probability that she actually has breast cancer? The Gambler’s fallacy The hot hand in basketball

Cognition Inductive Reasoning The Availability Heuristic Our estimates of how often things occurs or are influenced by the ease with which relevant examples can be remembered This leads to a number of biases 1) Which is a more likely cause of death in the United States: being killed by falling airplane parts or being killed by a shark? Airplane parts! 30 X more likely than shark attacks. 2) Do more Americans die from a) homicide and car accidents, or b) diabetes and stomach cancer? Diabetes and stomach cancer by a ratio of nearly 2:1. 3) Which claims more lives in the US: lightning or tornadoes? Lightning

Cognition Inductive reasoning The Availability Heuristic Important factors Vividness and Saliency E.g., the full moon Repetition effects Anything that makes recollection easier Role of the media

Cognition Inductive reasoning Government cutbacks are about take a hit on students. It is expected that 600 people will lose their bursaries. The student union has proposed two alternative programs to fight the cutbacks: If Program A is adopted, 200 students will have their bursaries saved. If Program B is adopted (a legal option), there is a one-third probability that 600 students will have their bursaries saved, and a two-thirds probability that no students will have their bursaries saved. Which program would you favour?

Cognition Inductive Reasoning The framing effect (Kahneman & Tversky) The wording of question in conjunction with the background context can influence the decision. Both of the previous plans were rejected by the N.S. federation of students, who are now consideing the following: If Plan C is adopted, 400 students will lose their bursaries. If Plan D is adopted (another legal option), there is one-third probability that nobody will lose their bursaries, and a two-thirds probability that 600 students will lose their bursaries. Kahneman & Tversky’s results Plan A 1/3 Saved Plan B P=1/3 Saved Plan C 2/3 Die Plan D P=2/3 Die 72% 28 % 22% 78 %

Cognition Inductive reasoning The framing effect (Kahneman & Tversky) Risk seeking and avoidance When questions are framed in terms of gains we avoid risk (Prefer A over B) When framed in terms of losses we are risk-seekers (Prefer D over C) Other findings relating to the Framing Effect It is unrelated to statistical sophistication It is not eliminated when the contradiction is pointed out

Cognition Limitations in reasoning Limited domain knowledge Our cognitive representation of the situation (AKA mental model) often has incomplete information. Thermostats do not work like water faucets Hitting the elevator button 5 times is not faster than hitting it once 20° C is not twice as warm as 10 °C Quasi-magical behaviour

Cognition Limitations in reasoning

Cognition Limitations in reasoning

Cognition Limitations in reasoning Naïve Physics and Mental Models (McCloskey et al.)

Cognition Limitations in reasoning Results (A & B)

Cognition Limitations in reasoning Results (C)

Cognition Limitations in reasoning Domain of knowledge Our domain of knowledge concerning physics is poor. Impetus theory: a pre-Newtonian and incorrect concept concerning “curvature momentum” Linda is 31 years old, single outspoken, and very bright. She majored in philosophy. As a student she was deeply concerned with the issues of discrimination and social justice, and also participated in anti-globalization demonstrations. Rank the following in terms of their likelihood of describing Linda Linda is a teacher at a local elementary school Linda is a bank teller and is active in the feminist movement Linda is an insurance agent Linda is psychiatric social worker Linda is a bank teller

Problem Solving Cognition Limitations in reasoning Conjunction fallacy: Judging the probability of a conjunction to be greater than the probability of a constituent event. Very Unlikely 6 4 Very Likely Likelihood ratio 5 3 Statiscally Naive Intermediate Statistically Sophisticated

Intelligence Alfred Binet (1857-1911) Role of environment Higher-order abilities Focus on children Binet/ simon test Stanford-Binet scale: Mental age revision IQ (intelligence Quotient) = (Mental/Chronological)X100 e.g, 15/12 X 100 = 125 Weschler Adult Intelligence Scale-Rev. (WAIS-R) Verbal and Performance components 3

Intelligence Intelligence Decisions Francis Galton (1822-1911) Role of heredity Speed of processing Correlational statistics Charles Spearman (1863-1945) Intelligence: solo entity or many abilities? Invented factor analysis to look at multiple correlation Example: Six tests Vocabulary Picture completion Reading comprehension Object assembly (puzzle) General information Block design Charles Spearman 3

Intelligence Hypothetical Correlations among scores Tests 0.32 0.60 Picture Completion Reading Comprehension Object Assembly General Information Block Designs Tests Vocabulary 0.32 0.60 0.39 0.58 0.44 Picture Completion 0.40 0.54 0.38 0.64 Reading Comprehension 0.29 0.64 0.31 Object Assembly 0.33 0.60 General Information 0.37

Intelligence g Spearman’s theory All the tests are positively correlated “g”: General ability, which effects all tests The tests are not perfectly correlated “s”: Specific abilities, which effect each test g S1 S2 S3 S4 S5 S6 Test 1 Test 2 Test 3 Test 4 Test 5 Test 6 3

Intelligence Hypothetical Correlations among scores Tests 0.32 0.60 Picture Completion Reading Comprehension Object Assembly General Information Block Designs Tests Vocabulary 0.32 0.60 0.39 0.58 0.44 Picture Completion 0.40 0.54 0.38 0.64 Reading Comprehension 0.29 0.64 0.31 Object Assembly 0.33 0.60 General Information 0.37

Intelligence Raymond Cattell (1905-1998) Discovered two underlying g’s Fluid Intelligence Raw ability to manipulate information Crystallized Intelligence Ability acquired through experience Test 1 Test 3 Test 5 Test 2 Test 4 Test 6 Fluid Crystal 3