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Reasoning in Psychology Using Statistics

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1 Reasoning in Psychology Using Statistics
2017

2 Announcements Quiz 2 Don’t forget Exam 1 is coming up (Feb 8) Today
Quiz 2 due Fri. Feb. 3 (11:59 pm) Don’t forget Exam 1 is coming up (Feb 8) In class part – multiple choice, closed book In labs part – open book/notes Today Sampling and basic probability Announcements

3 Ann Landers to readers, “If you had to do it again, would you have children?” (1975-76)
70% said kids not worth it! Nearly 10,000 responses Do you believe results? Does it reflect population of parents? Is the sample representative of all parents? Sampling Discussion of the 1976 Landers survey

4 Sampling Those research is about Population
Subset that participates in research (giving us our data) Sample Sampling

5 Sampling Population Sampling to make data collection manageable
Inferential statistics to generalize back Sampling to make data collection manageable Sample Sampling

6 Sampling Population (N=25) For rate hikes Against rate hikes
Local politician wants to know opinions on proposed rate hikes For rate hikes Against rate hikes Proportion “for hikes” in population # “for hikes” Total # = 10 25 0.4 Sampling

7 Expect to get sample that matches population exactly?
Population (N=25) Sample (n=5) Expect to get sample that matches population exactly? If not: SAMPLING ERROR Proportion “for hikes” in sample # “for hikes” Total # = 2 5 0.4 Sampling

8 Sampling Goals of sampling: Reduce: Sampling error
Maximize: Representativeness Minimize: Bias Sampling

9 Sampling Goals of sampling: Reduce: Sampling error
difference between population parameter and sample statistic BUT we usually don’t know what the population parameter is! Maximize: Representativeness Minimize: Bias Sampling

10 Sampling Error Population (N=25) Sample (n=5) # “for hikes”
Proportion “ for hikes” in population # “for hikes” Total # = 10 25 0.4 Proportion “for hikes” in sample # “for hikes” Total # = 2 5 0.4 parameter statistic Sampling error = = 0 Sampling Error

11 Sampling Error Population (N=25) Sample (n=5) # “for hikes”
Proportion “ for hikes” in population # “for hikes” Total # = 10 25 0.4 Proportion “for hikes” in sample # “for hikes” Total # = 3 5 0.6 parameter statistic Sampling error = = 0.2 Sampling Error

12 Sampling Error: Games of chance
Population (N=52) Lots of Samples (hands n=5) Sampling Error: Games of chance Lucky numbers: Marcus du Sautoy (~14 mins)

13 Sampling Error: Games of chance
Population (N=52) Sample (n=5) 13 Proportion of spades = 52 in deck = 0.25 1 Proportion of spades = 5 in a draw = 0.20 parameter statistic Sampling error = 0.25 – 0.20 = 0.05 Sampling Error: Games of chance

14 Sampling Error: Games of chance
Population (N=52) Sample (n=5) 13 Proportion of any suit = 52 in deck = 0.25 5 Proportion of suit = in a draw = 1.0 parameter statistic Sampling error = 0.25 – 1.0 = 0.75 Sampling Error: Games of chance

15 Formula we will learn later: SE = SD/√n
Use sample (statistic) to estimate population (parameter) Problem: Samples vary different estimates depending on sample But we know what affects size of sampling error (can prove mathematically) Variability in population (+ relationship) As variability increases, sampling error increases Size of sample (- or inverse relationship) As sample size increases, sampling error decreases Formula we will learn later: SE = SD/√n Parameter, Greek for besides the measure (compare paralegal, paramilitary) Sampling Error

16 Sampling Goals of sampling Reduce: Sampling error
difference between population parameter and sample statistic to what extent do characteristics of sample reflect those in population systematic difference between sample and population Maximize: Representativeness Minimize: Bias Sampling

17 Sampling Methods Probability sampling Non-probability sampling
Simple random sampling Systematic random sampling Stratified sampling Convenience sampling Quota sampling Sampling Methods

18 Sampling Methods Probability sampling Non-probability sampling
Simple random sampling Systematic random sampling Stratified sampling Convenience sampling Quota sampling Every individual has equal & independent chance of being selected from population 3 2 Sampling Methods

19 Sampling Methods Probability sampling Non-probability sampling
Simple random sampling Systematic random sampling Stratified sampling Convenience sampling Quota sampling Step 1: compute K = population size/sample size Step 2: randomly select Kth person 22/6 K = 4 4 1 Sampling Methods

20 Sampling Methods Probability sampling Non-probability sampling
Simple random sampling Systematic random sampling Stratified sampling Convenience sampling Quota sampling Step 2: randomly select from each group (proportional to size of group: 8/23= /23=.48 4/23=.17) Step 1: Identify groups (strata) blue green red If n =5, 2 1 Sampling Methods

21 Sampling Methods Probability sampling Non-probability sampling
Simple random sampling Systematic random sampling Stratified sampling Convenience sampling Quota sampling Step 1: Identify groups blue green red Step 2: pick first # from each group (not proportional) If n =6, 2 Sampling Methods

22 Sampling Methods Probability sampling Non-probability sampling
Simple random sampling Systematic random sampling Stratified sampling Convenience sampling Quota sampling 70% of parents say kids not worth it! Convenience sampling: voluntary response method of sampling Using easily available participants Results typically biased Typical respondents with very strong opinions (NOT representative of population) Newsday random sample (n = 1373) found 91% said “yes” For more discussion: David Bellhouse Sampling Methods

23 Sampling Methods Probability sampling Non-probability sampling
Simple random sampling Systematic random sampling Stratified sampling Convenience sampling Quota sampling Good Poor Representativeness Stacked Deck Bias Sampling Methods

24 Inferential statistics
Where does “probability” fit in? Population Randomness in sampling leads to variability in sampling error “Randomness” in short run is unpredictable but in long run is predictable! Odds in games of chance Allows predictions about likelihood of getting particular samples Possible Samples Inferential statistics

25 Inferential statistics
Where does “probability” fit in? Probability of 4 of a kind = Probability of a sample with particular characteristics If we know the proportions in the population And we know how we sampled: Deal 5 cards Allows predictions about likelihood of getting particular samples Inferential statistics Tools that use our estimates of sampling error to generalize from observations from samples to statements about the populations

26 Basics of probability: Derived from games with all outcomes known
Draw lettered tiles from bag Bag contains: A’s B’s and C’s. Both upper and lower case letters A a b B c C What is the probability of getting an A (upper or lower case)? Total number of outcomes classified as A Prob. of A = p(A) = Total number of possible outcomes Sample space Basics of probability: Derived from games with all outcomes known

27 Flipping a coin example: 1 flip
What are odds of getting heads? One outcome classified as heads = 1 2 Total of two outcomes = 0.5 This simplest case is known as the binomial 2n = 21 = 2 total outcomes pn=(0.5)1= the prob of a single outcome Flipping a coin example: 1 flip

28 Flipping a coin example: 2 flips
What are the odds of getting all heads? Number of heads 2 Four total outcomes One 2 heads outcome 1 = 0.25 1 2n = 22 = 4 total outcomes pn = (0.5)2 = 0.25 for 1 outcome twice in a row Flipping a coin example: 2 flips All heads on 3 flips? 23 = 8 outcomes p3 = (0.5)3 = or ⅛

29 Flipping a coin example: 2 flips
What are the odds of getting only one heads? Number of heads 2 Four total outcomes 1 Two 1 heads outcome = 0.50 1 Flipping a coin example: 2 flips

30 Flipping a coin example: 2 flips
What are the odds of getting at least one heads? Number of heads 2 Four total outcomes Three at least one heads outcome 1 = 0.75 1 Flipping a coin example: 2 flips

31 Flipping a coin example: 2 flips
What are the odds of getting no heads? Number of heads 2 Four total outcomes 1 One no heads outcome = 0.25 1 Flipping a coin example: 2 flips

32 Odds in Poker What are the odds of being dealt a “Royal Flush”?
Total number of possible outcomes Total number of outcomes classified as A Prob. of A = p(A) = 4 p(Royal Flush) = = 2,598,960 ~1.5 hands out of every million hands Odds in Poker

33 Odds in Poker What are the odds of being dealt a “Straight Flush”?
Total number of possible outcomes Total number of outcomes classified as A Prob. of A = p(A) = 40 p(straightflush) = = 2,598,960 ~15 hands out of every million hands Odds in Poker

34 Odds in Poker What are the odds of being dealt a …?
Total number of possible outcomes Total number of outcomes classified as A Prob. of A = p(A) = Odds in Poker

35 Inferential statistics
Where does “probability” fit into statistics? Most research uses samples rather than populations. The predictability in the long run, allows us to know quantify the probable size of the sampling error. Inferential statistics use our estimates of sampling error to generalize from observations from samples to statements about the populations. Inferential statistics

36 Wrap up Today’s lab: Try out sampling and probability Questions?
Breaking down probability sampling (~4 mins) Sampling: Simple Random, Convenience, systematic, cluster, stratified (~4 mins) Non-Probability Sampling (~4 mins) Basics Probability and Statistics | Khan Academy (~8 mins) Example 2 | Probability and Statistics | Khan Academy (~10 mins) Probability with playing cards | Khan Academy (~10 mins) Wrap up


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