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Section 1.4 ~ Should You Believe a Statistical Study?

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Title: Section 1.4 ~ Should You Believe a Statistical Study?


1
Section 1.4 Should You Believe a Statistical
Study?
  • Introduction to Probability and Statistics
  • Ms. Young

2
Objective
Sec. 1.4
  • In this section we will discuss how you can
    evaluate statistical studies to determine if the
    results are meaningful.

3
Eight Guidelines for Critically Evaluating a
Statistical Study
Sec. 1.4
  1. Identify the goal of the study, the population
    considered, and the type of study.
  2. Consider the source, particularly with regard to
    whether the researchers may be biased.
  3. Examine the sampling method to decide whether
    its likely to produce a representative sample.
  4. Look for problems in defining or measuring the
    variables of interest.
  5. Watch out for confounding variables that can
    invalidate the conclusions of a study.
  6. Consider the setting and wording in survey polls,
    looking for anything that might tend to produce
    inaccurate or dishonest responses.
  7. Check that results are fairly represented in
    graphics and concluding statements, because
    researchers and media often create misleading
    graphics or jump to conclusions that the results
    do not support.
  8. Stand back and consider the conclusions. Did the
    study achieve its goals? Do the conclusions make
    sense? Do the results have any practical
    significance?

4
Guideline 1 Identify the Goal, Population, and
Type of Study
Sec. 1.4
  • In evaluating a statistical study, you must
    understand the goal and the approach of the study
  • To do this, try to answer these basic questions
  • What was the study designed to determine?
  • What was the population under study? Was the
    population clearly and appropriately defined?
  • Was the study an observational study, an
    experiment, or a meta-analysis?
  • If observational, was it retrospective or
    prospective?
  • If it was an experiment, was it single- or
    double-blind, and were the treatment and control
    groups properly randomized?
  • Given the goal, was the type of study appropriate?

5
Example 1
Sec. 1.4
  • A study sought to determine whether aspirin is
    effective in preventing heart attacks. It
    involved 22,000 male physicians considered to be
    at risk for heart attacks. The men were divided
    into a treatment group that took aspirin and a
    control group that did not. The results were so
    convincing in favor of the benefits of aspirin
    that the experiment was stopped for ethical
    reasons before it was completed and the subjects
    were informed of the results. Many news reports
    led with the headline that taking aspirin can
    help prevent heart attacks. Analyze the headline
    according to Guideline 1.
  • The study was designed to determine whether
    aspirin is effective in preventing heart attacks.
  • The headline did not specify the population, but
    it gives the impression that they are talking
    about adults in general. However, the study only
    consisted of men which means that the headline is
    misleading since they cannot assume that aspirin
    has the same effect on women.
  • The study was an experiment which is appropriate,
    but with the information given, we are unsure if
    it was double-blind or single-blind. It did seem
    to be very convincing though.

6
Guideline 2 Consider the Source
Sec. 1.4
  • It is important to consider the source of a study
    and evaluate potential for biases
  • Examples
  • 4 out of 5 dentists prefer our brand
  • This statement appears to be statistically based,
    but we are given no details about how the survey
    was conducted and since advertisers would only
    want to say good things about their brand, if
    they themselves conducted the survey, it would
    have a lot of potential for bias
  • A carefully conducted study concludes that a new
    drug helps cure cancer
  • Might seem believable at first, but it was later
    found that the study was funded by the drug
    company, which means that they would have a lot
    to gain by making their drug appear better than
    it may actually be
  • A study that has undergone peer review a
    process in which several experts in a field
    evaluate a research report before it is published
    has much more credibility because it implies
    that other experts agree that the study was
    carried out properly

7
Example 2
Sec. 1.4
  • By 1963, research had so clearly shown the health
    dangers of smoking that the Surgeon General of
    the United States publicly announced that smoking
    is bad for health. Research done since that time
    built further support for this claim. However,
    while the vast majority of peer reviewed studies
    showed that smoking is unhealthy, a few studies
    found no dangers from smoking and perhaps even
    health benefits. These studies generally were
    carried out by the Tobacco Research Institute,
    funded by the tobacco companies. Analyze these
    studies according to Guideline 2.
  • Since the peer reviewed studies are more credible
    than the studies conducted by the tobacco
    companies, there is reason to believe that the
    studies showing health benefits are biased and
    before believing the results presented, you
    should analyze the study further

8
Guideline 3 Examine the Sampling Method
Sec. 1.4
  • A statistical study cannot be valid unless the
    sample is representative of the population, so
    you should examine the sampling method for signs
    of bias.
  • Selection bias occurs whenever researchers
    select their sample in a way that tends to make
    it unrepresentative of the population
  • Ex. A pre-election poll that surveyed only
    registered republicans would be considered
    selection bias since the survey didnt include
    all parties
  • Participation bias occurs when people choose to
    be part of a study
  • This mostly occurs in self-selected surveys since
    people who feel strongly about an issue are more
    likely to participate and their opinions may not
    represent the opinions of the population in
    general
  • Ex. A survey was mailed to random households
    asking if they supported a womans right to
    abortion or not.
  • Since this would require the survey to be mailed
    back, it is likely that only those who feel
    strong about this topic would participate, thus
    creating a biased study

9
Example 3
Sec. 1.4
  • The television show Nightline conducted a poll in
    which viewers were asked whether the United
    Nations headquarters should be kept in the United
    States. Viewers could respond to the poll by
    paying 50 cents to call a 900 phone number with
    their opinions. The poll drew 186,000 responses,
    of which 67 favored moving the United Nations
    out of the United States. Around the same time, a
    poll using simple random sampling of 500 people
    found that 72 wanted the United Nations to stay
    in the United States. Which poll is more likely
    to be representative of the general opinions of
    Americans?
  • The random sample is more likely to be
    representative of the general opinions of
    Americans
  • The phone poll had severe bias
  • There was a selection bias because they only drew
    from Nightline viewers
  • There was participation bias because this was a
    self-selected study in which those who were
    willing to respond not only had to take the time
    to call in, but they also had to pay 0.50

10
Guideline 4 Look for Problems in Defining or
Measuring the Variables of Interest
Sec. 1.4
  • Results of a study may be difficult to interpret
    if the variables under study are difficult to
    define or measure
  • Ex. A study on how exercise affects resting
    heart rates
  • Both variables of interest (amount of exercise
    and resting heart rate) are hard to define and
    measure how would you define and measure amount
    of exercise?

11
Example 4
Sec. 1.4
  • A commonly quoted statistic is that law
    enforcement authorities succeed in stopping only
    about 10 to 20 of the illegal drugs entering
    the United States. Should you believe this
    statistic?
  • In this study there is a comparison between the
    amount of illegal drugs intercepted and the
    amount that is not intercepted.
  • The statistic presented is very hard to believe
    since there is no way for us to know the amount
    of illegal drugs that are entering the U.S that
    arent being stopped

12
Guideline 5 Watch Out for Confounding Variables
Sec. 1.4
  • Recall that confounding variables are variables
    that were not intended to be part of the study,
    but may play a large role in interpreting the
    results properly
  • Not always easy to discover these variables, but
    can be accomplished by simply by thinking hard
    about the factors that may have influenced a
    studys results

13
Example 5
Sec. 1.4
  • Radon is a radioactive gas produced by natural
    processes (the decay of uranium) in the ground.
    The gas can leach into buildings through the
    foundation and can accumulate to relatively high
    concentrations if doors and windows are closed.
    Imagine a (hypothetical) study that seeks to
    determine whether radon gas causes lung cancer by
    comparing the lung cancer rate in Colorado, where
    radon gas is fairly common, with the lung cancer
    rate in Hong Kong, where radon gas is less
    common. Suppose the study finds that the lung
    cancer rates are nearly the same. Would it be
    reasonable to conclude that radon is not a
    significant cause of lung cancer?
  • Since radon gas is not the only cause of lung
    cancer, smoking is also known to cause it, it
    would be hard to believe the statement made in
    the study without further investigation

14
Guideline 6 Consider the Setting and Wording in
Surveys
Sec. 1.4
  • Watch for problems in the setting or wording that
    may produce dishonest responses
  • Ex. Do you cheat on your income taxes?
  • Unlikely to elicit honest answers from those who
    cheat

15
Example 6
Sec. 1.4
  • At a time when the U.S. government was running
    annual budget surpluses, Republicans in Congress
    proposed a tax cut and the Republican National
    Committee commissioned a poll to find out whether
    Americans supported the proposal. Asked Do you
    favor a tax cut?, 67 of respondents answered
    yes. Should we conclude that Americans supported
    the proposal?
  • A question like Do you favor a tax cut? is
    biased because it does not give other options for
    uses of the money such as social security or
    using it towards national debt

16
Guideline 7 Check That Results Are Fairly
Represented in Graphics or Concluding Statements
Sec. 1.4
  • Even if a statistical study is done well, it may
    be misinterpreted in graphics or concluding
    statements
  • News reporters may misinterpret a survey or jump
    to unwarranted conclusions to make a story seem
    more spectacular
  • Ex. What if you were told that your
    son/daughter was in the bottom 3 of the class in
    a particular test? Its sounds bad, but what if
    the top result was 98 and the lowest result was
    76. Then the bottom 3 doesn't sound all that
    bad.

17
Guideline 8Stand Back and Consider the
Conclusions
Sec. 1.4
  • Even if a study seems reasonable according to all
    the previous guidelines, ask yourself these
    questions
  • Did the study achieve its goals?
  • Do the conclusions make sense?
  • Can you rule out alternative explanations for the
    results?
  • If the conclusions make sense, do they have
    practical significance?

18
Example 7
Sec. 1.4
  • Suppose a (hypothetical) study concludes that
    wearing a gold chain increases your chances of
    surviving a car accident by 10. The claim is
    based on a statistical analysis of data about
    survival rates and what people were wearing.
    Careful analysis of the research shows that it
    was conducted properly and carefully. Should you
    start wearing a gold chain whenever you drive a
    car?
  • Despite the care that went into the study, the
    claim that a gold chain can save your life in a
    collision is difficult to believe. After all, how
    could a thin chain help in a highspeed collision?
  • Its certainly possible that some unknown effect
    of gold chains makes the conclusion correct, but
    it seems far more likely that the results were
    either a fluke or due to an unidentified
    confounding variable
  • For example, perhaps those who wear gold chains
    are wealthier and drive newer cars with more
    advanced safety features, lowering their fatality
    rate
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