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Statistical syllogisms

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Statistical syllogisms...and why generalizations aren t always accurate What is a statisical syllogism? Definition type of inductive reasoning based on a ... – PowerPoint PPT presentation

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Title: Statistical syllogisms


1
Statistical syllogisms
  • ...and why generalizations arent always accurate

2
What is a statisical syllogism?
3
Definition
  • type of inductive reasoning based on a
    probability where the strength of the argument is
    reliant on the strength of a generalization
    (major premise)

4
WHAT COMPOSES a Statistical Syllogism?
5
MAJOR PREMISE
  • generalizations which state probabilities that
    form the basis of succeeding assumptions

6
Minor Premise
  • statement that links the subject/s of the
    conclusion with the major premise

7
CONCLUSION
  • The assumption made based on the major premise.

8
  • Major Premise
  • 82.5 of IMed students are from PSHS.

9
Minor premise
  • Jon is an IMed student.

10
  • Conclusion
  • Jon is a most probably a graduate of PSHS.

11
  • Major Premise
  • 17.5 of IMed students are members of the Med.
    Choir.

12
  • Minor Premise
  • Flo is an IMed student.

13
  • Conclusion
  • It is very likely that Flo is not a member of
    the Med. Choir.

14
  • Evaluating the strength of this type of argument
    is a matter of degree.

15
  • The reliability of the argument must be
    evaluated using three questions.

16
Are there enough cases to support a universal
statement or one that is merely general?
17
Have the observed cases been found in every
variety of times, places and circumstances?
18
Has a thorough search been made for conflicting
cases?
19
criteria for evaluating the strength of a
generalization
20
The closer the number of the sample to the
required number, the more reliable the
generalization is.
  • Ex. Most apples are red.
  • (If 100 apples exist in the world, the sample
    must approach 50 in order to be considered
    reliable.)

21
The greater the variety of the members of the
sample, the more reliable the generalization is.
  • Ex. 75 of Asians are shorter than 511.
  • (The statement would be more reliable if the
    sample included a greater variety of Asians
    instead of just one nationality.)

22
The more thorough the search for conflicting
cases, the more reliable the generalization.
  • Ex. 90 of men like chocolates.
  • (If the number of conflicting cases increases in
    the sample taken, the generalization is made less
    reliable.)

23
Fallaciesinvolving statisticalsyllogism
24
accident
  • application of a general rule when circumstances
    suggest an exception.

25
Converse accident
  • application of an exception to the rule when the
    generalization should apply.
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