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Also known as standard scores
It is used to identify and describe the exact
location of each score in a distribution
A score by itself does not necessarily provide
much information about its position within a
distribution
It tells the exact location of the original X value
The number tells the distance between the
score and the mean
๐‘ง =
๐‘ฅโˆ’ ๐‘ฅ
๐‘ ๐ท
๐‘ ๐ท =
๐‘ฅโˆ’๐‘…๐‘ 
๐‘ง
๐‘ฅ = ๐‘…๐‘  โˆ’ ๐‘ ๐‘‘ โ‹… ๐‘ง
Standardized Score = 50 + 10(z)
Z-Scores will have exactly the same shape as the
original distribution of scores
Z-scores will always have a mean of zero
The distribution of Z-scores will always have a
standard deviation of 1
One advantage of standardizing distributions is
that it makes it possible to compare different
individuals even though they are from
completely different distributions.
You are doing a research with homeless people.
You want to be able to identify those who are
depressed so they can be referred to treatment.
You used the Beck Depression Inventory.
With n = 50, ๐‘ฅ = 15 and ๐œŽ = 2.
The following are the scores obtained:
Participant Original
Score
Z-Score T-
score/Sta
ndardized
Alicia 16.5
Christina 14
Chelsea 13
Sabrina 16
Kim 19
Alicia:
16.5โˆ’15
2
= +0.75
Christina:
14โˆ’15
2
= โˆ’0.50
Chelsea:
13โˆ’15
2
= โˆ’1.00
Sabrina:
16โˆ’15
2
= +0.50
Kim:
19โˆ’15
2
= +2.00
Alicia: 50 + 10 +0.75 = 57.50
Christina: 50 + 10 (-0.50) = 45.00
Chelsea: 50 + 10 (-1.00) = 40.00
Sabrina: 50 + 10 (+0.50) = 55.00
Kim: 50 + 10 (+2.00) = 70.00

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TutorTinnieZ-scores

  • 1.
  • 2. Also known as standard scores It is used to identify and describe the exact location of each score in a distribution A score by itself does not necessarily provide much information about its position within a distribution It tells the exact location of the original X value The number tells the distance between the score and the mean
  • 3. ๐‘ง = ๐‘ฅโˆ’ ๐‘ฅ ๐‘ ๐ท ๐‘ ๐ท = ๐‘ฅโˆ’๐‘…๐‘  ๐‘ง ๐‘ฅ = ๐‘…๐‘  โˆ’ ๐‘ ๐‘‘ โ‹… ๐‘ง Standardized Score = 50 + 10(z)
  • 4. Z-Scores will have exactly the same shape as the original distribution of scores Z-scores will always have a mean of zero The distribution of Z-scores will always have a standard deviation of 1 One advantage of standardizing distributions is that it makes it possible to compare different individuals even though they are from completely different distributions.
  • 5. You are doing a research with homeless people. You want to be able to identify those who are depressed so they can be referred to treatment. You used the Beck Depression Inventory. With n = 50, ๐‘ฅ = 15 and ๐œŽ = 2. The following are the scores obtained: Participant Original Score Z-Score T- score/Sta ndardized Alicia 16.5 Christina 14 Chelsea 13 Sabrina 16 Kim 19
  • 6. Alicia: 16.5โˆ’15 2 = +0.75 Christina: 14โˆ’15 2 = โˆ’0.50 Chelsea: 13โˆ’15 2 = โˆ’1.00 Sabrina: 16โˆ’15 2 = +0.50 Kim: 19โˆ’15 2 = +2.00
  • 7. Alicia: 50 + 10 +0.75 = 57.50 Christina: 50 + 10 (-0.50) = 45.00 Chelsea: 50 + 10 (-1.00) = 40.00 Sabrina: 50 + 10 (+0.50) = 55.00 Kim: 50 + 10 (+2.00) = 70.00