Written by students who passed Immediately available after payment Read online or as PDF Wrong document? Swap it for free 4.6 TrustPilot
logo-home
Class notes

Nonparametric Tests in Psychology

Rating
-
Sold
-
Pages
5
Uploaded on
21-07-2023
Written in
2022/2023

This package includes notes and practice question(s) with full calculated answers regarding nonparametric statistical tests relevant to the psychological and biological sciences. In particular, Chi-Square (goodness-of-fit and independence test), Mann-Whitney-U, and Wilcoxon-Signed-Rank-Test is covered with comprehensive examples for each.

Show more Read less
Institution
Course

Content preview

orparamaticstatisticatesa en
metic

ANOVA(-2)




time.A
-
Independent. V is categorical ->
qualitative

-

Dependent. V is continuous numerical - quantitative

-comparing sample means not a standardizeal population mean
N, N2
(parameters established) 1. V
2
Chi-square notation) 1. V
AWS CH

↑x
is




Chi-Square(x2-conditions for use (non-parametric Chi-square testing:Statistical

significance
*

causation (only experimentally defined)
-Data measured nominally or
ordinally (qualitative measurements (



-
Chi-Square:Both variables are
categorical, not continous,
meaning no inherent
meaning
->
Qualitative


nonparametric fundamentally between observed (0) frequency (t) (expectedmatches observed),
2
tests for differences andexpected When E X




~
-
0
= 0
=




meaning to relationship exists


Raw score data the form frequencies, quantitative value depends

Do
in scores match w/statistical freedom
-
of not
thy of on degrees as
significance? ·Value of x depends on the size of discrepancy
between E/0
↳ (I) "Goodness of Fit" observed frequencies (0) frequencies
comparedto
predictedby a pre-establishedtheory/experimental prediction (E)

↳ (2) "Independence testing"testing the independence c al
of variables
to see if any relationship exists (= correlation w/ categorical variables)


-
Employ Chi-square analysis when each observation is independent
of other observation -> p aired
not (logically linked)

-
Samples are representative respective
of population (not comparisons) =
parametric)


Chi-Squares Theoretical Distribution -



measuring impact
on of ·
Shape of theoretical distribution depends on df'


df
* 19
=



· As of increases, a larger X value is neededto




*
successfully rejectthe
null hypothes is (Hol
Cast:how parametric?)
df 10



at
is this diferentfrom
B =




s
=




x2 x
=
x (E)2]dualsummation
↳ Beyond"x2"value is rejection region... x
2
av




Chi-Square Formulas, steps, and
computation -


Example Problem

A psychologist studying art appreciation selected an abstract that had no obvious top or bottom and tested to see if people had a preference
for how to hand the picture. Hangers were placed on each edge of the painting and the picture was shown to a sample of 50 participants.
Each was asked to hang the painting in whatever orientation looked best to them. The data is as follows:


leftside up Rightside I
It hen
e Data
-> is presentedin frequency counts


-> Sampla data is being compared to

an expectation - Goodness of fit



40. P1=P2 P3 P,... Pn H1:4, P2E43... n
=

=




Step 4 -



Statement
of Null Hypothesis H.:E O



NH(Ho):Observed data fits expecteddata (t 0) preference - Alternative Hypothesis (H.) States thatE F0,


meaning
the observed
no
meaning
=

-




inpopulation (equal
opportunity)
-
Wall Hypothesis proposes thatE 0, meaning that X
=
data (o)
not fitthe expectation, or, experimental predictions (E)
↳ Bleast misfit
one proportion is a




RejectHo
Fail
to (Retain Nul

Step 2 -




Sample size. ExpectedProportions, af, CV, alpha a (pre-established;given) 0.0 5



~
=




Be
-
N 50 (individual participants)
=
-
critical"value is found using theoretical
distribution table (given)


proportion expectedfor category 0.25 Notation: RejectHo
=




each
=



- -




"
adf
df # of categories (1 1 4 1 3 x (3)0.0s 7.815-c
= =
-
- =
=




i
-




chi-square

, Step 3 -




using formula
compute CALL E PN
=




Type of Central Tendency
=(0.25)(50); x =




(EE02]
defaceasshapeof date
-




Orientation Observed (o) Expected (E)


1. Top Up 18 12.5-
cate"arereasonina calculation
De




I sumgebutInee
2. Bottom Up 17 12.5

7.(8)2 2.h 3.
(57)2
2.42
-

=


=




3. LeftUp 7 12.5-



4. RightUp 8
12.5-2.(7)* 1.62 4.
(8)
=1.62
=




(obtained)

5 50
=

2 30
=

2 8.08
=




Step 4 Making Predictions, NHST
people weremorelikesto hamImage Feee
--
-




Recall:CV-> 7.815 < 8.08.. picture orientations were notall equally likely to be prefered, X 2(3) 8.08,4
=




I f testvalue (8.08) exceeds
=>

critical value (7.815), REJECT NULL claim statistical significance
=




↳ When you succesfully rejectmull hypothesis (Ho), meaning topt >
(V;p <0.05, thatm eans thato bserved frequencies

differ from expected frequencies;the endeavour to
researcher must accountfor discrepancies




Example-Khan Academy 100
-n
=




Over the years, MC options for a try question of a standardized test has had a equal distribution in four answers (A,B,C, or D). This is a
normal distribution so there is equal percent chance that each answer will be correct. A researcher of pedagogy wants to stistcically test
this using Chi Square testing. How would they proceed?

Step 1 -


Null Hypothesis Statement :8
Ho: There is a equal distribution ofH.:There is equal distribution, expectedfrequencies
thus the
correct choices, meaning the do not the observed.
match
expected matches observed.

↳ means:23%
of A, 23% of, 28% of C, 25% of D




I
4 25% (0.2st
Step 2 Sample Size, Expected (4), ·P 100% options 100 =

Proportions -
-




df, CV,
=
=
=




Given to
you df 2 =



1 4 1 3
(V 7.815
- =
- =
·


correct -
=




Observed
Choic
Exede (E)
(0) ·x 0.05
Frequencies
=




-




A 20 25 E P(N) 0.25(100)
=
=
23
=




Step 4 -

Conclusion statement
-




-
B 20 25
x2(3)0.0s 7.815
=



-> tobt > cr:RejectHo, tob+ <CV:Retain Ho


C 25 25 Chi Greek Letter(!) ↳ tob+(6) < (r (7.815) =
Retain Ho


#$
25 conclusion:the (4) MCQ
rejectH)
(fail to
answers are equally

5 95
=
2 100
=




x=I [ EY likely be
to
chosen,

XF.os
~Recall: #
Adf 3
Step 3 Perform calculation for each
category
=




(43)2=1 (
I
7. Coption 1) -


3. Coption -
0
=




-
beyond
2 6 107
=




(Samething) 1 4.(option() Mee
-(32
2. Coption B) - =
=

4 x


↓!csisd
↳ Probability
of getting result - 6 IS

10%(from table)
2
x

Written for

Institution
Study
Course

Document information

Uploaded on
July 21, 2023
Number of pages
5
Written in
2022/2023
Type
Class notes
Professor(s)
Melanie stollstorff
Contains
All classes

Subjects

$9.99
Get access to the full document:

Wrong document? Swap it for free Within 14 days of purchase and before downloading, you can choose a different document. You can simply spend the amount again.
Written by students who passed
Immediately available after payment
Read online or as PDF

Get to know the seller
Seller avatar
mashiyatahmed

Get to know the seller

Seller avatar
mashiyatahmed University of Toronto
Follow You need to be logged in order to follow users or courses
Sold
-
Member since
2 year
Number of followers
0
Documents
5
Last sold
-

0.0

0 reviews

5
0
4
0
3
0
2
0
1
0

Recently viewed by you

Why students choose Stuvia

Created by fellow students, verified by reviews

Quality you can trust: written by students who passed their tests and reviewed by others who've used these notes.

Didn't get what you expected? Choose another document

No worries! You can instantly pick a different document that better fits what you're looking for.

Pay as you like, start learning right away

No subscription, no commitments. Pay the way you're used to via credit card and download your PDF document instantly.

Student with book image

“Bought, downloaded, and aced it. It really can be that simple.”

Alisha Student

Working on your references?

Create accurate citations in APA, MLA and Harvard with our free citation generator.

Working on your references?

Frequently asked questions