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   Overview of Measurement
   Rasch Model
   Instrument Construct
   Findings and Discussion
    ◦   Summary Statistics Observations
    ◦   Person-Item Map
    ◦   Item Analysis
    ◦   Item Bank
   Conclusion
   Rasch offers a new paradigm in education
    longitudinal research.
   Rasch is a probabilistic model that offers a
    better method of measurement construct hence
    a scale.
   Rasch gives the maximum likelihood estimate
    (MLE) of an event outcome.
   Rasch read the pattern of an event thus
    predictive in nature which ability resolves the
    problem of missing data. Hence, more accurate.
What are the advantages of doing a Rasch
 analysis?
   Results easy to read and clearer to understand
   A parameter estimate (personal profile) for
    each of the individuals from the data.
   Comparisons between individuals become
    independent of the instrument used.
   Comparisons between the stimuli (items)
    become independent of the sample of
    individuals.
These leads to:
   Probabilistic models.
   Separability of parameters.
   Parameterization in a multiplicative or
    additive frame-of-reference.
   Evaluation of the goodness of fit of the data
    to the models.
When do you need Rasch analysis?
   Data in hand is ordinal hence qualitative;
    but study requires quantitative analysis.
   Study call for correlation of items.
   Sample size dealt with is small.
   A valid scalar instrument of measurement.
R E Q U I R EM E N T O F
   MEASUREM ENT
• WHAT IS THE INSTRUMENT USED?
• WHAT IS THE UNIT OF QUANTITY?
• WHAT IS THE SCALE CONSTRUCT?
• IS IT OF LINEAR EQUAL INTERVAL?
• IS THE MEASURE REPLICABLE?
• IS IT PREDICTIVE ?
D E F I N I T I O N OF
  MEASUREM ENT

RASCH MEASUREMENT
 MODEL IS ABLE TO
  MEET ALL THESE
REQUIREMENTS
1. But, atypical test result tabulation only rank the students from
         the highest score in descending order
          Q1            Q15    Q16            Q30     Q31         Q50
                                                       111111111111001 =
         10111011111111111
Student.1:                     11111111111111111
                                                                48
                                                       111111111011111 =
          1010010001111111     11111111111111111
                                                               43
         10111111111111111
     S-03:                     1110111111100100       01101010001101 = 33
         10111111111011111     1111111111010100       10110100000011 = 33
         10110111111111111
     S-05:                     1011111101001110       00010000100001 = 33
         10111111111111111     111101100100010        01000000000001 = 27
Student.7:10111111111111101 110101000100010          00000000001001 = 24
         2. Need to assess beyond raw score. Rasch sorts further
          according to response pattern in descending order; modified
          called ‘Rasch-Guttman scale’.
Theorem 1. Persons who are more able / more developed
        have a greater likelihood of correctly answer all the
              items /
        able to complete a given task.
        EASY ITEMS                                 DIFFICULT ITEMS
  SMART Q3               Q1      Q7          Q5      Q4          Q2
                 CARELESS

Student.0111111011111111111      11111111111111111 111111111110110 = 48
          111111111 1111111      11111111111111111    11111001000010 = 43
                     PREDICT=1
     S-0311111111111111111       1111011011110010     11101010000000 = 33
     S-0411111111111111111       0111101111011101     10110100000000 = 33
     S-0511010110111101111       1011111101001101     10110110101110 = 33
                                                                REVERSED
          11111111111111010      0111011101000100     0100 000001000 = 27
                                                  PREDICT=0
POOR S-02 11111111111111101      1101110100100100     00000000001000 = 24
 RESPONSE
  SORTED:
             7           6     5              4     3 GUESS      0
   EASY TO    Theorem 2. Easier items / task are more likely to be
    TOUGH     answered correctly by all persons.
1. Persons who are more able / more developed have a
           greater likelihood of correctly answer all the items / able
           to complete a given task.
                                                     δi =ITEM DIFFICULTY
βn= ability Q3           Q1    Q7           Q5                    Q2
Student.01 11111011111111111   11111111111111111     111111111110110 = 48
          111111111 1111111    11111111111111111       11111001000010 = 43
                                                            e (βn – δi )
     S-03
          11111111111111111    1111011011110010 P(Ɵ 11101010000000 = 33
                                                    )=
     S-04
          11111111111111111    0111101111011101            1 + e (βn – δi )
                                                       10110100000000 = 33
     S-05                                       where;
          11010110111101111    1011111101001101     10110110101110 = 33
                                                e= Euler’s Number, 2.7183
POOR S-02 11111111111111010    0111011101000100 β Person’s ability measure
                                                 n=
                                                    0100 000001000 = 27
         11111111111111101     1101110100100100        00000000001000 = 24
                                                  δi= item difficulty measure
           2. Easier items / task are more likely to be answered
              correctly by all persons.
zrilah@gmail.com
zrilah@gmail.com
Measurement Overview:
- Q & A Session
: What is an instrument construct ?




                                      06:49 AM   13
In Rasch Model, a turn of event is seen as a chance; a
               likelihood of happenings hence a ratio data.(Steven, 1946)

             e.g. On a graduation day, what is the likelihood of a lady liking
             to a piece of rose as your giving ? Perhaps 30:70
             Compare if you send a bouquet instead. It increases to 60:40;
             and so forth if you put a Fererro Roche.. the chances gets
             better.
        1         10            30        50     60                       99
        99        90            70        50     40                       1
        10-2                              100                             102
exp

logit   -2                 -1              0              1               2

         Now, we already have a SCALE with a unit termed ‘logit’.
• INSTRUMENT RELIABILITY
• RESPONSE VALIDITY
• CALIBRATION
• QUALITY CONTROL
• QUANTITATIVE
    S.D, Cronbach-α, µ, z-Test, PCA
• PREDICTIVE MODEL
-ve Person mean
   μ = -0.03 logit
   P[Ɵ] LOi= 0.4921

0.66 ‘Poor’ Person
separation of 2 groups.
0.31 ‘Poor’ reliability

Valid Responses:
99.9%

Cronbach-α :0.33 Poor
reliability assessment
of student learning

0.99; ‘Very Good’
instrument reliability
in item measuring
student learning ability
2.Good students; n=104 (42.80%)




1. Poor Students; n=139 (57.20%)
VERY DIFFICULT
= +1.82logit
N=243, score=329      0.5 < y < 1.5   -2 < Z < +2     Large +Z due to inconsistency
ave.=1.35, many                                       in response. e.g.Poor Person
cannot do                                             can answer difficult questions




                                                                  BOTH          y,z
                                                                  BREACHED    ITEM
                                                                  NEED REVIEW


                                                                   ITEM SD=2.5
EXTREMELY EASY                                                     PERSON SD=0.48
=-7.42logit                           0.32 < x< 0.8                ITEM OFF TARGET
N=243,
score=1215                            LOW PT. MEASURE CORELATION .
ave.=5, all correct                   SOME POOR STUDENTS CAN
                                      ANSWER ITEMS CORRECTLY WHILST
                                      GOOD STUDENTS GOT WRONG
Most misfit item:
Exceed MNSQ
Limit: 0.5 < y < 1.5




                       High Rating Response         Low Rating Response
                       Zone 5 – 3. Item in red      Zone 3 – 1. Item in blue
                       circles for the respective   circles for the respective
                       Persons were under rated     Persons were over rated
High Rating Response
Zone 5 – 3. Item in red
circles for the respective
Persons were under rated
1.   Developed the measurement ‘ruler’
     ◦ Transform ordinal into equal interval scale
     ◦ Measure item or tasks difficulty

2.   Measurement Standard
     ◦ Meet SI unit standard hence measurement
       requirement

3.   Validation of instrument construct
     ◦ Better reflect measure of ability
     ◦ Precision and Accuracy of measurement.
   Rasch probalistic model offers an better method to
    verify the validity of a measurement construct hence
    precision.
   Rasch predictive ability resolves the problem on the
    need of students taking all the tests; Rasch estimate
    the likely responses based on anchored items.
   Rasch gives the maximum likelihood estimate
    (MLE)
    of an event outcome.
   Rasch offers a new paradigm in engineering education
    longitudinal research; clearer to read, easy to
    understand.
aidfudin@gmail.com

    60 12240 2821

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Rasch Model Theorem_Scale Construct

  • 1. Overview of Measurement  Rasch Model  Instrument Construct  Findings and Discussion ◦ Summary Statistics Observations ◦ Person-Item Map ◦ Item Analysis ◦ Item Bank  Conclusion
  • 2. Rasch offers a new paradigm in education longitudinal research.  Rasch is a probabilistic model that offers a better method of measurement construct hence a scale.  Rasch gives the maximum likelihood estimate (MLE) of an event outcome.  Rasch read the pattern of an event thus predictive in nature which ability resolves the problem of missing data. Hence, more accurate.
  • 3. What are the advantages of doing a Rasch analysis?  Results easy to read and clearer to understand  A parameter estimate (personal profile) for each of the individuals from the data.  Comparisons between individuals become independent of the instrument used.  Comparisons between the stimuli (items) become independent of the sample of individuals.
  • 4. These leads to:  Probabilistic models.  Separability of parameters.  Parameterization in a multiplicative or additive frame-of-reference.  Evaluation of the goodness of fit of the data to the models.
  • 5. When do you need Rasch analysis?  Data in hand is ordinal hence qualitative; but study requires quantitative analysis.  Study call for correlation of items.  Sample size dealt with is small.  A valid scalar instrument of measurement.
  • 6. R E Q U I R EM E N T O F MEASUREM ENT • WHAT IS THE INSTRUMENT USED? • WHAT IS THE UNIT OF QUANTITY? • WHAT IS THE SCALE CONSTRUCT? • IS IT OF LINEAR EQUAL INTERVAL? • IS THE MEASURE REPLICABLE? • IS IT PREDICTIVE ?
  • 7. D E F I N I T I O N OF MEASUREM ENT RASCH MEASUREMENT MODEL IS ABLE TO MEET ALL THESE REQUIREMENTS
  • 8. 1. But, atypical test result tabulation only rank the students from the highest score in descending order Q1 Q15 Q16 Q30 Q31 Q50 111111111111001 = 10111011111111111 Student.1: 11111111111111111 48 111111111011111 = 1010010001111111 11111111111111111 43 10111111111111111 S-03: 1110111111100100 01101010001101 = 33 10111111111011111 1111111111010100 10110100000011 = 33 10110111111111111 S-05: 1011111101001110 00010000100001 = 33 10111111111111111 111101100100010 01000000000001 = 27 Student.7:10111111111111101 110101000100010 00000000001001 = 24 2. Need to assess beyond raw score. Rasch sorts further according to response pattern in descending order; modified called ‘Rasch-Guttman scale’.
  • 9. Theorem 1. Persons who are more able / more developed have a greater likelihood of correctly answer all the items / able to complete a given task. EASY ITEMS DIFFICULT ITEMS SMART Q3 Q1 Q7 Q5 Q4 Q2 CARELESS Student.0111111011111111111 11111111111111111 111111111110110 = 48 111111111 1111111 11111111111111111 11111001000010 = 43 PREDICT=1 S-0311111111111111111 1111011011110010 11101010000000 = 33 S-0411111111111111111 0111101111011101 10110100000000 = 33 S-0511010110111101111 1011111101001101 10110110101110 = 33 REVERSED 11111111111111010 0111011101000100 0100 000001000 = 27 PREDICT=0 POOR S-02 11111111111111101 1101110100100100 00000000001000 = 24 RESPONSE SORTED: 7 6 5 4 3 GUESS 0 EASY TO Theorem 2. Easier items / task are more likely to be TOUGH answered correctly by all persons.
  • 10. 1. Persons who are more able / more developed have a greater likelihood of correctly answer all the items / able to complete a given task. δi =ITEM DIFFICULTY βn= ability Q3 Q1 Q7 Q5 Q2 Student.01 11111011111111111 11111111111111111 111111111110110 = 48 111111111 1111111 11111111111111111 11111001000010 = 43 e (βn – δi ) S-03 11111111111111111 1111011011110010 P(Ɵ 11101010000000 = 33 )= S-04 11111111111111111 0111101111011101 1 + e (βn – δi ) 10110100000000 = 33 S-05 where; 11010110111101111 1011111101001101 10110110101110 = 33 e= Euler’s Number, 2.7183 POOR S-02 11111111111111010 0111011101000100 β Person’s ability measure n= 0100 000001000 = 27 11111111111111101 1101110100100100 00000000001000 = 24 δi= item difficulty measure 2. Easier items / task are more likely to be answered correctly by all persons.
  • 13. Measurement Overview: - Q & A Session : What is an instrument construct ? 06:49 AM 13
  • 14. In Rasch Model, a turn of event is seen as a chance; a likelihood of happenings hence a ratio data.(Steven, 1946) e.g. On a graduation day, what is the likelihood of a lady liking to a piece of rose as your giving ? Perhaps 30:70 Compare if you send a bouquet instead. It increases to 60:40; and so forth if you put a Fererro Roche.. the chances gets better. 1 10 30 50 60 99 99 90 70 50 40 1 10-2 100 102 exp logit -2 -1 0 1 2 Now, we already have a SCALE with a unit termed ‘logit’.
  • 15. • INSTRUMENT RELIABILITY • RESPONSE VALIDITY • CALIBRATION • QUALITY CONTROL • QUANTITATIVE  S.D, Cronbach-α, µ, z-Test, PCA • PREDICTIVE MODEL
  • 16. -ve Person mean μ = -0.03 logit P[Ɵ] LOi= 0.4921 0.66 ‘Poor’ Person separation of 2 groups. 0.31 ‘Poor’ reliability Valid Responses: 99.9% Cronbach-α :0.33 Poor reliability assessment of student learning 0.99; ‘Very Good’ instrument reliability in item measuring student learning ability
  • 17. 2.Good students; n=104 (42.80%) 1. Poor Students; n=139 (57.20%)
  • 18. VERY DIFFICULT = +1.82logit N=243, score=329 0.5 < y < 1.5 -2 < Z < +2 Large +Z due to inconsistency ave.=1.35, many in response. e.g.Poor Person cannot do can answer difficult questions BOTH y,z BREACHED ITEM NEED REVIEW ITEM SD=2.5 EXTREMELY EASY PERSON SD=0.48 =-7.42logit 0.32 < x< 0.8 ITEM OFF TARGET N=243, score=1215 LOW PT. MEASURE CORELATION . ave.=5, all correct SOME POOR STUDENTS CAN ANSWER ITEMS CORRECTLY WHILST GOOD STUDENTS GOT WRONG
  • 19. Most misfit item: Exceed MNSQ Limit: 0.5 < y < 1.5 High Rating Response Low Rating Response Zone 5 – 3. Item in red Zone 3 – 1. Item in blue circles for the respective circles for the respective Persons were under rated Persons were over rated
  • 20. High Rating Response Zone 5 – 3. Item in red circles for the respective Persons were under rated
  • 21. 1. Developed the measurement ‘ruler’ ◦ Transform ordinal into equal interval scale ◦ Measure item or tasks difficulty 2. Measurement Standard ◦ Meet SI unit standard hence measurement requirement 3. Validation of instrument construct ◦ Better reflect measure of ability ◦ Precision and Accuracy of measurement.
  • 22. Rasch probalistic model offers an better method to verify the validity of a measurement construct hence precision.  Rasch predictive ability resolves the problem on the need of students taking all the tests; Rasch estimate the likely responses based on anchored items.  Rasch gives the maximum likelihood estimate (MLE) of an event outcome.  Rasch offers a new paradigm in engineering education longitudinal research; clearer to read, easy to understand.
  • 23. aidfudin@gmail.com 60 12240 2821

Editor's Notes

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