Download presentation
Presentation is loading. Please wait.
Published byGeorgia Vinson Modified over 10 years ago
1
Multivariate statistical analysis Introductions and basic data analysis
2
Multivariate Variate ( 變量 ) vs. variable ( 變數 ) The attributes that the researcher concerned and observed performance The attributes that the researcher could operate for the expected performance Uni-variate ( 單變量 ) vs. multi-variate ( 多變量 ) Single concerned performance Multiple concerned performance vector
3
Measurement scale Nominal Ordinal Interval Ratio ref. p.10 表 1.2-1 四種衡量尺度之比較
4
Four types of measuring scale
5
Measuring Variables Measuring variables: used to describe the attitudes of specific concerned attributes Analytical variables: internal scale, ratio scale Categorical variables: nominal scale, ordinal scale ref. p.11, 表 1.2-2,-3,-4
7
Example
8
Cost of measurement Error cost: the impact resulted from the deviation to the true attitude Measuring cost: the difficulty of accurate measuring
9
Reliability Retest reliability Verify the stability of the responses Split half reliability Designing the contrast questions Cronbach ’ s α (>0.7)
10
Cronbach ’ s α
11
Validity Effectiveness to reflect the concerned issues Content validity Criteria-related validity Construct validity
12
Problems of validity
13
Likert scale Quasi-interval scale 5-scale, 7-scale, (in the form of 2/3 negative scale and 2/3 positive scale around the original)
14
Data format Cases: the observant, the experimental subjects/objects Variables: the set of concerned attributes Observations: the collected data Observation vector: the set of all attributes retained from a specific case
15
Data format
16
Classification of multivariate models Functional relation model Responsive variates= f (independent variables) Interdependence relation model Variables interdependence Cases interdependence Systemic relation model Path analysis LISREL model ref. p.33, 表 1.7-1 多變量統計模式之歸類 ; p.40, 表 1.7-2; p.41, 表 1.7-3
17
Multivariate analysis models
20
SAS/SPSS introductions
Similar presentations
© 2025 SlidePlayer.com. Inc.
All rights reserved.