DATA ANALYSIS Making Sense of Data ZAIDA RAHAYU YET.

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DATA ANALYSIS Making Sense of Data ZAIDA RAHAYU YET

Transcript of DATA ANALYSIS Making Sense of Data ZAIDA RAHAYU YET.

DATA ANALYSISMaking Sense of Data

ZAIDA RAHAYU YET

Types of Data

The type(s) of data collected in a study determine the type of statistical analysis used.

Types of Data

Qualitative Data Quantitative Data

Nominal Ordinal Discrete Continuous

Interval Ratio

Terms Describing Data

Quantitative Data:• Deals with numbers.• Data which can measured.

(can be subdivided into interval and ratio data)

Example:- length, height, weight, volume

Qualitative Data (Categorical data ):• Deals with descriptions.• Data can be observed but not measured. (can be subdivided into nominal and ordinal data) Example:- Gender, Eye color, textures

Discrete Data

A quantitative data is discrete if its possible values form a set of separate numbers: 0,1,2,3,….

Examples:1. Number of

pets in a household

2. Number of children in a family

3. Number of foreign languages spoken by an individual

Discrete data -- Gaps between possible values

0 1 2 3 4 5 6 7

Continuous Data

A quantitative data is continuous if its possible values form an interval

Measurements Examples:

1. Height/Weight2. Age3. Blood pressure

Continuous data -- Theoretically,no gaps between possible values

0 1000

Qualitative (Categorical) data

Nominal data : • A type of categorical data in which objects fall into

unordered categories.

• To classify characteristics of people, objects or events into categories.

• Example: Gender (Male / Female).

Ordinal data (Ranking scale) :

• Characteristics can be put into ordered categories.

• Example: Socio-economic status (Low/ Medium/ High).

Displaying Categorical & Quantitative Data

Which graph to use? Depends on type of data:

◦For categorical you will typically use either a bar or pie graph

◦For quantitative you can use dotplot, stemplot, histogram, boxplot.

Displaying Categorical & Quantitative Data (MINITAB)

Parametric Assumptions

1. Independent samples2. Data normally distributed3. Equal variances

Normality test (MINITAB)

Equal variances test(MINITAB)

Regression analysis (MINITAB)

Correlation analysis (MINITAB)

Example One-way ANOVA

One-way ANOVA(MINITAB)

ANOVA (MINITAB output)

2 samples t-test (MINITAB)

2 Samples Dependent (MINITAB)

OPTIMIZATION

OPTIMIZATION FLOWCHART

RSM Example

In the article “Sealing Strength of Wax-Polyethylene Blends” by Brown, Turner, & Smith, the effects of three process variables (A) seal temperature, (B) cooling bar temperature, & (C) % polyethylene additive on the seal strength y of a bread wrapper stock were studied using a central composite design.

Factor Range

A. Seal Temp 225 - 285

B. Cooling Bar Temp 46 - 64

C. Polyethylene Content 0.5 – 1.7

RSM Design(MINITAB)

RSM Design(MINITAB)

RSM Analysis(MINITAB)

RSM-Regression Analysis (MINITAB)

Response Surface Regression: Response versus temp, cooling, polyethylene The analysis was done using uncoded units.

Estimated Regression Coefficients for Response

Term Coef SE Coef T PConstant -28.7877 11.3798 -2.530 0.030temp 0.1663 0.0646 2.573 0.028cooling 0.6120 0.1914 3.198 0.010polyethylene 5.4495 2.4698 2.206 0.052temp*temp -0.0003 0.0001 -2.647 0.024cooling*cooling -0.0045 0.0013 -3.633 0.005polyethylene*polyethylene -1.1259 0.2813 -4.003 0.003temp*cooling -0.0005 0.0005 -0.909 0.385temp*polyethylene -0.0098 0.0076 -1.298 0.223cooling*polyethylene 0.0098 0.0252 0.389 0.705

S = 1.089 R-Sq = 85.6% R-Sq(adj) = 72.6%

RSM-Analysis of Variance (MINITAB)

Analysis of Variance for Response

Source DF Seq SS Adj SS Adj MS F P

Regression 9 70.305 70.305 7.8116 6.58 0.003

Linear 3 30.960 18.654 6.2181 5.24 0.020

Square 3 36.184 36.184 12.0615 10.17 0.002

Interaction 3 3.160 3.160 1.0533 0.89 0.480

Residual Error 10 11.865 11.865 1.1865

Lack-of-Fit 5 6.905 6.905 1.3811 1.39 0.363

Pure Error 5 4.960 4.960 0.9920

Total 19 82.170

Surface Plot & Contour Plot (MINITAB)

RSM-Response Optimization(MINITAB)

Thank you