The data set is based on a survey of 116 'young' people that smoke and considers variables related to their intention to stop smoking. There are 28 variables with information about demographic factors, ratings on visual analogues scales (perceived risk, self efficacy, subjective norms and intentions to stop smoking), information on previous smoking related illnesses, health value ratings and 18 items from a reliable and valid questionnaire.
The results have been divided into three age-groups namely, 18-21, 22-24 and 25-40. This report consists of four sections in which different hypothesis were tested. The hypotheses are as follows:
•Their will be differences on your scale measures and the MHLC scores according whether they have had a smoking related illness or not.
•There are associations between gender and living accommodation, gender and smoking related illness and accommodation type and smoking related illness.
•There will be an effect of both age and gender on some of your measures.
=> T test for "smoking related illness ever" differences in "age"
One-Sample Statistics
N
Mean
Std. Deviation
Std. Error Mean
Smoking related illness ever
116
.49
.502
.047
Years
116
24.21
4.605
.428
One-Sample Test
Test Value = 0
t
df
Sig. (2-tailed)
Mean Difference
95% Confidence Interval of the Difference
Lower
Upper
Smoking related illness ever
10.540
115
.000
.491
.40
.58
Years
56.612
115
.000
24.207
23.36
25.05
Mean and st.dev of smoking related illness is mean=.49 and st.dev=.502. we run a t test for examine the association among the two variables (smoking related illness and age group) value of t calculated is = 10.540 and 56.612 df = 115 and 115 simultaneousely.
As p value is less than .05 so we can say that smoking related illness ever have a significant differences in age.
Most of the people participate in smoking related illness ever are from age group 22-24, ratio of male participant is relatively high.
=> "smoking related illness ever" in "no of cigarettes"
One-Sample Statistics
N
Mean
Std. Deviation
Std. Error Mean
Smoking related illness ever
116
.49
.502
.047
Reported number of cigarettes before midday
116
2.63
3.412
.317
One-Sample Test
Test Value = 0
t
df
Sig. (2-tailed)
Mean Difference
95% Confidence Interval of the Difference
Lower
Upper
Smoking related illness ever
10.540
115
.000
.491
.40
.58
Reported number of cigarettes before midday
8.299
115
.000
2.629
2.00
3.26
Mean and st.dev of smoking related illness is mean=.49 and st.dev=.502 and for no. of cigrattes mean= 2.63 and st.dev=3.412. we run a t test for examine the association among the two variables (smoking related illness and no. of cigrattes) value of t calculated is = 10.540 and 8.299 df = 115 and 115 simultaneousely.
As p value is less than .05 so we can say that smoking related illness ever have a significant differences in no of cigarettes or we can say that these two variables have effect on each other.
Most of the people participate in smoking related illness ever in no of cigarettes are from age group 22-24, ratio of male participant is relatively high.
=> health value ratings
Independent Samples Test
Levene's Test for Equality of Variances
t-test for Equality of Means
F
Sig.
t
df
Sig. (2-tailed)
Mean Difference
Std. Error Difference
95% Confidence Interval of the Difference
Lower
Upper
Health value
Equal variances assumed
2.692
.104
.039
114
.969
.034
.875
-1.698
1.767
Equal variances not assumed
.039
111.833
.969
.034
.875
-1.698
1.767
For Health value we run independent sample t test value of F calculated in above table is 2.692 df=114 95% C.I is -1.698 and 1.767.
=> smoking related illness ever differences in visual analogue scale