Factors influencing decision making and variety-seeking behaviour of visiting friends and relatives (VFR) traveller
Factors influencing decision making and variety-seeking behaviour of visiting friends and relatives (VFR) traveller
Analysis
Factor analysis for visiting friends and relatives traveller behaviour of Sri Lankan Expatriates to Sri Lanka is applied to know that the factors which are important and imperative for the Sri Lankan Expatriates to Sri Lanka.
KMO and Bartlett's Test
Kaiser Meyer Olkin Measure of Sampling Adequacy.
.784
Bartlett's Test of Sphericity
Approx. Chi-Square
1287.059
df
91
Sig.
.000
From the above table, it can be observed that the measure of Kaiser Meyer Olkin and Bartlett's test of sphericity assesses the sampling adequacy. The KMO statistic fluctuates between 0 and 1. If, the value of KMO for Sri Lankan Expatriates to Sri Lanka measures is 0 then it shows that the sum of partial correlations is largely comparative to the sum of the correlations, signifying dispersion in the pattern of correlations, for that reason, the factor analysis is expected to be inappropriate. However, in the given case, the value of KMO for Sri Lankan Expatriates to Sri Lanka measures is close to 1 which reflects that correlations patterns are comparatively compact and hence factor analysis for Sri Lankan Expatriates to Sri Lanka measures yield reliable and distinct factors. For this data the value is 0.784 which lies in the range of being superb that is close to 1; therefore, we should be confident that factor analysis is appropriate for this data.
In addition to this, the Bartlett test the null hypothesis that is the original correlation matrix for Sri Lankan Expatriates to Sri Lanka is an identity matrix. In this context, to apply the factor analysis, it is crucial and vital to have few relationships among the variables and if the rotated matrix is an identity matrix then all the correlation coefficients would be zero for the given study that is Sri Lankan Expatriates to Sri Lanka. In view of that, Bartlett test should be significant that is the significance value should below 0.05. In the above case, the significance value is less than 0.05 which shows significance of Bartlett test which presents that the R-matrix is not an identity matrix (Gorsuch, 2005). Consequently, it can be said that there is an existence of relationships among the incorporated variables; thus, the factor analysis is appropriate (Harman, 2006).
Total Variance Explained
Factor
Initial Eigenvalues
Extraction Sums of Squared Loadings
Rotation Sums of Squared Loadings
Total
% of Variance
Cumulative %
Total
% of Variance
Cumulative %
Total
% of Variance
Cumulative %
1
3.773
26.949
26.949
3.259
23.280
23.280
3.127
22.338
22.338
2
2.181
15.581
42.530
1.665
11.893
35.173
1.579
11.277
33.616
3
1.497
10.692
53.223
1.028
7.346
42.518
1.246
8.903
42.518
4
.958
6.841
60.064
5
.833
5.949
66.013
6
.807
5.761
71.774
7
.749
5.348
77.122
8
.635
4.539
81.660
9
.580
4.146
85.806
10
.487
3.482
89.288
11
.458
3.269
92.557
12
.413
2.952
95.510
13
.331
2.367
97.877
14
.297
2.123
100.000
Method of Extraction: Principal Axis Factoring.
The total variance explained shows the eigenvalues which are linked with each factor (linear component) before the extraction, after extraction and after rotation. It is found that before extraction, 14 linear components are identified. The eigenvalues related with each factor shows the variance explained by that distinct factor that is factor 1 which is explained as 23.2% of total variance. In addition to this, in the last part of the table, the eigenvalues of the factors after rotation are shown (Kline, 2004); thus, in view of rotation sums of squared loadings, it is observed that ...