Dear community,
In my research I've performed a principal component analysis on several independent variables. All of these independent variables are dummy variables (i.e. they have values of 0 or 1). The outcome of the analysis was that eight variables (about process quality) could be loaded onto 2 components with a 85% variance explanation. However, when I use these two components in linear regression how should I interpret them? Is it still right to say that when people rate the process quality as bad (stated as one in the dummy) the effect on the dependent variable is xxx percentage points in comparison when people rate the process quality as good?
Thanks in advance.
Kind regards,
Berend
In my research I've performed a principal component analysis on several independent variables. All of these independent variables are dummy variables (i.e. they have values of 0 or 1). The outcome of the analysis was that eight variables (about process quality) could be loaded onto 2 components with a 85% variance explanation. However, when I use these two components in linear regression how should I interpret them? Is it still right to say that when people rate the process quality as bad (stated as one in the dummy) the effect on the dependent variable is xxx percentage points in comparison when people rate the process quality as good?
Thanks in advance.
Kind regards,
Berend
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