This post was updated on .
Hey,
I am trying to run a regression which takes four institutional dimensions (fixed) of a country into account. These four dimensions are represented by four independent latent variables. I managed to find pretty good variables which reflect each of the dimensions (in theory), so that I have 4 variables per dimension, so 16 in total. However, an exploratory factor analysis points to only 2 factors, and a confirmatory factor analysis with the above-mentioned 4 factors gives me a pretty poor fit. Indeed, factors 1 and 4 have a high covariance (0.95) and factor 2 and 3 also have a pretty high covariance (0.89). If I proceed regardless of this poor fit, do you think it is possible to draw proper conclusions from my regression? In theory, the variables measure things that fit to the respective dimensions very well. Thank you so much. |
If these highly correlated factors were scores on rating scales
about people, I would figure that there were only two "real" latent scales, and don't try too hard to find four. But you say that these are "institutional dimensions ... of a country." Well, I don't know what that includes. But I do know that a lot of people screw up badly on "country" data, in a few ordinary ways that also may mess up the apparent dimensionality. For instance, if a bunch of the numbers differ because of population size or national area or total national wealth when those aspects are supposed to be irrelevant... then the numerical covariances of measuring this bosh might swamp the intended latent variables. For instance, "per-capita income" is usually more interesting when comparing countries than "gross domestic product". On the other hand, if your variables *are* well chosen and well-measured, then you probably don't have 4 factors. - When two "things" are correlated 0.95, I tend to want to look at something that reflects the difference between them. Sometimes that is their ratio (or log of the ratio) and sometimes that is some version of an arithmetic difference, like (mean1/SD1 - mean2/SD2) . -- Rich Ulrich > Date: Fri, 7 Dec 2012 11:03:42 -0800 > From: [hidden email] > Subject: Have to use 4 factors, but EFA suggests only 2 factors > To: [hidden email] > > Hey, > > I am trying to run a regression which takes four institutional dimensions > (fixed) of a country into account. > These four dimensions represent four independent latent variables. I managed > to find pretty good variables which reflect each of the dimensions (in > theory), so that I have 4 variables per dimension, so 16 in total. However, > an exploratory factor analysis points to only 2 factors, and a confirmatory > factor analysis with the above-mentioned 4 factors gives me a pretty poor > fit. Indeed, factors 1 and 4 are highly correlated (0.95) and factor 2 and 3 > are also highly correlated (0.89). > > If I proceed regardless of this poor fit, do you think it is possible to > draw proper conclusions from my regression? In theory, the variables measure > things that fit to the respective dimensions very well. > > Thank you so much. > ... |
This post was updated on .
Thanks a lot. I totally agree with you.
Unfortunately I can't change the number of dimensions, and unfortunately I can't find other variables that describe these dimensions. I am just concerned about the validity of the results. I thought that the implication was that if dimension1 is positively and significantly related to a certain dependent variable, this implies that dimension4, which covaries highly with dimension1, is also very likely to have a significant and positive effect on this dependent variable, right? But when I test it, dimension 1 has a positive effect on the dependent variable, and dimension4 has a negative effect on the dependent variable. How can that be? |
Please describe your
analysis in more detail.
What constitute a case? How were they selected? are these all 200 or so countries? What variables did you use? How were they selected? What are your 4 institutional dimensions? How were they measured? over what set of countries was it determined to be 4 dimensions? Art Kendall Social Research ConsultantsOn 12/8/2012 9:05 AM, fazzmo wrote: Thanks a lot. I totally agree with you. Unfortunately I can't change the number of dimensions, and unfortunately I can't find other variables that describe these dimensions. I am just concerned about the validity of the results. Implication If dimension1 is positively and significantly related to a certain dependent variable, this implies that dimension4, which was highly positively correlated to dimension1, is also very likely to have a significant and positive effect on this dependent variable, right? -- View this message in context: http://spssx-discussion.1045642.n5.nabble.com/Have-to-use-4-factors-but-EFA-suggests-only-2-factors-tp5716773p5716790.html Sent from the SPSSX Discussion mailing list archive at Nabble.com. ===================== To manage your subscription to SPSSX-L, send a message to [hidden email] (not to SPSSX-L), with no body text except the command. To leave the list, send the command SIGNOFF SPSSX-L For a list of commands to manage subscriptions, send the command INFO REFCARD ===================== To manage your subscription to SPSSX-L, send a message to [hidden email] (not to SPSSX-L), with no body text except the command. To leave the list, send the command SIGNOFF SPSSX-L For a list of commands to manage subscriptions, send the command INFO REFCARD
Art Kendall
Social Research Consultants |
Hi,
this is my problem in detail. In my research I would like to outline that 4 institutional dimensions (regulatory, cognitive, normative, conducive) influence entrepreneurial activity of a country. The regulatory, cognitive and normative dimensions were found to be empirically distinct by Scott (1995) and have been widely ever since. The conducive dimension is based on an additional paper which I read. The idea is that promoting certain dimensions may be more important to trigger entrepreneurial activity than others. I used the following variables for each dimension: 1. Regulatory (4 variables) (Ease of Doing Business, Business Freedom, Property Rights Protection, Corruption Index) 2. Cognitive (3 variables) (Perceived Capabilities to set up a business, Perceived opportunities to set up a business, Whether or not a person knows an entrepreneur) 3. Normative (3 variables) Status attributed to entrepreneurship, MediaAttention of Entrepreneurs, Entrepreneurship as a desirable career choice) 4. Conducive (4 variables) Availability of venture capital, Latest Technology available in a country,University-Industry collaboration,Availability of Science Engineers The data for these variables can be drawn from several databases per country, some of them are based on large surveys. I chose these variables, because they reflect the theory about these four institutional dimensions as introduced by previous scholars perfectly. I am assuming that the 4 dimensions are found in every country. Now, I have data for 42 countries (spread all over the world, but mostly more developed countries) over 7 years. I basically included every country for which I could find data for these variables over 7 years. |
In reply to this post by fazzmo
Since you don't give any hint at what the dimensions are,
we don't have any new clue at what else (beyond my initial suggestions) might be possible. If V1 is correlated 0.95 with V4, then V4 will have a fairly similar correlation, guaranteed by the math, with anything that V1 is used to "predict". However, if you put them both in the same regression equation, you might see (a) the predictive weight split between the two (maybe, with neither adding "significantly" to the other); or (b) two regression weights that are large and in the opposite directions. If you get case (a), your results are apt to be valid and somewhat interpretable, especially when your interpretation includes strong reference to the zero-order relationship, in addition to the regression result. Case (b) is called a "suppressor relationship." Occasionally, these are "valid" in the sense of being replicable and robust. But if your measurements are not known to be good scales of their own latent dimensions, case (b) is a warning that you should do better modeling. -- Rich Ulrich > Date: Sat, 8 Dec 2012 06:05:20 -0800 > From: [hidden email] > Subject: Re: Have to use 4 factors, but EFA suggests only 2 factors > To: [hidden email] > > Thanks a lot. I totally agree with you. > > Unfortunately I can't change the number of dimensions, and unfortunately I > can't find other variables that describe these dimensions. I am just > concerned about the validity of the results. > > Implication If dimension1 is positively and significantly related to a > certain dependent variable, this implies that dimension4, which was highly > positively correlated to dimension1, is also very likely to have a > significant and positive effect on this dependent variable, right? > > ... |
In reply to this post by fazzmo
How are you measuring entrepreneurial activity?
Was your DV fine-grained enough so that you can see any trends. Did you look at parallel coordinate plots with the repeats as as separate variables? Do you think that there would be a correlation between whether there is data available for 7 years and the independent variables? Would countries that are developed be what the original work was based on? Are the IV's measured once or 7 times? Are you summing the items on the scales? Or are your using factor scores? Or ...? What was your data layout for the EFA? 42 cases by 16 variables? When you did the EFA what did you use as a stopping rule? Did you try parallel analysis? How did the eigenvalues from parallel analysis look on a scree plot of those from the EFA? for the repeated measures did you use GLM to do the regression? Art Kendall Social Research ConsultantsOn 12/10/2012 5:06 PM, fazzmo wrote: Hi, this is my problem in detail. In my research I would like to outline that 4 institutional dimensions (regulatory, cognitive, normative, conducive) influence entrepreneurial activity of a country. The regulatory, cognitive and normative dimensions were found to be empirically distinct by Scott (1995) and have been widely ever since. The conducive dimension is based on an additional paper which I read. The idea is that promoting certain dimensions may be more important to trigger entrepreneurial activity than others. I used the following variables for each dimension: /1. Regulatory (4 variables)/ (Ease of Doing Business, Business Freedom, Property Rights Protection, Corruption Index) /2. Cognitive (3 variables)/ (Perceived Capabilities to set up a business, Perceived opportunities to set up a business, Whether or not a person knows an entrepreneur) /3. Normative (3 variables)/ Status attributed to entrepreneurship, MediaAttention of Entrepreneurs, Entrepreneurship as a desirable career choice) /4. Conducive (4 variables)/ Availability of venture capital, Latest Technology available in a country,University-Industry collaboration,Availability of Science Engineers The data for these variables can be drawn from several databases per country, some of them are based on large surveys. I chose these variables, because they reflect the theory about these four institutional dimensions as introduced by previous scholars perfectly. I am assuming that the 4 dimensions are found in every country. Now, I have data for 42 countries (spread all over the world, but mostly more developed countries) over 7 years. I basically included every country for which I could find data for these variables over 7 years. -- View this message in context: http://spssx-discussion.1045642.n5.nabble.com/Have-to-use-4-factors-but-EFA-suggests-only-2-factors-tp5716773p5716847.html Sent from the SPSSX Discussion mailing list archive at Nabble.com. ===================== To manage your subscription to SPSSX-L, send a message to [hidden email] (not to SPSSX-L), with no body text except the command. To leave the list, send the command SIGNOFF SPSSX-L For a list of commands to manage subscriptions, send the command INFO REFCARD ===================== To manage your subscription to SPSSX-L, send a message to [hidden email] (not to SPSSX-L), with no body text except the command. To leave the list, send the command SIGNOFF SPSSX-L For a list of commands to manage subscriptions, send the command INFO REFCARD
Art Kendall
Social Research Consultants |
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