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Or what factors other than sample size and the number of landmarks could influence the validity of the findings?
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As per usual, Mike’s response is spot-on here.
For the current thread, there is a conceptual disconnect between the intention of the CR coefficient and the research question trying to be asked. In short, the two are incommensurate, due in large part to the question being asked, not the analytical tool.
Since the 1980s, it has been of interest to evaluate the relative covariation between landmarks. Indeed, this goal seems simple: obtain a valid landmark by coordinate covariance matrix and evaluate the covariance components of interest. However, since the landmark paper (pun intended!) of Rohlf and Slice 1990, it has been known that the superimposition of specimens to standardize position, orientation, and scale, influences the resulting covariance matrix obtained from the aligned coordinates. What this means is that the estimated variance and covariance among landmarks is not accurately represented with this matrix, and so evaluations of it should be treated with extreme caution.
The CR coefficient is not a panacea for this problem (see the Discussion of Adams 2016, where there is comment on why this is the case).
The issue is simple. All current analytical methods quantifying modularity parse the signal of some input ‘total’ covariance matrix into that component within modules and that component between modules. To this end the CR ratio does this effectively, and without influence of the number of specimens or variables (Fig 1, Adams 2016). However, the USER must still consider what they are providing the method, and whether it makes sense to do so.
For landmark data, we know that many researchers continue to give a GPA-aligned data covariance matrix to some method (CR, RV, etc.) to parse it into modular structure. That may be fine, but one must remember (ala Rohlf and Slice 1990) that some component of the signal is superimposition-induced. The question then is whether this matters? I simply cannot say: it is data-dependent for now (until we have an alternative superimposition procedure that reduces this effect). But what is certain is that increasing modular structure to the point of having each landmark as its own module will not help matters, and will result in spurious results.
In the end one must be a bit more careful in how to define the biological hypotheses being tested, and do so relevant to the methods one wishes to employ. Doing so avoids GIGO.
Dean
Dr. Dean C. Adams
Director of Graduate Education, EEB Program
Professor
Department of Ecology, Evolution, and Organismal Biology
Iowa State University
https://faculty.sites.iastate.edu/dcadams/
phone: 515-294-3834
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I think that question is inverted. It is not whether the CR makes any sense but rather whether symmetrized data makes sense to use for that application.
Dean
Dr. Dean C. Adams
Director of Graduate Education, EEB Program
Professor
Department of Ecology, Evolution, and Organismal Biology
Iowa State University
https://faculty.sites.iastate.edu/dcadams/
phone: 515-294-3834
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On May 11, 2021, at 9:28 AM, kieranc...@gmail.com <kieranc...@gmail.com> wrote:
Here is another technical question.Below is the formula for CR coefficient:
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<Snipaste_2021-05-11_21-16-00.jpg>
--Dr. Dean C. AdamsDistinguished Professor
Department of Ecology, Evolution, and Organismal BiologyIowa State University