-------- Original Message --------
Subject: RE: any reason for lineal orthogonal measures?
Date: Wed, 4 Feb 2009 08:09:11 -0800 (PST)
From: Luis Cabo <[email protected]>
Reply-To: <[email protected]>
To: <[email protected]>
References: <[email protected]>

Nestor, I don't know if I am interpreting your question correctly, but
linear measurements are not necessarily orthogonal with respect to each
other. As a matter of fact, they are usually not (in the particular case of "length" and "width," they are usually correlated). The axes we use to represent them are, which is not the same thing. Orthogonality is basically the geometric definition of independence: if the main axis along your data points (e.g. the regression line) is not orthogonal (perpendicular) to one of your "plot axes" (and therefore parallel to the other), your variables, whatever they are, are not orthogonal. So the same principle (if not exactly the maths, as we start with points in space, rather than with lines) would work for landmarks. That is precisely why we study them (the interesting part is the relationship between our variables, especially from a functional point of view).

Principal components (or relative warps, if I am correct) are orthogonal by definition, as the new components try to account for the common variance not already accounted for by the previous PC's, therefore being independent from each other, but canonical roots, for example, are not (that's why CVA uses distance measurements such as Mahalanobis distances, that also account for the "direction" of the distance, rather than Euclidean ones). To complicate things further, PC's can be independent (orthogonal) in the pooled group, but not necessarily (at least from a theoretical point of view) within groups, if more than one group (sex, species, population...) is represented in your pooled sample.

The reason to use either linear measurements or landmarks is more related to the amount of information that you are considering (much higher when using landmark analysis), and the ease to interpret and explain your results. In general terms, landmarks work better in both senses, but If you are testing a clearly defined functional model (e.g. a system of levers, or physical properties such as moments of inertia or area of cross-cut sections), linear measurements can be easier to fit in the already defined physical model (but, hey, as you are recording more information, you can infer linear distances from landmarks, but not landmarks from linear measurements. So in order to record your data, you cannot go wrong with landmarks). Another thing to consider is whether you are going to be comparing your results with previous work based on linear measurements, in which case you may still want to try both approaches (linear to test whether your data corroborate or not previous observations/models, and landmarks to explain those findings).

I hope this has helped, and that I have got your question (and my answer) right. I look forward to read the answers of more experienced posters.

Luis Cabo
Dpt. of Applied Forensic Sciences,
Mercyhurst College
[email protected]

-------- Original Message --------
Subject: any reason for lineal orthogonal measures?
Date: Tue, 3 Feb 2009 09:19:53 -0800 (PST)
From: Guillermo CASSINI <[email protected]>
To: [email protected]
References: <[email protected]>

Hi;

I have a doubt. What's the difference between measures taked between
landmarks (i.e. like EDMA) and standard orthogonal measures? There is
any reason for linear measures to be orthogonal (i.e. length and width)?
Should I prefer one of them instead the other? I'm working with limb
bones, and my propose is perform a PCA analysis, and construct some
indexes based on functional approaches.

Thanks in advance
Nestor



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