Interesting topic here, at least to me.  Has anyone ever attended
this?
Have not.  Some folks, like catalogers & librarians are good at this
sort of thing, it seems very tedious and hard to scale.


From my limited experience/observation, it is a sticky and subtle problem.

SpindleViz: Over 10 years ago, I worked with a team doing ontology modeling to help them Visualize ontologies. We produced a prototype, dynamic 3D visualizer (SpindleViz) which gave some traction on actually understanding the structure of a given Ontology, but the project more importantly gave me an understanding how ontologies are used and built in some communities. In this case we worked with the Gene Ontology which at the time was perhaps the largest and most mature and represented a very broad collaborative effort. The effort of building a shared ontology appeared to me to be the ultimate in compromise.

NSF Scientific Collaboration: Later I found myself working with Dr. Deana Pennington at UNM on a NSF project for developing formal tools for Scientific Collaboration called SciDesign. This project included a study of the problem of normalizing terminologies across a diverse team of Scientists working on a common problem. In this case climate change. Contrary to some assumptions, the language across seemingly related disciplines such as say Atmospheric and Ocean Science or Biology and Ecology is not just aligned, but perhaps insidiously counter-aligned, or maybe more to the point in some sense "dissonant". Science, in it's pursuit of both understanding and precision draws it's language from existing disciplines for the "similarity" to the topic or idea at hand but then in the pursuit of precision, changes the meaning of the terms in often fundamental if subtle ways which are often not obvious to the discipline from which the terms are adopted. More often two related disciplines derive terms from a root source and neither understands how the *other* uses them differently.

In pursuit of a methodology to improve Scientific Collaboration in general, one of the fundamental problems was to come up with a fairly simple methodology to normalize these differences in lexicons. Of course, underneath these lexicons were implicit ontologies, the complex relationships between the terms. We discussed adapting a technique developed by Dr. Tim Goldsmith (also UNM) to help with this. The basic concept was to interview each individual on a collaborative team, first for a set of "most common terms" used in their domain. Once these terms were acquired for say 6 individuals with related but different domains. The pool of terms would be reduced to the subset of those which recurred in two or more individual's lexicons. Each individual would then be presented with a matrix of these terms registered against eachother and they would be asked to provide a measure of correlation between each pair of terms. The idea of course, was to build a very rough model of their model as it were, to get a handle on how closely aligned each practicioner's model of the implicit domain they were studying was. The result was to be a set of weighted graphs of overlapping terms used in their domains when applied to the common problem. While this is not a formal ontology, one might think of it as a proto-ontology of sorts, a place to begin to build an ontology from.

The point of this was a methodology for "just in time" proto-ontology building. Of course, the funding for this work ran out, Dr. Pennington moved to UTEP, and as far as I know things in this area have been on hold since then.

Most recently, I worked with other UNM Researchers, Dr's Caudell, Gilfeather, Lugar, Taha, et al on a project ultimately entitled "Faceted Ontologies" which was primarily about building, from open source Intelligence, knowledge structures, developing a normalized model for them, and providing tools for extracting specific aggregate knowledge *from* those sources, and very specifically presented *as* a structure, not simply a list of factoids or simple linear report. The tools from my former two projects were to be developed further to support the visualization, as it were, from multiple conceptual viewpoints (aka "facets" of the ontology). This was a *very* ambitious project and the basic underpinnings (building formal models of ontologies on top of Category Theory) were done.

I still believe that there is good work to be done in this area, but the level of sophistication required to develop the mechanisms underlying my own part is pretty daunting. I occasionally scan the literature and SBIR solicitations for new developments and funding sources for this work... It would be very welcome if anyone here happened to have some traction in this domain... I can provide a few references, unfortunately most of the results out of the second two projects were merely internal reports to the customers and very preliminary white-papers.

The domain I find this work most interesting *for* perhaps is Journalism... but the problem is exacerbated by their being much less formal languages developed (to my knowledge) across journalism... perhaps that is changing, or perhaps the demands of scientific journalism at least lead journalists as "outsiders" and "laymen" to the fields to not only do this same task intuitively but to have some of their own formal methodologies and tools?

- Steve

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