Wednesday, August 14, 2013

Measuring the impact of ideas: Some testable propositions



Evaluating the impact of research on policy and practice can be quite a challenge, for at least three reasons: (a) Our ideas of the likely impact pathways may be poorly developed, (b) Actors within those pathways may not provide very reliable information about exposure to and use of the research we are interested in. Some may be over-obliging, others may be very reluctant to acknowledge its influence. Others may not even be concious of the influence that did occur, (c) It is quite likely that that there are many more pathways through which the research results travel that we cant yet imagine, let alone measure. Even more so when we are looking at impact over a longer span of time. When I look back to the first paper I wrote about MSC, which I put on the web in 1996, I could never have imagined the diversity of users and usages of MSC that have happened since then.

I am wondering if there is a proxy measure of impact that might be useful, and whose predictive value might even be testable, before it is put to work as a proxy. A proxy is conventionally defined as "a person authorized to act on behalf of another". In this case it is a measure that can be justifably used in place of another, because that other measure is not readily available.

What would that proxy measure look like? Lets start with an assumption that the more widely dispersed an idea is, the more likely someone will encounter it, if only by chance, and then make some use of it. Lets make a second assumption, that impact is greater when not only is the idea widely dispersed, say amongst 1000 people rather than 100, but when it is dispersed amongst a wide variety of people, not just one kind of people. Combined together, the proxy measure could be descirbed as Availability.

While one can imagine some circumstances where  impact will be bigger when the idea is widely dispersed but within a single type of people I would argue the success of these more "theory led" predictions will often be outnumbered by serindipitous encounters and impact, especially where there has been large scale dissemination, as will often be the case when research is disseminated via the web. This is a view that could be tested, see below.

How would the proxy measure be measured? As suggested by the assumptions above, Availability could be tracked using two measures. One is the number of references to the research that can be found (e.g. on the web), which we could call Abundance. The other is the Diversity of sources that make these references. The first measure seems relatively simple. The second, the measurement of diversity, is an interesting subject in its own right , and one which has been widely explored by ecologists and other disciplines for some decades now (For a summary of ideas, see Scott Page - Diversity and Complexity, 2001, chapter 2). One simple measure is Simpson's Reciprocal Index (1/D), which combines Richness ( the number of species [/ number of types of reference sources]) and Evenness, the relative abundance of species [/number of references] across those types). High diversity is a combination of high Richness and high Evenness (i.e. all species are similarly abundant). A calculation of the index is shown below:
How could the proxy measure be tested, before it can be widely used? We would need  a number of test cases where not only can we measure the abundance and diversity of references to a given piece of research, but we can also access some known evidence of impact(s) of that research. With the latter we may be able to generate a rank ordering of impact, through a pair comparison process - a process that can acknowledge the differences in the kinds of impact. We could then use data from these cases to identify which of the following distributions existed:



We could also compare cases with different combinations of abundance and diversity. It is possible that abundance is all that matters and diversity is irelevant.

Now, does anyone have a set of cases we could look at, to test the propositions outlined above?

Postscript: There are echoes of evolutionary theory in this proposal. Species that are large in number and widely dispersed, across many different habitats, tend to have better long term survival prospects in the face of changing climates and the co-evolution of competitors


No comments:

Post a Comment