|
Meta-cognitive Analysis: An alternative to Literature Reviews and Meta-analysis for the Sciences and the Arts Introduction: The authors will introduce a new
method of analysis that combines qualitative and quantitative methods to help
researchers analyze data when they do not have national random samples. Review: Glass notes in his”Meta-analysis
at 25” that he could not believe the success that his statistical method had
and the number of entries on the Internet that use Meta-analysis. (Glass.ed.asu.edu/gene/papers/meta25.html)
His original idea was to question Eysinck’s literature review on psychotherapy.
Glass had found inner peace with therapy and Eysinck’s indicated the whole talk
therapy issue a fraud or a placebo. Glass reviewed the same studies and others
and aggregated the numbers in the direction of successful outcomes and those
that found no difference. To control for bias due to larger numbers in some
samples as opposed to others, he was able to homogenize the data by using
measures of central tendency over variance. Thus means were compared with the
two groups and were divided by the means of the standard deviations or in
academic jargon, he randomize the data and used a " t" or
"f" test (depending on the number of studies.) The whole procedure was incredible
success. As most researchers know, purposive samples are often drawn because
the researcher cannot afford to sample the entire nation. Corporations and political parties
can do so, but individual researchers do not have that kind of money. Thus,
samples are drawn from available samples (purposive sampling) and are not
random. Non-random samples are used both in experimental and control with
matching demographics and a goodness of fit test is used to ascertain if there
is a difference at the .05 level of confidence. Another strategy uses a large
purposive sample and cross sectional design of
analyzing the “with- in difference” between two demographics or psychographics.
Both assume “as if” there is a large randomized national population. A third
strategy is to draw a random sample from a school, city, or target area and
assume “as if” it is a large randomized national sample. All the examples
listed above are flawed, but very useful. Glass takes this a step further by
aggregating ALL studies and uses significance testing for differences or lack
thereof. In other words, he quantified literature reviews. To individuals with
little monies, one can contact the reference librarian and get over time a
number of studies on a particular topic, quantify them, run a significance
test, and publish the findings. In 25 years, Glass notes how much the strategy
has been used. Further incarnations by others
have used statistical manipulations to further randomize the data and some have
stratified it by using only the best studies and those with the most
transparent findings that can be manipulated. (Ibid.) Thus, where original
studies had double-digit samples, Meta analysis could provide thousands of
individuals. + Further, various controls, different stimuli, various measures
of outcomes were leveled into a single set of numbers to analyze by a “t” test.
Last, all studies that may have had nominal or ordinal qualities were treated
as interval or ratio data and hard number theory was assumed. Meta-analysis
gave individual researchers with little or no grant money a chance to compete
with large research institutions. Glass defended his method with
exuberance, but did admit that Meta-analysis was not as robust as a large
national random sample. He indicated, “Moreover, the typical meta-analysis
virtually never meets the condition of probabilistic sampling of a population.”
(Ibid.) To make this clearer to some, in a national presidential election
Met-analysis would take all the candidates primary wins and losses, aggregate
and randomize them and predict the winner. On the other hand, the two major
political parties would have a large random sample that would keep interviewing
and continuously sample up to Election Day. In other words, Meta-analysis is
now a legitimate tool in research analysis but is not superior or equivalent to
a national random sample. There is numerous criticism of
Met-analysis that deal with the lack of randomness, the leveling of research
procedures, and related issues. This is where we would like to introduce a new
research strategy that may be applicable to the sciences, soft sciences and the
arts. Our position prior to this presentation is that randomize samples take
precedence over Met-analysis and if the researcher wants to use Met-analysis, we
support that alternative. However, if the academician is uneasy with
Met-analysis, we suggest a less robust, but more defensible method. We call it
Meta-cognitive analysis. It is another strategy that quantifies literature
reviews. Methodology: Meta-cognitive analysis recognizes
that in the literature review on a particular topic, 1. Numerous samples of
varying randomness will be used, 2. Various research designs will be
maintained, 3. Different statistical tests will be used, 4. Outcomes will be
reported differently. However, the results will be cognitively assessed as in
content analysis. In our procedure, we first look to
see if there is any particular bias or prejudice. If so, we stratify and leave
them out. Second, if a study is methodologically flawed but some how gets
published, we do not include the study. Third, some studies have no difference
in their findings and our published in less prestigious journals, we most
surely want to report those findings. Thus step 1 is to use that which
is to the best of our knowledge are legitimate defensible studies. Step 2, we
look cognitively at the outcomes rather than in meta-analysis the numbers.
Thus, if there are differences we place them in one cell (the upper left hand)
of a 2 x 2 table. Step 3, if no differences are discovered, placed in the upper
right hand corner. In step 4, all the studies from literature review are added
and divided by two. As examples, if there are 40
studies, the bottom left hand cell will have 20 and the bottom right will have
20. The bottom 2 cells represent chance (based on simple probability, not
sequential probability.) Let’s take a placebo study, an
antidepressant that is given to one group with similar demographics and
psychographics and a placebo is given to a like group. The first upper two
cells indicate that when antidepressants are used, 30 studies indicate that the
medication works “better” than the placebo. In the upper right hand corner, 10
studies indicate that there were no differences between the antidepressant and
the placebo. The bottom two cells contain half
of the total. Thus, 20 goes in the bottom left hand and 20 go in the bottom
right hand. Do not use percentages or relative numbers. If any cell has less
then 5, we will use Fischer’s correction as we are going to use Chi-square test
of significance. Chi-square is essentially a
nominal test. Thus, nuances and discretion afforded by more robust, hard number
oriented analysis used in Meta-analysis is lost. On the other hand, the
leveling and homogenizing of data that is suspect to some researchers who
question Meta analysis is not a salient
issue in our method. In our example, when we are
comparing the efficacy of a particular antidepressant, we calculate by using a
Chi-square formula found in any elementary statistics books. It is X2= sum (observed- expected)
squared/ expected. In this instance, the
antidepressant is “better” than the placebo. How much “better” and to how many
people? We don’t claim to know. That is the genius of this strategy. It is a
quantifiable process with strongly qualitative aspects. It is a very humbling
procedure and can compliment a qualitative interpretation of a literature
review. Further, we are not opposed to using strictly soft numbers and
reporting that 30 studies found a difference in the direction of the
antidepressant and 10 found no difference. The Arts and Humanities Let’s now move to the arts and
humanities, using the same 40 cases indicated above. Let’s assume that 30 scholars see
the beginning of the civil war (on balance) as an economic struggle between the
agrarian south and the industrial north. On the other hand, 10 scholars see the civil war as a
struggle on balance over the issue of slavery. We then conduct the same
identical test. 30 in the upper left hand as an economic struggle and 10 a
slavery issue. The bottoms 2 both have 20 each. We then calculate Chi-square.
Historians will be the first to note that the civil war was about something
else or there is a mix of issues. We agree. That is why a qualitative analysis
or literature review must come first. Further, Chi –square can provide a 3 x 2
table for other or mixed results. However, unlike meta-analysis, the nuances of
history are described previous to the significance testing. And, it is done in
a qualitative way through the use of words rather than numbers. For the arts, a particular piece
of poetry, art, or literature is first reviewed in terms of shadings and
nuances of various experts or jury referees. Their findings are described in
qualitative ways. All the virtues of the arts are on display. The panel judges
the interplay of idiocincracies that make one piece of art qualitatively
different and perhaps superior. And, not all panel members are equal.
Chi-square can take that into account, but cannot do so without a doubling of
the weight of a particular panel member. This weighting is very subjective, but
permissible. Thus, a panel reviews a new poem.
30 members find it (on balance) a great work of art; the other 10 find it not
very favorable. The researcher or researchers can make that qualitative
judgment combined with a quantitative analysis. This procedure can also be used
for popular culture. The Physical Sciences The hard physical sciences may
need this the least, but it is still usable. In the literature review a
particular topic is analyzed, a hard physical science researcher without the
benefit of a lab and considerable money to run it may find meta-cognitive
analysis useful by aggregating the literature review in terms of differences
versus no difference. Thus, the researcher may find a publishable article and a
new insight into physical phenomena. Summary and Conclusion The authors have reviewed three
previous strategies to assess viability of a finding in the natural world. The
first is a literature review, the second is meta-analysis, and the third is to
draw a random national sample and test a hypothesis. We suggest a fourth
strategy. We call it Meta-cognitive analysis. It may be equivalent to
literature review and meta-analysis, but inferior to random sampling/hypothesis
testing. Our strategy is to quantify literature reviews in a more
humble, but more defensible way. We collapse literature reviews into difference
versus no differences, or favorable/other than favorable responses. We then
test this relative to chance with a chi-square test and assume “as if” we have
a random national sample. Meta-cognitive analysis may apply
to the arts and humanities, social sciences, and the hard physical sciences. In
terms of findings, the strategy levels the playing field for those without
large grant money and research teams to gather original data and test
hypothesis. We believe our strategy is less robust than original sampling, but
may be equivalent to literature reviews and meta-analysis in terms of defining
a problem and is superior to Meta-analysis in that we do not level strategies,
numbers, and classifications and related. References Cited: Glass.ed.asu.edu/gene/papers/meta25.html +See 2,318 patients were
aggregated from 19 studies in Kirsch, Irving (1998) “Listening to Prozac but
Hearing Placebo: A Meta-Analysis of Antidepressant Medications” PREVENTION AND TREATMENT, Vol. 1,
Article 2. See also the rejoinder in Buetler, Larry (1998)“Prozac and
Placebo: There is a Pony in There Somewhere” PREVENTION AND TREATMENT, Vol. 1,
Article 3. See also, an excellent commentary
on the politicization of studies and samples used by pharmaceutical companies
to get the results that the corporations prefer. Raeburn, Paul (2002) “Not Enough Patients? Don’t
do the Study” BUSINESS WEEK, October, 20th, pp.143-144. |
| Home | Essays | Small Talk | Books | About Joel Snell | Publications | Links |