planning for research success: three paragraphs, five boxes, and power (or “if all else fails, try...
TRANSCRIPT
Planning for Research Success: Three paragraphs, Five Boxes, and Power
(or “If all else fails, try concepts and theory”)
August 2, 2014
William R. Kinney, Jr. The PhD Project - ADSA
Atlanta, Georgia
Outline• Background and X, Y, V, and Z - for planning • The scholarly researcher’s problem
• Using 3 paragraphs and 5 boxes to address threats to research validity (Runkle and
McGrath meet Cook and Campbell plus Kinney and Libby)
• Hints on how to get your paper published in a top-tier scholarly journal
Ask yourself (then tell the reader):
1. What am I trying to “find out?”(usually does X cause Y to vary)
2. Why is it important to “find out?”
3. How do I plan to “find out?” (method, data, analysis)
The Three Paragraphs:
(One page, double-spaced, 12 pt. font, normal margins, and include an informative title!)
1. Background and framework
Nothing you don’t know or couldn’t figure out with slight effort.
• “Facts” are real world observables. • “Problems” are facts or relationships between
facts that you don’t like or understand. • “Theories” are ideas about causal relationships
between facts (or what causes the problem “facts”)• “Hypotheses” are predictions of real world
observables that should occur if your theory is descriptive of the real world.
Getting startedSuppose that you have an idea (a problem): you observe
undesirable “facts” or peculiar “facts” or claims• What research barriers must be overcome:
– Availability of: Causal theories (or basis for prediction)?Data?Estimation methods?
– Research design (how to combine the above)?– Exposition (if you can’t explain it, you fail)?
• Who will want to read your paper (and why)?• What is your comparative advantage?
Hint: “One gets the biggest potatoes on the first pass through the field” (Irish agricultural economics principle per Frank O’Connor, University of Iowa)
Accounting research domain
Laws, regs, governanceContracts/ incentivesProfessional standardsFirm organization, moresExternal enforcementCulture, markets, traditions
Accounting Auditing
Professional structure
KPS
Predictions from:
• Abstract causal theories: economics, politics, regulation, information, finance, behavior, management strategy, organizations
• Authorities’ prescriptions/assertions: Congress, SEC, PCAOB, EC, NYSE
• Assertions of interest groups: AICPA, IAASB, US CC, IIA, IAG, AEI, audit firms
• No theories: no one knows the “facts”
(in order of scholarly desirability)
Y = f ( X, Vs, Zs )
Y = phenomenon to be explained
X = your (new) theory about a cause of Y
Vs = prior causes of Y
Zs = contemporaneous causes of Y
A Framework
How does X (treatment) get there? Experiments vs. Archival studies
{V-3, V -2, V -1 } Y1
X0
Z0
?
Random assignment or independent of V vs. Self selection or V(s) determine X
2. Scholarly Researcher’s Problem:
= risk that data incorrectly “accepts” new theory
= risk that data incorrectly “rejects” new theory = true size of X effect on Y
= residual variation in Y given research design (i.e., after effects of Vs and Zs)
n = available sample size
All five are related through a single, simple formula
Researcher’s Design Problem
is fixed at .05 or .10 by journal editors
is the researcher’s risk of failing (you want to minimize )
= f ( X : Y relation) = f ( Vs, Zs)
n is semi-fixed by data availability or cost
= f ( n ) - - + -
**
3 paragraphs/ 5 boxes
Graphically . . . (small d, large s b
yikes!)
_Y| H0, n, s
0 Y
Accept H0 Reject H0
a
d
_Y| HA, n, s
bb
3. Facilitating research using 3 paragraphs and 5 boxes
• Three paragraphs (common sense – or Kinney)
• Five boxes (predictive validity – or Libby)
• Use both to help you do your own work, anticipate comments of others, quickly evaluate work of others
• An example
Analyze Threats to Validity using Predictive Validity Boxes
5
Control Other potentially influential variables Vs and Zs
4
2 3
Operational X
Operational Y
Operational
Theoretical X (X )
Theoretical Y (Y)
Conceptual1
Independent Dependent
If all elsefails . . .
Empirically, it is believable that X
causes Y if:
• X and Y are correlated• Vs and Zs ruled out by design, including
– Y causes X– X and Y caused by an omitted V or Z
• Reason to believe that operational X and Y measure X and Y
• Reason to believe that X : Y relation generalizes to other persons, times, and settings.
Validity:StatisticalConclusion (5)
Internal (4)
Construct (2 and 3)
External (1)
Auditor independence and non-audit services: Was the U.S. government right?
(Kinney, Palmrose, Scholz 2004)
Does an audit firm’s dependence on fees for FISDI, internal audit, and certain other services to an audit client reduce financial reporting quality?
The answer is important because a) the Sarbanes-Oxley Act presumes so, banning such services to audit clients, and b) some registrants now voluntarily restrict tax and other legally permitted services.
Using fee data from 1995-2000 for restating and similar non-restating registrants, we find no consistent association between fees for FISDI or internal audit services with restatements, but find significant positive association between unspecified services fees and restatements and significant negative association between tax services and restatements.
Five boxes for KPS example . . .
Lower quality financial reporting
Auditor dependence on client
1
Non-audit fees Restatement
2 3
5
Industry, size, audit policies, acquisitions, etc.
4
Conceptual
Operational
Control
Independent Dependent
Causal theory vs. Policy using five boxes (causal theory testing)
5
Control Other potentially influential variables Vs and Zs
4
2 3
Operational X
Operational Y
Operational
Theoretical X (X )
Theoretical Y (Y)
Conceptual1
Independent Dependent
+
+
Causal Theory vs. Policy using five boxes (policy testing)
5
Control Other potentially influential variables Vs and Zs
4
2 3
Operational X
Operational Y
Operational
Conceptual New policy Desired behaviors
1
Independent Dependent
0, < 0
+identical Need
Creativity, Theory?
Your main contribution is:
1. New data
2. New estimation
3. New theory (or new problem)
4. Hint one:
Whatever it is, Exploit it!
Broaden your contribution (and reader interest) by:
1. Making your theory elaborate
2. Using multi-methods and multi-measures
3. Generalizing your approach across contexts, disciplines, cultures, and time
Hint Two:
In introducing your paper, tell the reader:
1. What (specific) problem will be addressed(usually expressed conceptually)
2. Why the (specific) problem is important
3. How you address the (specific) problem and what you find
Hint Three:
(One page, double-spaced, 12 pt. font, normal margins, and include an informative title!)
Order of importance of clear and compelling exposition
TitleAbstract
IntroductionConclusions
. . . rest of text
Referees are not (entirely) stoopid –
• Sometimes:– They are right– They are misguided, but you misguided them– They are wrong, but remind you that you were
making a different (and important) point– They are simply wrong and nothing need be done
(extremely rare, in my experience)• Always “attend to” their comments – you will
benefit.
Remember . . .• Plan for research success
– write the three paragraphs before you do the work– minimize b ex ante – maximize validity ex ante
• Make your unique contribution apparent to all• Your present model of the world is simplified – be
alert to revision via new problems, theories, data, and methods (read, take courses, attend seminars in potentially related areas for new theories, monitor data sources, scan for useful research tools)
References• Cook, and D. Campbell, Quasi-experimentation
design & analysis issues for field settings. Houghton Mifflin Co. (New York) 1971 (Validity types).
• Kinney, W., "Empirical Accounting Research Design for Ph.D. Students," The Accounting Review, April 1986 (3 paragraphs and integration).
• Libby, R., Accounting and human information processing: Theory and applications. Prentice-Hall, Inc., (Englewood Cliffs) 1981 (Boxes).
• Runkel, P., and J. McGrath, Research on human behavior – A systematic guide to method. Holt, Rinehart, and Winston, Inc., (New York) 1972 (Boxes).
• Simon, J., and P. Burstein, Basic Research Methods in Social Science (3rd ed.). Random House, (New York) 1985 (Chapter 3 – X, Y, Vs, Zs).
• Ziliak, S., and D. McCloskey, The Cult of Statistical Significance. The University of Michigan Press, (Ann Arbor) 2008 (power).