Lecture 4: Academic Publishing & Refereeing

What makes a great empirical paper · publication process · how to write a referee report

Prof. Dr. Andre Guettler
Prof. Dr. Andre Guettler Director of the Institute
Helmholtzstraße 22, Room 205
andre.guettler@uni-ulm.de
+49 731 50 31 030
Oliver Padmaperuma
Oliver Padmaperuma Doctoral Candidate
Helmholtzstraße 22, Room 203
oliver.padmaperuma@uni-ulm.de
+49 731 50 31 036

4.1 Course objectives

  • 4.1 Course objectives
  • 4.2 What makes a good empirical paper?
  • 4.3 The publication process
  • 4.4 Referee reports
  • 4.5 Discussion of Assignment II
  • 4.6 Conclusion of Lecture 4
  • Welcome to
  • Course Objective
  • Course at a glance
  • Assignments / Exams

Welcome to Research in Finance

  • Register for “exam” 13337 in campusonline by 30 November 2025. The registration is what binds you to the course requirements; without it you cannot submit. If you are registered but don’t submit, you receive a fail grade (5.0).
  • Ask questions during or right after each session — that is the preferred channel.
  • Admin / studies / exam-eligibility questions go to the registrar’s office (Studiensekretariat) at studiensekretariat@uni-ulm.de.
  • Course-content questions outside class: email oliver.padmaperuma@uni-ulm.de, CC andre.guettler@uni-ulm.de.
  • We also recommend the student advisory service.

Course Objective

Scope

We will:

  • Prepare Master students for their empirical thesis
  • Hands-on R intro for data management, visualization, cleaning, basic modelling
  • Writing tips for theses, including LaTeX & Overleaf
  • Referee reviews on research presentations for empirical critique skills

We will NOT:

  • Deep dive into advanced stats or ML methods
  • Specific finance topics (asset pricing, etc.)
  • Full thesis writing / research design training

Approach

Part I — Learn the Basics

  • Hands-on R intro: a widely used language for statistical computing
  • Manage, visualize and clean data; run and interpret statistical models
  • Solve a real empirical problem set in R, in groups

Part II — Apply your learnings

  • Mandatory participation in the institute’s Brown Bag Seminar
  • Two assignments (group work and individual referee report) — see Assignments / Exams

Course at a glance

Basics

Week 1

29.10.2025

Course objectives, schedule, assignments · Introduction to R · Live coding

  • Course objectives, schedule and assignments
  • Introduction to R and RStudio
  • Live coding: variables, vectors, matrices, data frames, lists, functions, loops
  • Data import and export

Data Handling & Visualization

Week 2

05.11.2025

API access, merging, cleansing, transforming and visualising financial data in R · Introduction to Overleaf

  • API access (Nasdaq Data Link / Quandl, FRED, Yahoo, Coingecko, Polygon)
  • Import and cleanse: read_csv, mutate, types
  • Merge and append data (merge, bind_rows)
  • Filter and mutate (dplyr): subset rows, derive variables
  • Group by and summarise
  • Pivot wide / long
  • Data visualization with ggplot2 (six-step pipeline)
  • Introduction to LaTeX and Overleaf

Statistical Analysis

Week 3

12.11.2025

Descriptive · inferential · modelling — applied in R

  • Descriptive statistics in R
  • Correlation matrix and Pearson correlation test
  • t-Test and Wilcoxon test
  • Shapiro-Wilk and Kolmogorov-Smirnov tests
  • Linear regression with fixed effects
  • Clustered standard errors
  • Exporting regression tables with stargazer
  • Discussion of Assignment I (Problem Set)

Academic Publishing & Refereeing

Week 4

19.11.2025

What makes a great empirical paper · publication process · how to write a referee report

  • What makes a good empirical paper (contribution, identification, write-up)
  • The publication process step by step
  • Top finance and economics journals
  • Bad outcome vs revise & resubmit
  • Referee Reports — summary, major issues, minor issues
  • Referee checklist (question, identification, data, econometrics, results)
  • Discussion of Assignment II (Referee Report)

Brown Bag Seminar

Week 13

20.01.2026

Engage with doctoral research and prepare your referee report

  • Doctoral research presentations
  • Apply empirical / writing tips for the referee report
  • Group discussion and Q&A

Assignments / Exams

Assignment I — Problem Set 50% of your grade

Documented .R script + PDF write-up (Overleaf)

Group of up to 5.

Submit by emailing oliver.padmaperuma@uni-ulm.de, CC andre.guettler@uni-ulm.de. Subject pattern: Research in Finance_assignment-1-problem-set_surname1_surname2_…

19 January 2026

2.5–3 page referee report on a Brown-Bag presentation

Group of up to 5.

Submit by emailing oliver.padmaperuma@uni-ulm.de, CC andre.guettler@uni-ulm.de. Subject pattern: Research in Finance_assignment-2-referee-report_surname1_surname2_…

3 February 2026

4.2 What makes a good empirical paper?

  • 4.1 Course objectives
  • 4.2 What makes a good empirical paper?
  • 4.3 The publication process
  • 4.4 Referee reports
  • 4.5 Discussion of Assignment II
  • 4.6 Conclusion of Lecture 4
  • Three factors
  • 1. Contribution (I) — common rejection reasons
  • 1. Contribution (II) — sources of good ideas
  • 1. Contribution (III) — timing
  • 1. Contribution (IV) — data
  • 2. Identification
  • 3. Write-up

Three factors

  1. Contribution
  2. Identification
  3. Write-up

Two facts to internalise

  • Journal space is very scarce and many great papers compete for it.
  • Solid identification and write-up are necessary but not sufficient for a top publication.

1. Contribution (I) — common rejection reasons

Often, submissions get rejected because:

  • Low incremental contribution.
  • Overly narrow contribution.
  • Results are not very surprising.
  • Results have unclear importance.

Recommendation

Some Reflections on Contribution (Rynes) — available on the course Moodle.

1. Contribution (II) — sources of good ideas

  • Activity — frequent interactions with industry experts and academic colleagues are related to the beginning of great research ideas.
  • Intuition — often a feeling of excitement rather than logical analysis leads to important research leads.
  • Theory — new pieces of theory or puzzles point towards something that is still poorly understood.
  • Real world — research problems often have an applied flavour, tackling current real-world issues.

1. Contribution (III) — timing

  • Contribution of topics varies over time.
  • Example: banking topics were “hot” during the financial crisis with many insolvent banks and huge public rescue plans.
  • But: many researchers jump on these hot topics! By the time you finish, the wave has crested.

1. Contribution (IV) — data

  • New data sets enable new research questions.
  • New data sets allow new identification strategies.
  • New (and usually larger) data sets allow better inference.

2. Identification

  • Top publications require very robust identification.
  • Don’t confuse correlation with causality.
  • Read state-of-the-art empirical papers.
  • Be as close to a randomized experiment as possible.

Recommendation

Mostly Harmless Econometrics: An Empiricist’s Companion (Angrist and Pischke 2009).

3. Write-up

  • Awesome: you put together a set of results!
  • The write-up should be at least as important as the econometrics.
  • Be prepared to rewrite the paper many times.
  • Title / Abstract / Introduction are the most important parts.

Recommendation

Writing Tips for Ph.D. Students (Cochrane 2005) — available on the course Moodle.

4.3 The publication process

  • 4.1 Course objectives
  • 4.2 What makes a good empirical paper?
  • 4.3 The publication process
  • 4.4 Referee reports
  • 4.5 Discussion of Assignment II
  • 4.6 Conclusion of Lecture 4
  • Be patient — but learn now
  • Step 1 — find the question
  • Step 2 — write a research proposal
  • Step 3 — find coauthors
  • Step 4 — discuss the proposal
  • Step 5 — collect data
  • Step 6 — empirical analysis
  • Step 7 — first working paper
  • Step 8 — present and revise
  • Step 9 — submit to conferences
  • Step 10 — choose the right journal
  • Top finance journals
  • Top econ journals (Handelsblatt ranking)
  • Top 10 journals — Eigenfactor Scores
  • Bad outcome — rejection
  • Good outcome (I) — Revise & Resubmit
  • Good outcome (II) — write the response
  • Good outcome (III) — disagreements
  • Acceptance

Be patient — but learn now

You have to learn to be patient. — Learn? I want to be patient now!

Anonymous PhD student

Step 1 — find the question

  • What are you really interested in?
  • You need to be very (!) interested in the topic — you’ll invest a lot of time in it over the next years.
  • Read relevant and current literature.
  • Nail down a specific contribution to the existing literature.
  • Concentrate on one central research question.

Step 2 — write a research proposal

  • Compose a one-page write-up = research proposal.
  • Concentrate on the first two main factors that make a good paper:
    1. Contribution
    2. Identification
  • Is it feasible (do you have access to specific data, etc.)?

Step 3 — find coauthors

  • Think about suitable coauthors.
  • The coauthor may be your supervisor(s).
  • Look for other suitable coauthors, especially if your supervisor isn’t close to your research topic:
    • Attend conferences and connect to people in your area.
    • Attend seminar series and ask intelligent questions.
    • Visit good universities.
  • Send your proposal to suitable researchers via email for feedback.
    • If you get a detailed and nice answer, ask whether they want to work with you.
    • It is always better to know them personally.
    • Risk of being copied!

Step 4 — discuss the proposal

  • Discuss your research proposal with supervisors and other suitable people (fellow students, industry experts).
  • Two outcomes:
    • Great response — adjust proposal and move forward.
    • Not good enough — either adjust thoroughly or stop the project.
  • This early you can still stop the project without too much time lost.
  • The higher your goals, the stricter you need to be on what projects you undertake.

Step 5 — collect data

  • Collect.
  • Structure.
  • Clean — distributional graphs (outliers?), missing data.
  • Descriptive analysis (univariate statistics).

Step 6 — empirical analysis

  • Run empirical analyses according to identification strategy.
  • Conduct robustness checks.
  • Put together results according to your proposal’s story line.
  • Discuss results with supervisor and others.
  • You need very original (even surprising) and robust results for a top publication (less important for a working-paper version for the dissertation).

Step 7 — first working paper

  • Write down first working paper version.
  • Get feedback from supervisor and others.
  • It’s a tough world: you’ll realise that few people, if any at all, read your paper.
  • Offer to read others’ papers — and you’ll know more people who read yours.

Step 8 — present and revise

  • Present the paper (at internal brown bag seminar).
  • Adjust paper.
  • Yes, you need to invest a lot of time revising!
  • Invest some money for professional editing — most of us aren’t native English speakers.

Step 9 — submit to conferences

  • Submit paper to good finance conferences.
  • Good signal to have paper accepted at top finance conferences (WFA, AFA, EFA, FIRS) since people know it
    • for international job market (ASSA);
    • for later publication at top journals.
  • Time-consuming because conferences take place many months after the submission deadline.

Step 10 — choose the right journal

  • Which journal fits your paper?
  • Which journals do you cite? Most relevant publications signal a suitable journal.
  • Try to aim higher than expected at the beginning. Top-5 finance journals usually need ≤ 3 months for first-round decisions; econ journals often longer.
  • Strategic citations: who are likely referees? Don’t miss citing papers from authors at target journals; check typos in author names.

Top finance journals

  • Journal of Finance
  • Review of Financial Studies
  • Journal of Financial Economics
  • Review of Finance
  • Journal of Financial and Quantitative Analysis
  • Management Science
  • Journal of Banking and Finance
  • Journal of Financial Intermediation
  • Journal of Money, Credit and Banking
  • Journal of Empirical Finance
  • Journal of Financial Services Research

Caveats

  • The B list is not comprehensive — those listed are most relevant for Banking, Financial Intermediation, and general Finance.
  • Country-specific differences in journal perception.
  • Steady increase of new journals — including very good ones (e.g., RFS sub-journals for corporate finance and asset pricing) but mostly journals that are not read.
  • Open-source journals can be a good alternative (faster, cheaper) but often not in rankings.

Top econ journals (Handelsblatt ranking)

  • American Economic Review
  • Econometrica
  • Journal of Political Economy
  • Quarterly Journal of Economics
  • Review of Economic Studies
  • Bell Journal of Economics
  • Econometric Theory
  • European Economic Review
  • Games and Economic Behavior
  • International Economic Review
  • Journal of Business and Economic Statistics
  • Journal of Econometrics
  • Journal of Economic Theory
  • Journal of Finance
  • Journal of International Economics
  • Journal of Labor Economics
  • Journal of Monetary Economics
  • Journal of Public Economics
  • Journal of the American Statistical Association
  • Journal of the European Economic Association
  • Rand Journal of Economics
  • Review of Economics and Statistics

Top 10 journals — Eigenfactor Scores

Journal Eigenfactor
American Economic Review 0.1014
Journal of Finance 0.0614
Journal of Financial Economics 0.0534
Quarterly Journal of Economics 0.0476
Review of Financial Studies 0.0475
Econometrica 0.0461
Journal of Econometrics 0.0377
Journal of Political Economy 0.0364
Review of Economic Studies 0.0328
Review of Economics and Statistics 0.0289

Source: JCR, Year and Edition: 2010 Social Science.

Bad outcome — rejection

  • Your paper is rejected.
  • Don’t be upset and don’t take it personal!
  • Rejection rates are very high at top journals.
  • The average top paper collects several rejections as well!
  • Try to identify suggestions that are feasible and justified, do additional analyses, rewrite, submit to the next suitable journal.
  • Nice editors might recommend a suitable journal.
  • Sometimes you get a crappy report that is not helpful at all — just submit to the next journal.

Good outcome (I) — Revise & Resubmit

  • Your paper received a revise & resubmit.
  • Congratulations! You made it into the next round.
  • Strategy: address as many of the referees’ suggestions as possible.
  • These guys are the gatekeepers!
  • Do the additional tests and pray that your main results hold!

Good outcome (II) — write the response

  • Rewrite your paper and put together a response to the referee(s).
  • Copy their comments into the response.
  • Add your response after each issue.
  • Link to new tables in the paper.
  • Most often you cannot put all the new results into the paper.
  • Put these tables into the report to the referee(s) — referees like you being explicit and transparent about new results!

Good outcome (III) — disagreements

  • A major R&R can be as time-consuming as writing the first version.
  • You may not always agree with some of the referee’s suggestions.
  • You should still try to address them in a polite way.
  • It can be risky to argue with a referee.
  • If the editor highlights some issues: put extra effort into addressing them. At the end, the editor decides which paper gets published!

Acceptance

  • After acceptance, the journal requests the Word/TeX files and original files for graphs.
  • You’ll get a proof that needs to be cross-checked.
  • Usually your paper appears online at the journal’s website before the print publication (you can cite by journal name & forthcoming).
  • If you don’t receive the proof or don’t see your paper online soon after returning the proof — write the journal and ask what is going on!
  • Often you also need to provide your code and data.

4.4 Referee reports

  • 4.1 Course objectives
  • 4.2 What makes a good empirical paper?
  • 4.3 The publication process
  • 4.4 Referee reports
  • 4.5 Discussion of Assignment II
  • 4.6 Conclusion of Lecture 4
  • How to assess whether a paper is good or bad
  • Referee report — 1. Summary
  • Referee report — 2. Major issues (I)
  • Referee report — 2. Major issues (II)
  • Referee report — 2. Major issues (III)
  • Referee report — 3. Minor issues
  • Referee checklist (I) — the question & identification
  • Referee checklist (II) — the data
  • Referee checklist (III) — econometric analysis
  • Referee checklist (IV) — results & conclusion

How to assess whether a paper is good or bad

The structure of a referee report:

  1. Summary
  2. Major issues
  3. Minor issues

Referee report — 1. Summary

Write a short summary of the paper using your own words:

  • What is the question asked by the author?
  • What is the identification strategy?
  • What data is used?
  • How is the hypothesis formulated and tested?
  • What are the results?

The purpose of this section is to summarise the paper for the editor in a way that lets him understand the essence of the paper and its contribution, without having to read it.

Referee report — 2. Major issues (I)

  • Take 3 or 4 major negative (or positive) points that you have on the paper, one at a time.
  • To do this, check carefully: the question, the theory/model, the link to the empirical analysis, the presentation of the data, the econometric analysis, and the results.
  • Below is a checklist of the kinds of questions you should ask yourself.

Referee report — 2. Major issues (II)

  • For a positive point, argue why the question is particularly important, the approach novel, the techniques new, the identification strategy innovative, the data unusual, etc.
  • For a negative point, you are often looking for lack of correspondence between:
    • the idea and the model,
    • the model and the empiricism,
    • the empirical strategy and the conclusion.

Referee report — 2. Major issues (III)

  • Another argument for rejecting a paper is when the paper has nothing wrong but is boring and not new in any way. If this is one of your points, refer to other works to show why this is all well known and already done.
  • Your main job:
    • Find the most related papers and check whether the paper you assess is better / worse than the existing literature.
    • Often, there are only a few very related papers.

Referee report — 3. Minor issues

Usually, if you have major criticisms about a paper that lead you to recommend rejection, you don’t even need to do a section on less important issues.

However, hopefully the papers you’ll be reading are not so bad — and you may have some less important though useful suggestions to improve the paper.

Referee checklist (I) — the question & identification

  • Is the topic clearly explained? Could the question be made more precise?
  • Does the author do a good job of motivating the question in the introduction?
  • Is the answer to the question obvious in advance?
  • Is the question original? What is the contribution of the paper? Does the author pose a question of reasonable scope?
  • Is the identification strategy clearly explained, including the source of variation (e.g., fixed effects, instruments)?
  • Does the author address endogeneity concerns (reverse causality, omitted variables)?
  • Are assumptions about error terms justified (uncorrelated with regressors)?
  • Is the strategy robust to alternatives (different controls, specifications)?
  • Does it convincingly identify causal effects rather than mere correlations?

Referee checklist (II) — the data

  • Does the author present a clear description of the data?
  • Does the author’s choice of dataset seem well-suited to answering the question?
  • If you had to replicate the author’s study five years from now, is there sufficient information about the source of the data and the sample used?
  • Does the author discuss issues that may affect the estimation strategy: random sample? known sources of measurement error? cross-sectional dependence in panels?
  • Does the author present summary statistics, and make good use of them to motivate the question or specific aspects of the analysis?

Referee checklist (III) — econometric analysis

  • Are the econometric techniques well-suited to the problem at hand?
  • What are the properties of the estimators employed? Are issues regarding these properties adequately addressed?
  • Is the econometric analysis carefully done and reported?
  • Have alternative specifications been tried and compared, when necessary?
  • Is the issue of robustness of the results addressed?
  • What test statistics does the author employ? Do they answer the question?

Referee checklist (IV) — results & conclusion

  • Are the results clearly stated and presented?
  • Are they used in some interesting way (beyond quoting the value of the parameters and their standard errors)?
  • Are the results related back to the question?
  • Are appropriate caveats mentioned?
  • Do the conclusions concisely summarise the main points of the paper?
  • Are the conclusions well-supported by the evidence?
  • Are you convinced? What did you learn from this paper?

4.5 Discussion of Assignment II

  • 4.1 Course objectives
  • 4.2 What makes a good empirical paper?
  • 4.3 The publication process
  • 4.4 Referee reports
  • 4.5 Discussion of Assignment II
  • 4.6 Conclusion of Lecture 4
  • Assignment II — Create a referee report

Assignment II — Create a referee report

  • Attend the mandatory Brown Bag Seminar on 20 January 2026 (13:30–16:00) and select one doctoral presentation to critique, applying the writing, publishing, and refereeing tips from the course to practice thesis-level analysis.

You must submit ONLY one file:

  • One 2.5–3 page report in academic referee style, focusing on the presentation’s contribution to the literature and your judgment of its empirical strategy.
  • Key tasks: summarise the presentation’s main ideas; evaluate novelty vs existing literature; assess empirical methods (identification, robustness); discuss implications, strengths, weaknesses, limitations, and improvements.
  • Work in teams of up to 5 students.
  • You’ll receive the PDF of the presentation and the working paper. Sometimes there is no working paper available; in that case base your report solely on the presentation.
  • Grading: this report accounts for 50% of your grade — depth of analysis (contribution and empirical aspects), writing quality (concise, organised, skim-friendly), and originality of insights.
  • Deadline: Submit your review as a PDF via email to oliver.padmaperuma@uni-ulm.de, with andre.guettler@uni-ulm.de in CC by 3 February 2026, including your name and the title of the chosen presentation in the document.
  • 11 pt Times New Roman, 1.5 spaced.

4.6 Conclusion of Lecture 4

  • 4.1 Course objectives
  • 4.2 What makes a good empirical paper?
  • 4.3 The publication process
  • 4.4 Referee reports
  • 4.5 Discussion of Assignment II
  • 4.6 Conclusion of Lecture 4
  • Course at a glance
  • Further reading
  • Prepare before next lecture
  • See you at the Brown Bag Seminar
  • References

Course at a glance

Basics

Week 1

29.10.2025

Course objectives, schedule, assignments · Introduction to R · Live coding

  • Course objectives, schedule and assignments
  • Introduction to R and RStudio
  • Live coding: variables, vectors, matrices, data frames, lists, functions, loops
  • Data import and export

Data Handling & Visualization

Week 2

05.11.2025

API access, merging, cleansing, transforming and visualising financial data in R · Introduction to Overleaf

  • API access (Nasdaq Data Link / Quandl, FRED, Yahoo, Coingecko, Polygon)
  • Import and cleanse: read_csv, mutate, types
  • Merge and append data (merge, bind_rows)
  • Filter and mutate (dplyr): subset rows, derive variables
  • Group by and summarise
  • Pivot wide / long
  • Data visualization with ggplot2 (six-step pipeline)
  • Introduction to LaTeX and Overleaf

Statistical Analysis

Week 3

12.11.2025

Descriptive · inferential · modelling — applied in R

  • Descriptive statistics in R
  • Correlation matrix and Pearson correlation test
  • t-Test and Wilcoxon test
  • Shapiro-Wilk and Kolmogorov-Smirnov tests
  • Linear regression with fixed effects
  • Clustered standard errors
  • Exporting regression tables with stargazer
  • Discussion of Assignment I (Problem Set)

Academic Publishing & Refereeing

Week 4

19.11.2025

What makes a great empirical paper · publication process · how to write a referee report

  • What makes a good empirical paper (contribution, identification, write-up)
  • The publication process step by step
  • Top finance and economics journals
  • Bad outcome vs revise & resubmit
  • Referee Reports — summary, major issues, minor issues
  • Referee checklist (question, identification, data, econometrics, results)
  • Discussion of Assignment II (Referee Report)

Brown Bag Seminar

Week 13

20.01.2026

Engage with doctoral research and prepare your referee report

  • Doctoral research presentations
  • Apply empirical / writing tips for the referee report
  • Group discussion and Q&A

Further reading

  • Angrist and Pischke (2009)Mostly Harmless Econometrics — the canonical reference on identification.
  • Cochrane (2005)Writing Tips for Ph.D. Students — short, opinionated, indispensable.
  • Rynes, Some Reflections on Contribution — on the course Moodle.

Prepare before next lecture

  1. Skim the working papers posted to Moodle for the Brown Bag Seminar.
  2. Re-read the four-checklist sections in this lecture before the seminar.
  3. Form your team of up to 5 if you haven’t already.

See you at the Brown Bag Seminar

Reminder

  • Brown Bag Seminar — 20 January 2026, 13:30–16:00.
  • Take careful notes on the presentations.
  • Pick one doctoral talk and apply the four-checklist sections from this lecture.
  • Submit your 2.5–3 page report as a group of up to 5 by 3 February 2026.

References

Angrist, Joshua D., and Jörn-Steffen Pischke. 2009. Mostly Harmless Econometrics: An Empiricist’s Companion. Princeton, NJ: Princeton University Press. https://press.princeton.edu/books/paperback/9780691120355/mostly-harmless-econometrics.
Cochrane, John H. 2005. “Writing Tips for Ph.D. Students.” https://www.johnhcochrane.com/research-all/writing-tips-for-phd-students.
Gropp, Reint, Christian Gruendl, and Andre Guettler. 2014. “The Impact of Public Guarantees on Bank Risk Taking: Evidence from a Natural Experiment.” Review of Finance 18 (2): 457–88. https://doi.org/10.1093/rof/rft014.
Guettler, Andre, Muhammad Naeem, Lars Norden, and Bernardus Van Doornik. 2024. “Pre-Publication Revisions of Bank Financial Statements.” Journal of Financial Intermediation 58: 101073. https://doi.org/10.1016/j.jfi.2024.101073.