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Friday, May 31, 2019

Reading Suggestions for June

Well, here we are - it's June already.

Here are my reading suggestions:
© 2019, David E. Giles

Sunday, May 19, 2019

Update on the "Series of Unsurprising Results in Economics"

In June of last year I had a post about a new journal, Series of Unsurprising Results in Economics (SURE).

If you didn't get to read that post, I urge you to do so. 

More importantly, you should definitely take a look at this piece by Kelsey Piper, from a couple of days ago, and titled, "This economics journal only publishes results that are no big deal - Here’s how that might save science".

Kelsey really understands the rationale for SURE, and the important role that it can play in terms of reducing publication bias, and assisting with replicating results.

You can get a feel for what SURE has to offer by checking out this paper  by Nick Huntington-Klein and Andrew Gill that they are publishing.

We'll all be looking forward to more excellent papers like this!

© 2019, David E. Giles

Wednesday, May 1, 2019

May Reading List

Here's a selection of suggested reading for this month:
  • Athey, S. & G. W. Imbens, 2019. Machine learning methods economists should know about. Mimeo.
  • Bhagwat, P. & E. Marchand, 2019. On a proper Bayes but inadmissible estimator. American Statistician, online.
  • Canals, C. & A. Canals, 2019. When is n large enough? Looking for the right sample size to estimate proportions. Journal of Statistical Computation and Simulation, 89, 1887-1898.
  • Cavaliere, G. & A. Rahbek, 2019. A primer on bootstrap testing of hypotheses in time series models: With an application to double autoregressive models. Discussion Paper 19-03, Department of Economics, University of Copenhagen.
  • Chudik, A. & G. Geogiardis, 2019. Estimation of impulse response functions when shocks are observed at a higher frequency than outcome variables. Globalization Institute Working Paper 356, Federal Reserve Bank of Dallas.
  • Reschenhofer, E., 2019. Heteroscedasticity-robust estimation of autocorrelation. Communications in Statistics - Simulation and Computation, 48, 1251-1263.
© 2019, David E. Giles