1855 — the birth of causal inference

22 Nov, 2019 at 22:14 | Posted in Theory of Science & Methodology | 2 Comments

 

If anything, Snow’s path-breaking research underlines how important it is not to equate science with statistical calculation. All science entail human judgement, and using statistical models doesn’t relieve us of that necessity. Working with misspecified models, the scientific value of statistics is actually zero — even though you’re making valid statistical inferences! Statistical models are no substitutes for doing real science. Or as a German philosopher once famously wrote:

There is no royal road to science, and only those who do not dread the fatiguing climb of its steep paths have a chance of gaining its luminous summits.

We should never forget that the underlying parameters we use when performing statistical tests are model constructions. And if the model is wrong, the value of our calculations is nil. As ‘shoe-leather researcher’ David Freedman wrote in Statistical Models and Causal Inference:

I believe model validation to be a central issue. Of course, many of my colleagues will be found to disagree. For them, fitting models to data, computing standard errors, and performing significance tests is “informative,” even though the basic statistical assumptions (linearity, independence of errors, etc.) cannot be validated. This position seems indefensible, nor are the consequences trivial. Perhaps it is time to reconsider.

2 Comments

  1. How did Jains know about microbes thousands of years ago? Introspection, keen observation, meditation?

  2. As a pedant, I feel that Marx was not just a German philosopher, if his words and life meant anything significant then surely they transcended state boundaries and nationalism? For A.J.P. Taylor, Marx fused English economics, French politics and German philosophy- but it is perhaps worth mentioning that Marx liked European literature too.


Sorry, the comment form is closed at this time.

Blog at WordPress.com.
Entries and Comments feeds.