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Dimitri Lozeve 2020-04-10 18:18:16 +02:00
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@ -20,6 +20,22 @@ scientist" standpoint.
* Why is it hard to approach?
Operations research can be difficult to approach, since there are many
references and subfields. Compared to machine learning for instance,
OR has a slightly longer history (going back to the 17th century, for
example with Monge and the optimal transport problem). This means that
good textbooks and such have existed for a long time, but also that
there will be plenty of material to choose from.
Moreover, OR is very close to applications. Sometimes methods may vary
a lot in their presentation depending on whether they're applied to
train tracks, sudoku, or travelling salesmen. In practice, the
terminology and notations are not the same everywhere. This is
disconcerting if you are used to mathematics, where notations evolved
over a long time and is pretty much standardised for many areas. In
contrast, if you're used to the statistics literature with its [[https://lingpipe-blog.com/2009/10/13/whats-wrong-with-probability-notation/][strange
notations]], you will find that OR is actually very well formalised.
- why it may be more difficult to approach than other, more recent
areas like ML and DL
- slightly longer history