# whats the difference between machine learning and statistics?

in the Turing lecture 2010 Christopher Bishop talks about machine learning undergoing a revolution because statistics is being applied to machine learning algorithms...

but then its like all machine learning algorithms are all statistical algorithms.. whats the real difference between the two? why are they separate courses in most universities?

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There isn't a great deal of difference between the two, and what there is is mostly cultural. Machine Learning came from Computer Science roots whereas Statistics is more mathematical. There's a nice blog post called "Statistics vs. Machine Learning, fight!" by Brendan O'Connor that talks about this.

As for non-statistical approaches to machine learning, well there are several rule-based approaches (decision trees, rule induction, ILP) and there are also approaches like reinforcement learning for control problems. Those don't feel very statistical to me, but you could claim that they are... you could probably claim all of life falls under statistical decision theory if you wanted to (in fact, Marcus Hutter does).

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Decision trees have a long history in statistics, going back to at least the early 1980s. They have a ready interpretation as probability models: if you fit a tree to data top-down by splitting nodes (equivalently, splitting input space), and you stop splitting when you have <= k points, then record the class frequencies of those points instead of only the majority class. The tree is then a piecewise probability distribution over classes. – larsmans Oct 23 '14 at 20:44
The Venn diagram on this web page blogs.sas.com/content/subconsciousmusings/2014/08/22/… claims that statistics and ML are separate. What's your opinion according to this? – Aliweb Mar 18 '15 at 11:45

Statistics focuses on all aspect of data-analysis such as descriptive, exploratory, inferential, predictive and causal. But, machine learning only focus on predictive modeling.

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I can see some important differences:

#Scope: Machine learning uses statistical models, but it also uses other models such as dynamic programming, reinforcement learning, techniques that came from Artificial Intelligence or optimization.

#Point of View: Statistics is usually concerned with the properties of the estimators (unbiasedness, assymptotic behavior) and machine learning is mainly concerned with the solution of real world problems.

#Reasearch field: While Statistics can be seen as a subfield of Applied Mathematics, Machine Learning can be seen as a subfield of computer science.

#Code development and application: While people who work with statistics usually has a prefference for R (or SAS, STATA, EVIEWS), people who work with machine learning usually chooses Python (or another structured programming language)

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Maybe it's worth to point out that similar question is being addressed and discussed at CrossValidated

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That's an awesome resource! Please either summarize the content of that question or post this as a comment on the question instead. – Gordon Gustafson Jan 21 '15 at 0:05

Statistics bases everything on probability models. A typical analysis starts by assuming your data are samples from a random variable with some distribution, then making inferences about the parameters of the distribution.

Machine learning may use probability models, and when it does, it overlaps with statistics. But machine learning isn't so committed to probability. It is willing to also use other approaches to problem solving that are not based on probability.

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I think I first saw the "Statistics vs. Machine Learning, fight!" post that I linked in my answer on your blog :) It's excellent by the way. – StompChicken Nov 17 '10 at 17:18
The Venn diagram on this web page blogs.sas.com/content/subconsciousmusings/2014/08/22/… claims that statistics and ML are separate. What's your opinion according to this? – Aliweb Mar 18 '15 at 11:46