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Suppose I'm working on some classification problem. (Fraud detection and comment spam are two problems I'm working on right now, but I'm curious about any classification task in general.)

  1. How do I know which classifier I should use? (Decision tree, SVM, Bayesian, logistic regression, etc.) In which cases is one of them the "natural" first choice, and what are the principles for choosing that one?

Examples of the type of answers I'm looking for (from Manning et al.'s "Introduction to Information Retrieval book": http://nlp.stanford.edu/IR-book/html/htmledition/choosing-what-kind-of-classifier-to-use-1.html):

a. If your data is labeled, but you only have a limited amount, you should use a classifier with high bias (for example, Naive Bayes). [I'm guessing this is because a higher-bias classifier will have lower variance, which is good because of the small amount of data.]

b. If you have a ton of data, then the classifier doesn't really matter so much, so you should probably just choose a classifier with good scalability.

  1. What are other guidelines? Even answers like "if you'll have to explain your model to some upper management person, then maybe you should use a decision tree, since the decision rules are fairly transparent" are good. I care less about implementation/library issues, though.

  2. Also, for a somewhat separate question, besides standard Bayesian classifiers, are there 'standard state-of-the-art' methods for comment spam detection (as opposed to email spam)?

[Not sure if stackoverflow is the best place to ask this question, since it's more machine learning than actual programming -- if not, any suggestions for where else?]

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In reply to your "best place to ask this question", you may also want to try stats.stackexchange.com – jxramos Dec 11 '14 at 22:16

Model selection using Cross Validation may be what you need.



Cross Validation

What you do is simply to split your dataset into K non-overlapping subsets (folds), train a model using K-1 folds and predict its performance using the fold you left out. This you do for each possible combination of folds (first leave 1st fold out, then 2nd, .. , then kth and train with the remaining folds). After finishing you estimate the mean performance of all folds (maybe also the variance/standard deviation of the performance).

How to choose the parameter K depends on time you have. Usual Ks are 3,5,10 or even N, where N is the size of your data (thats the same as Leave-One-Out Cross Validation). I prefer 5 or 10.

Model Selection

Let's say you have 5 methods (ANN, SVM, KNN etc) and 10 parameter combinations for each method (depend on the method). You simply have to run Cross Validation for each method and parameter combination (5x10 = 50) and select the best model, method and parameters. Then you re-train with the best method and parameters on all your data and you have your final model!

Well, there are some more things to say. If for example you use a lot of methods and parameter combinations for each it's very likely you will overfit. In cases like these you have to use nested Cross Validation.

Nested Cross Validation

In nested Cross Validation you perform Cross Validation on the Model Selection algorithm. Again you first split your data into K folds. After each step you choose K-1 as your training data and the remaining one as your test data. Then you run Model Selection (the procedure I explained above) for each possible combination of those K folds. After finishing this you will have K models, one for each combination of folds. After that you test each model with the remaining test data and choose the best one. Again, after having the last model you train a new one with the same method and parameters on all the data you have. Thats your final model.

Of course there are many variations of these methods and other things I didn't mention. If you need more information about these look for some publications about these topics.

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Yep, I know about cross validation -- I was wondering more about a priori reasons to select a certain classifier (and then I could use cross validation to tune some parameters, or to select between some smaller set of classifiers). Thanks, though! – LM. Apr 12 '10 at 18:25
Well, I would use SVM or NN. I would also try variable selection to reduce the number of variables. A great algorithm for variable selection is the Max-Min Hill Climbing Bayesian Network structure learning algorithm (MMHC). (portal.acm.org/citation.cfm?id=1164587) – George Apr 12 '10 at 22:41
-1 question asked for help choosing a classifier, not a model. Great post though... – Crisfole May 4 '12 at 0:16
@ChristopherPfohl got me curious about the distinction there. Found an interesting hit here worth sharing. – jxramos Dec 11 '14 at 22:29

Things you might consider in choosing which algorithm to use would include:

  1. Do you need to train incrementally (as opposed to batched)? If you need to update your classifier with new data frequently (or you have tons of data), you'll probably want to use Bayesian. Neural nets and SVM need to work on the training data in one go.

  2. Is your data composed of categorical only? Or numeric only? Or both? I think Bayesian works best with categorical/binomial data. Decision trees can't predict numerical values.

  3. Do you or your audience need to understand how the classifier works? Use Bayesian or Decision Trees, since these can be easily explained to most people. Neural networks and SVM are "black boxes" in the sense that you can't really see how they are classifying data.

  4. How much "classification speed" do you need? SVM's are fast when it comes to classifying since they only need to determine which side of the "line" your data is on. Decision trees can be slow especially when they're complex (e.g. lots of branches).

  5. Complexity. Neural nets and SVMs can handle complex non-linear classification.

Hope that helped.

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This book chapter may provide more information about complexity nlp.stanford.edu/IR-book/html/htmledition/… – supermus May 2 '13 at 15:44
@RPVC really great post! would you please cite it? – abdullah.cu Jun 5 '15 at 18:15

The book "OpenCV" has a great two pages on this on pages 462-463. Searching the Amazon preview for the word "discriminative" (probably google books also) will let you see the pages in question. These two pages are the greatest gem I have found in this book.

In short:

  • Boosting - often effective when a large amount of training data is available.

  • Random trees - often very effective and can also perform regression.

  • K-nearest neighbors - simplest thing you can do, often effective but slow and requires lots of memory.

  • Neural networks - Slow to train but very fast to run, still optimal performer for letter recognition.

  • SVM - Among the best with limited data, but losing against boosting or random trees only when large data sets are available.

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enter image description here

First of all, you need to identify your problem. It depends upon what kind of data you have and what your desired task is.

If you are Predicting Category

  • You have Labeled Data
    • You need to follow Classification Approach and its algorithms
  • You don't have Labeled Data
    • You need to go for Clustering Approach

If you are NOT Predicting Quantity

  • You need to go for Regression Approach


  • You can go for Dimensionality Reduction Approach

There are different algorithms within each approach mentioned above. The choice of a particular algorithm depends upon the size of the dataset.

Source: http://scikit-learn.org/stable/tutorial/machine_learning_map/

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Here is a good post about this issue: Choosing a Machine Learning Classifier

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As Prof Andrew Ng often states: always begin by implementing a rough, dirty algorithm, and then iteratively refine it.

For classification, Naive Bayes is a good starter, as it has good performances, is highly scalable and can adapt to almost any kind of classification task. Also 1NN (K-Nearest Neighbours with only 1 neighbour) is a no-hassle best fit algorithm (because the data will be the model, and thus you don't have to care about the dimensionality fit of your decision boundary).

And remember that, often, you can't really know what will work best on your data before you try the algorithms for real.

As a side-note, if you want a theoretical framework to test your hypothesis and algorithms theoretical performances for a given problem, you can use the PAC (Probably approximately correct) learning framework (beware: it's very abstract and complex!), but to summary, the gist of PAC learning says that you should use the less complex, but complex enough (complexity being the maximum dimensionality that the algo can fit) algorithm that can fit your data. In other words, use the Occam's razor.

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Sam Roweis used to say that you should try naive Bayes, logistic regression, k-nearest neighbour and Fisher's linear discriminant before anything else.

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My take on it is that you always run the basic classifiers first to get some sense of your data. More often than not (in my experience at least) they've been good enough.

So, if you have supervised data, train a Naive Bayes classifier. If you have unsupervised data, you can try K-means clustering.

Another resource is a lecture video Stanford Machine Learning I watched a while back. In video 4 or 5 I think he discusses some generally accepted conventions when training classifiers, advantages/tradeoffs, etc.

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