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I work for a webhost and my job is to find and cleanup hacked accounts. The way I find a good 90% of shells\malware\injections is to look for files that are "out of place." For example, eval(base64_decode(.......)), where "....." is a whole bunch of base64'ed text that is usually never good. Odd looking files jump out at me as I grep through files for key strings.

If these files jump out at me as a human I'm sure I can build some kind of profiler in python to look for things that are "out of place" statistically and flag them for manual review. To start off I thought I can compare the length of lines in php files containing key strings (eval, base64_decode, exec, gunzip, gzinflate, fwrite, preg_replace, etc.) and look for lines that deviate from the average by 2 standard deviations.

The line length varies widely and I'm not sure if this would be a good statistic to use. Another approach would be to assign weighted rules to cretin things (line length over or under threshold = X points, contains the word upload = Y points) but I'm not sure what I can actually do with the scores or how to score the each attribute. My statistics is a little rusty.

Could anyone point me in the right direction (guides, tutorials, libraries) for statistical profiling?

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closed as too broad by Martijn Pieters Aug 28 '15 at 12:29

There are either too many possible answers, or good answers would be too long for this format. Please add details to narrow the answer set or to isolate an issue that can be answered in a few paragraphs.If this question can be reworded to fit the rules in the help center, please edit the question.

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This suggestion is a bit to broad to really be useful, but you might want to try a Bayesian approach. Build up a corpus of "good" code and a corpus of "bad" code, and build or use a a classifier (you can probably directly use one of the various spam filters) to predict whether a particular piece of new code is more likely to be a member of the "good" or "bad" corpus. Google for Bayesian learning, spam filtering, etc. I'd be willing to be that you can directly use a spam filtering project to do this, rather than writing something from scratch. – Joe Kington Jul 31 '11 at 21:43
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@Joe, Josh -- if you choose the bayesian approach, I've used reverend in the past with success for similar problems. It's easy to get reasonable results if you can get your datasets right. reverend.sourceforge.net – J.J. Aug 1 '11 at 18:30

Here's a simple machine learning approach to the problem, and is what I'd do to get started on this problem and develop a baseline classifier:

Build up a corpus of scripts and attach a label either 'good' (label= 0) or 'bad' (label = 1) the more the better. Try to ensure that the 'bad' scripts are a reasonable fraction of the total corpus,50-50 good/bad is ideal.

Develop binary features that indicate suspicious or bad scripts. For example, the presence of 'eval', the presence of 'base64_decode'.Be as comprehensive as you can be and don't be afraid of including afeature that might capture some 'good' scripts too. One way to help to do this might be to calculate the frequency counts of words in the two classes of script and select as features words that appear prominently in 'bad' but less prominently in 'good'.

Run the feature generator over the corpus and build up a binary matrix of features with labels.

Split the corpus into train (80% of examples) and test sets (20%). Using the scikit learn library, train a few different classification algorithms (random forests, support vector machines, naive bayes etc) with the training set and test their performance on the unseen test set.

Hopefully I have a reasonable classification accuracy to benchmark against. I'd then look at improving the features, some unsupervised methods (without labels) and more specialised algorithms to get better performance.

For resources, Andrew Ng's Coursera course on Machine Learning (which includes example spam classification, I believe) is a good start.

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