BSidesLV 2013 - Using Machine Learning to Support Information Security

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Big Data, Data Science, Machine Learning and Analytics are a few of the new buzzwords that have invaded out industry of late. Again we are being sold a unicorn-laden, silver-bullet panacea by heavy handed marketing folks, evoking an expected pushback from the most enlightened members of our community. However, as was the case before, there might just be enough technical meat in there to help out with our security challenges and the overwhelming odds we face everyday. And if so, what do we as a community have to know about these technologies in order to be better professionals? Can we really use the data we have been collecting to help automate our security decision making? Is a robot going to steal my job? If you are interested in what is behind this marketing buzz and are not scared of a little math, this talk would like to address some insights into applying Machine Learning techniques to data any of us have easy access to, and try to bring home the point that if all of this technology can be used to show us “better” ads in social media and track our behavior online (and a bit more than that) it can also be used to defend our networks as well.

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Using Machine Learning to support Information Security

Alexandre Pinto alexcp@mlsecproject.org

@alexcpsec@MLSecProject

Proving Ground (Many Thanks to Joel Wilbanks)

• This is a talk about DEFENDING not attacking– NO systems were harmed on the development of

this talk.– This is NOT about some vanity hack that will be

patched tomorrow– We are actually trying to BUILD something here.

• This talk includes more MATH thank the daily recommended assumption by the FDA.

• You have been warned...

WARNING!

• 12 years in Information Security, done a little bit of everything.

• Past 7 or so years leading security consultancy and monitoring teams in Brazil, London and the US.– If there is any way a SIEM can hurt you, it did to me.

• Researching machine learning and data science in general for the past year or so. Participates in Kaggle machine learning competitions (for fun, not for profit).

• First presentation in a real Infosec conference! (give or take a few hours)

Who’s Alex?

• The elephant in the room• Enter Machine Learning• Principles and Kinds of ML• ML and InfoSec• MLSec Project• How to get started?• Take Aways

Agenda

The elephant in the room• “Internet-scale companies”

The elephant in the room

• “Machine learning systems automatically learn programs from data” (*)

• You don’t really code the program, but it is inferred from data.

• Intuition of trying to mimic the way the brain learns: that’s where terms like artificial intelligence come from.

Enter Machine Learning

(*) CACM 55(10) - A Few Useful Things to Know about Machine Learning

• Sales

Applications of Machine Learning

• Trading

• Image and Voice Recognition

• Fraud detection systems:– Is what he just did consistent with

past behavior?• Network anomaly detection (?):

– NOPE!– More like statistical analysis, bad

one at that• Predicting likelihood of attack

actors– Create different predictive models

and chain them to gain more confidence in each step.

Security Applications of ML

• SPAM filters

• Data Mining:

How to do Machine Learning?

• Exploring the space:

• Supervised Learning:– Classification (NN, SVM,

Naïve Bayes)– Regression (linear,

logistic)

Kinds of Machine Learning

Source – scikit-learn.github.io/scikit-learn-tutorial/

• Unsupervised Learning :– Clustering (k-means)– Decomposition (PCA, SVD)

• Paper from Microsoft Research circa Sept’98!

• (Thanks, Wikipedia!)

Kinds of ML: Naïve Bayes (SPAM filters)

• One of the simplest examples of ML• Try to infer a relationship between a result variable (y)

and a linear combination of others (x), minimizing the “squared error” (distance measurement)

Kinds of ML: Linear Regression

Jesse Johnson – shapeofdata.wordpress.com

Kinds of ML: SVM FTW!• One of my favorite algorithms!• Support Vector Machines (SVM):

– Good for classification problems with numeric features– Not a lot of parameters, it helps control overfitting, built in

regularization in the model, usually robust– However, sometimes slow to train (# of points, # of features)– Also awesome: hyperplane separation on an unknown infinite

dimension.

Jesse Johnson – shapeofdata.wordpress.comNo idea… Everyone copies this

• SIEM and Log Monitoring tools are just vertical BI applications (from the 90’s)

• “I don't have time for your marketing hype!” – Infosec• How many logs you think there are in your

organization?

ML and Infosec

InfoSec Data Scientists

Data Science Venn Diagram by Drew Conway

• “Data Scientist (n.): Person who is better at statistics than any software engineer and better at software engineering than any statistician.” -- Josh Willis, Cloudera

Considerations on Data Gathering

• Models will (generally) get better with more data– But we always have to consider bias and variance as we

select our data points– Also adversaries – we may be force fed “bad data”, find

signal in weird noise or design bad (or exploitable) features• “I’ve got 99 problems, but data ain’t one”

Domingos, 2012 Abu-Mostafa, Caltech, 2012

• Adversaries - Exploiting the learning process• Understand the model, understand the

machine, and you can circumvent it• Something InfoSec community knows very well• Any predictive model on Infosec will be pushed

to the limit (LIMIT!)• Again, think back on the way SPAM engines evolved.

Considerations on Data Gathering

MLSec Project

• Sign up, send logs, receive reports generated by robots machine learning models!– FREE! I need the data! Please help! ;)

• Looking for contributors, ideas, skeptics to support project as well.

• Visit https://www.mlsecproject.org , message @MLSecProject or just e-mail me.

• We developed an algorithm to detect malicious behavior from log entries of firewall blocks

• Over 6 months of data from SANS DShield• We don’t focus on frequency or network

anomaly detection. Get ground truth “badness” and roll with it.

• After a lot of statistical-based math (true positive ratio, true negative ratio, odds likelihood), it can pinpoint actors that would be 13x-18x more likely to attack you.

MLSec Project

Map of the Internet

• (Hilbert Curve)• Block port 22 • 2013-07-20

0

10

127

MULTICAST AND FRIENDS

Map of the Internet

• (Hilbert Curve)• Block port 22 • 2013-07-20

0

10

127

MULTICAST AND FRIENDS

CN

RU

CN,BR,TH

• Behavior: block on port 22

• Trial inference on 100k IP addresses per Class A subnet

• Logarithm scale: brightest tiles are 10 to 1000 times more likely to attack.

MLSec Project

MLSec Project - Some interesting results

• Ok, robot: show me who the “evil guys” are on port 80 (most likelihood of attack), by AS name

MLSec Project - Some interesting results

• ZOMG! It KNOWS! Call John Connor!• 1st model did not take into consideration web crawler activity.• Without netsec/infosec experience, scientists would be

scratching heads for days.

• Ok, robot: show me who the “evil guys” are on port 80 (most likelihood of attack), by AS name

• Programming is a must (Python / R)• Statistical knowledge keeps you from

making dumb mistakes• Specific machine learning courses and

books:– Coursera (ML/ Data Analysis / Data Science)

• Practice, Practice, Practice:– Kaggle– KDD, VAST, VizSec

How to get started?

• Big data is here! *BUZZWORD ALERT*• Machine learning / predictive analytics are

coming.• In 6-12 months, everyone will wish they were a

Data Scientist (not really!)• There is a lot of applicability in InfoSec• Embrace the change: the correct applicability of

ML models can greatly enhance defensive practices.

• MLSec Project is cool, check out my talk in BH/DC• And MOST IMPORTANTLY…

Take Aways

Machine Learning = ROBOT Unicorns + Rainbows

Machine Learning = ROBOT Unicorns + Rainbows

Thanks!• Q&A?• Feedback is welcome! • (bad = Joel’s fault :P)

Alexandre Pinto alexcp@mlsecproject.org

@alexcpsec@MLSecProject

"Prediction is very difficult, especially if it's about the future." - Niels Bohr

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